• #COVID-19 : Comment prévenir le risque dans le #train ? | santé log
    https://www.santelog.com/actualites/covid-19-comment-prevenir-le-risque-dans-le-train

    Les chercheurs décryptent à nouveau comment les maladies aéroportées telles que le COVID-19 se propagent sur toute la longueur du wagon et suggère qu’il ne reste que le port du #masque pour réduire le risque d’infection. Ces travaux publiés dans la revue spécialisée Indoor Air, rappellent également que rien ne vaut un bon système de #ventilation.

    Source : Modeling disease transmission in a train carriage using a simple 1D‐model - Kreij - 2022 - Indoor Air - Wiley Online Library
    https://onlinelibrary.wiley.com/doi/10.1111/ina.13066
    https://onlinelibrary.wiley.com/cms/asset/51de4721-15ae-43ae-ba2d-db73a6e1ad96/ina.v32.6.cover.jpg?trick=1656068874684

    Understanding airborne infectious disease transmission on public transport is essential to reducing the risk of infection of passengers and crew members. We propose a new one-dimensional (1D) model that predicts the longitudinal dispersion of airborne contaminants and the risk of disease transmission inside a railway carriage. We compare the results of this 1D-model to the predictions of a model that assumes the carriage is fully mixed. The 1D-model is validated using measurements of controlled carbon-dioxide experiments conducted in a full-scale railway carriage. We use our results to provide novel insights into the impact of various strategies to reduce the risk of airborne transmission on public transport.

    #aérosols

  • London taxi drivers: A review of neurocognitive studies and an exploration of how they build their cognitive map of London - Griesbauer - 2022 - Hippocampus - Wiley Online Library
    https://onlinelibrary.wiley.com/doi/10.1002/hipo.23395

    Eva-Maria Griesbauer,Ed Manley,Jan M. Wiener,Hugo J. Spiers
    First published: 16 December 2021 https://doi.org/10.1002/hipo.23395

    Abstract
    Licensed London taxi drivers have been found to show changes in the gray matter density of their hippocampus over the course of training and decades of navigation in London (UK). This has been linked to their learning and using of the “Knowledge of London,” the names and layout of over 26,000 streets and thousands of points of interest in London. Here we review past behavioral and neuroimaging studies of London taxi drivers, covering the structural differences in hippocampal gray matter density and brain dynamics associated with navigating London. We examine the process by which they learn the layout of London, detailing the key learning steps: systematic study of maps, travel on selected overlapping routes, the mental visualization of places and the optimal use of subgoals. Our analysis provides the first map of the street network covered by the routes used to learn the network, allowing insight into where there are gaps in this network. The methods described could be widely applied to aid spatial learning in the general population and may provide insights for artificial intelligence systems to efficiently learn new environments.

    1 INTRODUCTION
    The ability to navigate an environment depends on the knowledge of that environment. This knowledge can be gained in multiple ways, such as via instructions on GPS devices, memorizing a cartographic map, or through exploration. The knowledge formed can vary from very imprecise to extremely accurate, depending on the complexity of the environment, the level of exposure to the environment and individual differences (Ekstrom et al., 2018; Schinazi et al., 2013; Weisberg et al., 2014; Weisberg & Newcombe, 2016). Over the last decades, there has been increasing interest in understanding how different methods for learning impact the acquisition of spatial knowledge (e.g., Balaguer et al., 2016; Dahmani & Bohbot, 2020; Gardony et al., 2013; Hejtmánek et al., 2018; Ishikawa et al., 2008; Münzer et al., 2006, 2012; Siegel & White, 1975; Streeter & Vitello, 1986) and how individuals differ in their capacity to learn to navigate new environments (Burles & Iaria, 2020; Coutrot et al., 2018, 2019, 2020; Feld et al., 2021; Newcombe, 2018; Weisberg & Newcombe, 2016).

    Despite GPS devices being a preferred method of navigation for many (McKinlay, 2016), the increased use of GPS devices appears to have a negative impact on spatial memory (Dahmani & Bohbot, 2020; Ruginski et al., 2019) and is associated with habitual learning of a particular route (Münzer et al., 2006). In contrast to GPS-based instruction-guided navigation, “map-based navigation” (relying on memory for the map) has been found to support spatial learning, knowledge acquisition of the environment and improved flexible navigation performance (e.g., Ishikawa et al., 2008; Münzer et al., 2006, 2012). Such flexible navigation relying on long-term memory is associated with the construction of a cognitive map, which stores the allocentric information about the structure of the environment enabling shortcuts and efficient detours around unexpected obstacles (O’Keefe & Nadel, 1978; Tolman, 1948).

    A range of evidence indicates that within the brain the hippocampus provides a cognitive map of the environment to support memory and navigation (Epstein et al., 2017; Gahnstrom & Spiers, 2020; O’Keefe & Nadel, 1978) and damage to the hippocampus disrupts navigation (Morris et al., 1982; Spiers, Burgess, Hartley, et al., 2001). Hippocampal neurons encode spatial information (O’Keefe & Nadel, 1978) and for a selected group of individuals, who spend their daily lives navigating using map-based recall of space, their posterior hippocampal gray matter volume increases with years of experience and is larger than in the general population (Maguire et al., 2000). These individuals are licensed London taxi drivers. Here, we review the past literature from studies of London taxi drivers and explore how they learn the large amount of knowledge required to navigate London, which evidence suggests drives the changes in their hippocampus (Woollett & Maguire, 2011).

    2 A REVIEW OF RESEARCH ON LONDON TAXI DRIVERS
    Licensed London taxi drivers are unusual among taxi drivers. They are able to mentally plan routes across an environment that contains more than 26,000 streets within the six-mile area around Charing Cross, the geographic center of London (A to Z from Collins The Knowledge, 2020). They are required to have sufficient knowledge to also navigate main artery roads in the suburbs—known as “The Knowledge.” This area covers almost 60,000 roads within the circular M25 (The London Taxi Experience—The Knowledge, 2020; numbers may vary depending on sources, road types and the definition of the boundary of London). What makes licensed London taxi drivers unique is that they have to accomplish this using their own memory, without relying on physical maps or navigation aids. They are also the only taxi drivers permitted to pick up customers when hailed in the street, due to their license to operate. In the rest of this article, we refer to them as London taxi drivers, but readers should note that our analysis pertains only to licensed taxi drivers, who are also referred to as “London cabbies.”

    Changes in the hippocampal gray matter density in London taxi drivers were first reported by Maguire et al. (2000) using a cross-sectional study of London taxi drivers and magnetic resonance imaging (MRI) measures, including voxel-based morphometry (VBM). Maguire et al. (2000) speculated that because rodent and avian species can show variation in the size of their hippocampus with the demand on spatial memory (Lee et al., 1998; Smulders et al., 1995), it might be possible that London taxi drivers would show similar differences due to their profession. There were two main findings from this study: (i) compared to age and gender matched control participants, London taxi drivers had an increased gray matter density in their posterior hippocampus and a decreased gray matter density in their anterior hippocampus, (ii) years of experience was positively correlated with gray matter density in the right posterior hippocampus and negatively correlated with anterior cross sectional volume. Thus, there is no evidence for a globally larger hippocampus, but rather more experienced taxi drivers show a significant difference in the amount of gray matter along the long-axis of the hippocampus.

    Following the discovery of differences in hippocampal size in London taxi drivers by Maguire et al. (2000) numerous studies have explored their brain function and cognition. MRI has provided further evidence of structural differences in their hippocampus, with three further studies supporting the initial findings (Maguire, Woollett, & Spiers, 2006; Woollett et al., 2009; Woollett & Maguire, 2011). To provide a more precisely matched control group to London taxi drivers, MRI structural measures were contrasted between London taxi drivers and London bus drivers. If the gray matter changes in taxi drivers are driven by daily driving and/or daily exposure to London, then bus drivers should have a similar hippocampal size to taxi drivers as they daily drive routes through London. However, if it is using extensive spatial knowledge that underlies the differences in gray matter density then London taxi drivers and bus drivers should differ. Results revealed that compared to London bus drivers, London taxi drivers have increased posterior hippocampus gray matter density, decreased anterior hippocampal gray matter density (Maguire, Woollett, & Spiers, 2006), replicating previous results (Maguire et al., 2000). While bus drivers show no relationship between hippocampal volume and years of experience, London taxi drivers were again found to show a positive correlation between posterior hippocampal gray matter volume and years of experience (Maguire, Woollett, & Spiers, 2006).

    While cross-sectional studies of gray matter density provide evidence that changes in hippocampal volume may occur with exposure over time, they do not track individuals over time to provide a more reliable measure of structural changes with experience. Examining brain changes longitudinally within subjects, Woollett and Maguire (2011) found that an increase in the posterior hippocampus gray matter density after the years spent learning the Knowledge and passing the exam required to become a licensed taxi driver (Woollett & Maguire, 2011). Notably, taxi drivers showed no differences in hippocampal volume prior to starting training to non-taxi drivers, indicating that taxi drivers may not be predisposed to having a larger hippocampus as part of what predisposes someone to choose to train as a taxi driver. Intriguingly, those who failed to qualify did not show a change in their hippocampal size, indicating that it is not sufficient to spend time training, training must be applied effectively for changes in posterior gray matter density to become evident. Furthermore, cross-sectional evidence from measuring hippocampal size in medical professionals revealed no correlation between years of experience and hippocampal structural measures (Woollett et al., 2008). This suggests that it is unlikely to be storing the memory of all the street names that underlies the correlation between hippocampal volume and years of experience operating a London taxi.

    Following the discovery of gray matter differences in London taxi drivers a number of studies have explored the extent to which hippocampal size might predict navigation ability. The first study to explore this in a sample of 23 participants found no association between posterior gray matter volume and navigation ability on a virtual navigation task (Maguire et al., 2003). However, a number of subsequent studies have reported a relationship between measures of hippocampal structure and navigation performance (Bohbot et al., 2007; Brunec et al., 2019; Chrastil et al., 2017; He & Brown, 2020; Hodgetts et al., 2020; Konishi & Bohbot, 2013; Schinazi et al., 2013; Sherrill et al., 2018; see also Hao et al., 2017). More recently, two studies with larger samples have found no relationship between hippocampal structure and either navigation (Weisberg et al., 2019) or route sequencing (Clark et al., 2020). Thus it remains a matter of debate whether in non-taxi drivers there is a link between hippocampal structure and navigation performance (see Weisberg & Ekstrom, 2021 for review).

    Acquiring the Knowledge of London seems to come at a cost of learning and retaining new visuo-spatial information, which co-occurs with a concurrent volume decrease in the anterior hippocampus (Maguire, Woollett, & Spiers, 2006; Woollett & Maguire, 2009, 2012). However, in the small sample studied by Maguire, Woollett, and Spiers (2006) no significant correlation was present between anterior gray matter density reduction and the performance on visuospatial tasks. Functional neuroimaging studies have shown engagement of their posterior hippocampus when verbally recalling routes (Maguire et al., 1997) and at the start of the route when navigating a highly detailed virtual simulation of London (Spiers & Maguire, 2006a, 2007a). Other research with London taxi drivers has revealed insight into spontaneous mentalizing (Spiers & Maguire, 2006b), remote spatial memory (Maguire, Nannery & Spiers, 2006), emotions during navigation (Spiers & Maguire, 2008), the neural basis of driving a vehicle (Spiers & Maguire, 2007b), the features of street network that define a boundaries for navigation (Griesbauer et al., 2021) and the route planning process (Spiers & Maguire, 2008). London taxi drivers have also been shown to be better than non-taxi drivers at learning new routes (Woollett & Maguire, 2009).

    Despite the numerous studies exploring London taxi drivers, little attention has been paid to how London taxi drivers learn and memorize the layout and landmarks in London (Skok, 1999). Many questions arise when considering this. How is their exploration structured? What do they study when examining maps? How are map and physical travel experience integrated? What role does mental imagery play in aiding their learning? How do they exploit the hierarchical structure of London’s layout? Are major roads mastered before minor roads? In this observational report we provide the first investigation of London taxi driver’s learning process and the methods and techniques that enable them to retain and use such a large amount of real-world spatial information for efficient navigation.

    3 METHODS TO STUDY LEARNING OF THE KNOWLEDGE
    To understand the learning process of taxi drivers, different types of sources of information have been consulted. These sources included (a) a semi-structured interview (ethics approval was obtained under the ethics number CPB/2013/150) with a teacher from a London Knowledge school (here referred to as K.T. for “Knowledge Teacher”), (b) an email exchange with Robert Lordan, the author of “The Knowledge: Train Your Brain Like A London Cabbie” (Lordan, 2018), (c) an open introductory class of the Knowledge of London and regular scheduled classes for current students, (d) school specific study material, and (e) online information from the TfL (Learn the Knowledge of London, Transport for London, n.d.; Electronic blue book, 2019).

    The interview with the teacher from the Knowledge school was audio-recorded and transcribed. The transcription of the interview can be found in Appendix S1. The teacher gave written consent for the content of this interview to be cited and published. Additionally, attendances of Knowledge school training classes, including an introductory class and several classes with more advanced students, allowed us to observe and understand the training process in more detail.

    The information collected from these sources was systematically reviewed to report on (a) the ways spatial information is structured and presented for the learning process, (b) the techniques and methods used to learn this spatial information, and (c) how this knowledge is tested and the later perception of this knowledge as a taxi driver. A summary for each of these categories was created, starting with verbal reports (interview [Appendix S1], Knowledge school classes). This information was cross-referenced with and extended by unreported information from other, published, or official sources (e.g., study material, online booklets by TfL).

    4 OBSERVATIONS
    Taxi drivers in London have to demonstrate a thorough Knowledge of London within the six-mile radius originating at Charing Cross (see Figure 1a) to earn the green badge that qualifies them to drive a “black cab” taxi (Electronic blue book, 2019). Within this area, taxi drivers are expected to plan a route (i.e., the “runs”) based on the shortest distance between any two potential places of interest (i.e., the “points”) their customers might travel from or to, such as restaurants, theaters, hospitals, sports centers, schools or parks (cf. Electronic blue book, 2019, for a complete list). Taxi drivers are also expected to name all roads or streets that are part of that run in the correct, sequential order, including traveling instructions, such as turns (Electronic blue book, 2019).

    FIGURE 1


    The Knowledge of London and the Blue Book. (a) London taxi driver students are expected to learn the street network and all potential points of interest within the six-mile radius around Charing Cross (black circle), which is called the “Knowledge of London.” (b) To support the learning process of this area, the Blue Book was created. It contains 320 origin–destination pairs and the shortest route (i.e., “run”) connecting those pairs. When mapped chronologically in groups of 80 runs, the network of origin–destination pairs starts overlapping and becomes denser. Red: The first layer of the first 80 origin–destination pairs. Black: The second layer of the origin–destination pairs for runs 81–160. Purple: The third layer of origin–destination pairs for runs 161–240. Blue: The final layer of the last 80 origin–destination pairs for runs 241–320.
    Map sources: (a) Mapbox (2020) and (b) My Maps by Google Maps

    Historically, the exact roots of the Knowledge of London are unclear as written evidence is mostly missing. The first licenses and regulations for horse-driven carriages date back to the early 1600s by Oliver Cromwell (June 1654: An Ordinance for the Regulation of Hackney-Coachmen in London and the places adjacent, 1911; London Metropolitan Archives, 2013; Lordan, 2018; Newton, 1857). However, in 1851 the Great Exhibition in Hyde Park revealed incompetent navigation skills of the carriage drivers of those days. These initiated a series of complaints and forced authorities in the following years to set up stricter qualification requirements for drivers to test their knowledge of important streets, squares and public buildings (A to Z from Collins—The Knowledge, 2020; Lordan, 2018; Rosen, 2014). This scheme was officially introduced in 1865 (Learn the Knowledge of London, Transport for London, n.d.). The requirements in relation to the content of the Knowledge have since hardly changed and remained in place (The Knowledge, 2020) despite the technological innovations that have produced navigation aids, such as GPS devices, that facilitate and guide navigation. The following sections will outline how this is achieved by taxi drivers.

    4.1 Presentation of spatial information in Knowledge schools
    To help students to acquire the fundamentals of the Knowledge of London, the Blue Book (the origin of this name is unclear) was designed, which, in its current form, was put into place in 2000 (interview with K.T., Appendix S1). It contains 320 origin–destination pairs, their corresponding runs, as well as additional points related to tourism, leisure, sports, housing, health, education, and administration (Electronic blue book, 2019). In total, there are about 26,000 different streets and roads (Eleanor Cross Knowledge School, 2017) and more than 5000 points (Full set of Blue Book Runs, 2020) listed in the Knowledge schools’ versions of the Blue Book. However, this knowledge is incomplete. By the time students qualify, they will have extended their knowledge to identify more than 100,000 points (The London Taxi Experience—The Knowledge, 2020) in a street network of about 53,000 streets (OS MasterMap Integrated Transport Network, 2018). This covers not only the six-mile area, but extends to all London boroughs, including major routes in the suburbs.

    The 320 origin–destination pairs of the Blue Book with their corresponding runs are structured into 20 lists of 16 pairs each, which are designed to systematically cover the six-mile radius: In a chronological order, as listed in the Blue Book, the majority of origin–destination pairs have an origin in the same postal districts as the destination of the previous origin–destination pair and spread across London throughout each list (Electronic blue book, 2019). When mapped in layers of four, the first 80 runs (i.e., five lists) provide an initial rough coverage of London. This coverage becomes denser with each of the remaining three layers that are shifted slightly against each other to fill in the gaps (Figure 1b).

    Each of the origins and destinations in the Blue Book also require students to learn the nearby environment within the quarter mile range. That area around a Blue Book point is called the “quarter mile radius,” or in short: the “quarter-miles” and is considered as ideal for learning small areas of the environment without overloading students with information (interview with K.T., Appendix S1; Learn the Knowledge of London, Transport for London, n.d.; Electronic blue book, 2019). For the first and most famous run, which connects Manor House Station to Gibson Square, the quarter-mile radius is illustrated in Figure 2a. It contains about 8 additional points, numbered 1–8. These are chosen by each Knowledge school individually and can differ between schools. The additional points serve as initial motivation for students to explore the quarter-miles and learn which streets link these points to each other. Knowledge of the remaining, unmentioned points in the area will be obtained by each student gradually as they progress through the Knowledge of London by studying maps and exploring the quarter-miles in person.

    FIGURE 2


    Example of Knowledge school material in use. In Knowledge schools, wallpaper maps (a) are used to illustrate the coverage of London within the six-mile area by the quarter mile radii (b). These maps support the learning of relations between two places and clear up misconceptions such as Victoria being located further north than Waterloo, which is owed to a change in direction of the River Thames (c). “The cottoning up of two points,” a piece of string that is used to create a direct line between the points, is a common method to help with directional studies (c) and planning the most direct routes (d, e). Additionally, students use 50% and 75% markers along the direct line (e) to create subgoals that help to plan the runs
    Source: Knowledge Point School, Brewery Road, London, UK

    Mapping the origin–destination pairs with their corresponding quarter-miles, highlights how the areas locally link to each other (Figure 2b). To create such an overlap that sufficiently covers the whole six-mile area around Charing Cross (also see Figure 2a), 640 points are required, thus explaining the total number of 320 Blue Book runs. Since each point is closely surrounded by nearby origins and destinations of other runs, information is provided about how an area can be approached from or left in different directions. For Manor House (Figure 2b) these points have been indicated by blue and red quarter-miles for nearby origins and destinations, respectively, in Figure 2b. To visualize this information across the entire six-mile area of London and keep track of their progress while learning the Blue Book, trainee taxi drivers mark the origins and destinations, including the quarter-miles, in a large, all London map (Figure 2a,b; Source: Knowledge Point Central, Brewery Road, London, UK).

    Studying maps by visualizing the topological relationship between areas also helps to avoid misconceptions about the city’s geography that could lead to mistakes in route planning. For instance, deviations from the more generally perceived west–east alignment of the river Thames can cause distortions (cf. Stevens & Coupe, 1978). Often Victoria station, located north of the river, is incorrectly perceived further north than Waterloo Station, which is on the southern side of the river, but further east then Victoria (see Figure 2c). This misconception is due to a bend of the river Thames, that causes the river to flow north (instead of east) between Victoria and Waterloo.

    In the Blue Book, the 320 runs connect the origin–destination pairs through the route along the shortest distance for each pair (Electronic blue book, 2019). These pairs were chosen to create runs that are about two to three miles long and mainly follow trunk or primary roads. Here, trunk roads are the most important roads in London after motorways, providing an important link to major cities and other places of importance, with segregated lanes in opposite directions (Key:highway, 2020). Primary roads are defined as the most important roads in London after trunk roads, usually with two lanes and no separation between directions, linking larger towns or areas (Key:highway, 2020). Since these are often printed in orange and yellow in paper maps, taxi drivers also refer to them as “Oranges and Lemons” (interview with K.T., Appendix S1). Trainee taxi drivers visualize these runs on all London maps to learn and practice recalling them (Figure 2d, credit: Knowledge Point Central, Brewery Road, London, UK). Knowledge schools provide the 320 runs for the points of the Blue Book but encourage students to plan these runs before checking the up-to-date solution. To plan a run using the shortest distance and avoid major deviations (as required for the examinations), drawing the direct line (i.e., “as the crow would fly”) or spanning a piece of cotton between the points is essential (Figure 2e). This so-called “cottoning up” also helps students to learn relations between places (Figure 2c) and visualize the map to find ways around obstacles, such as Regent’s Parks, or to select bridges for crossing the river (Figure 2e) during the “call out” of the run (i.e., the recall of the street names in order along shortest route without using a map). Additionally, it provides opportunities to set subgoals, the “50% and 75% markers.” These markers are set where the line coincides with major roads or bridges, about halfway or three quarters along the line. These distances are guidelines only, and sometimes bullets are set at other distances for streets and places along the direct line that facilitate planning in stages. These markers help students to stay close to the direct line, while breaking down longer runs in smaller sections and reduce the number of steps they have to plan for at a time (Figure 2e). Due to one-way streets and turning restrictions, reverse runs from the initial destination to the initial origin can differ. Therefore, the streets and roads cannot simply be called in reverse order but have to be learned separately (Figure 3).

    FIGURE 3


    Runs and reverses runs. Due to one-way systems or turning restrictions, some runs differ when planned in reverse (dashed line), not allowing to simply invert the original sequence of streets taken (black line). This is the case for the run from Islington Police station (P) to the British Museum (B). When reversed, the one-way systems at Russell Square (1) and at Margery Street (2) require adaptation to traffic rules, resulting in differences between the runs and its reverse run. Figure is based on learning material from Taxi Trade Promotions
    The runs of the Blue Book form a network of routes that covers the six-mile area centered around Charing Cross (Figure 4a). However, the coverage of the London street network by the Blue Book runs systematically varies in density with respect to the distribution of points and the complexity of the street network: At its boundaries (Figure 4b) this network is less dense than in central London, where the runs are also overlapping more often (Figure 4c). This also reflects that more points are located closer to the center of London, whereas residential areas are more likely to cover larger regions at the boundaries of the six-mile radius. Similarly, areas of London with a more regular street network, such as in Marylebone and Fitzrovia, are covered by less runs (Figure 4d) than areas with a more complex and irregular street network, such as South Kensington and Chelsea (Figure 4e). These might require more practice to learn.

    FIGURE 4


    Network of Blue Book runs. A visualization of the 320 runs that connect the corresponding origin–destination pairs of the Blue Book forms a dense network of routes that overlaps, similar to the quarter mile radii (a). Across the network, density varies and is less dense closer to the six-mile boundary (b) then in Central London (c). This overlap also shows that more routes run through areas with higher irregularity in the street network (d) than areas of a more regular street network (e) in Central London
    Source: Adapted from Blue Book mapping by Prof Ed Manley, University of Leeds

    The Blue Book runs focus on connecting origin–destination pairs about three miles apart from each other. Since these are mostly main artery roads, they provide the main grid for efficient traveling between those origin–destination pairs. In contrast, minor roads and the areas between the Oranges and Lemons (i.e., main roads that are printed in yellow and orange in most maps) are learnt by studying the quarter-miles and linking the additional points in those areas (Figures 2a and 5b). Further understanding and flexible linking is gained from the Blue Book runs as students start considering continuations between them. For instance, one Blue Book run would have continued along a sequence of straight streets, but the run required a turn off from this straight sequence of streets to reach a destination. In contrast to the previous example, parts of a different run might continue straight, where the initial run required to turn off the straight sequence of roads. Both examples highlight the importance of the ability to flexibly use individual runs as part of the “bigger picture” (interview with K.T., Appendix S1).

    FIGURE 5


    The points of the Blue Book. Each origin–destination pair of the Blue Book is presented in relation to its quarter mile area. The origin of a run, here run 1 (a), Manor House Station, and the corresponding quarter mile radius (black circle) with additional eight other points of interest (numbered 1–8) are marked in a map. Labels are provided in a legend (left) and the most direct route (i.e., “run”) to the destination, including driving instructions (L on L: leave on left, L: left, R: right; F: forward) are listed on the right. The dense network of origin–destination pairs (b) results in an overlay of the neighboring quarter mile radii (black circles around purple arrows). For Manor House Station (purple circle) neighboring quarter-mile origins and destinations are highlighted in blue and red, respectively. These quarter-miles are covering the six-mile radius in London by linking places of interest through linking runs (c) as indicated by the dashed lines connecting run 1 (#) from Manor House Station and run 80 (!"), ending at Harringay Green Lanes Station.
    Source: Figures are based on learning material from Taxi Trade Promotions

    Ultimately, they cover large distances across London as such a combination of knowledge enables trainee drivers to link the Blue Book runs efficiently where they intersect, or through minor roads of the quarter miles where no intersection is available (Figure 2c). Over time, links become more efficient as the Knowledge is “ingrained” and minor roads are integrated to create shortcuts where possible. At this point, the Blue Book is no longer perceived as a list of individual routes, but as an entire network of runs (interview with K.T., Appendix S1).

    4.2 Learning methods
    The progress that Knowledge students have to make from learning the first points and runs to flexibly plan routes all across London is supported through a range of learning techniques as listed in Table 1. These methods can be categorized into theoretical, map-related studies and practical, “in situ” experiences (interview with K.T., Appendix S1; Lordan, 2018). Both support the development of planning strategies that are later used in situations where route planning is required. These include practicing the planning of Blue Book runs and general runs with a “call over partner” (i.e., a Knowledge school study partner) in preparation for exams and when driving a taxi as a qualified driver.

    TABLE 1. Learning techniques used in Knowledge schools
    Learning technique Supported skill and knowledge
    (A) Map study Bird’s eye view:
    General use of maps
    Visualizing street network
    Relational knowledge of streets and areas
    Areal knowledge (e.g., quarter miles)
    Traffic rules (e.g., one-way systems, turning restrictions)
    Sequential order of streets
    Dumbbell methoda,b
    Relational knowledge of places
    Areal knowledge
    Linking runs
    Flexible and efficient route planning
    Cottoning up
    Efficient route planning
    Relational knowledge of places
    50% and 75% markers
    Efficient route planning
    Relational knowledge of places
    Memory techniquesa:
    Acronyms and mnemonics
    Short stories
    Method of loci
    Historical connections
    Personal connections
    Memorizing groups of streets in consecutive order (1–3)
    Relational knowledge of streets in an area (e.g., quarter miles) (4)
    Visualizing street network (4)
    Relation to personal memories (5)
    (B) In situ experience In-street view
    Traveling in street
    Sequential order of streets
    Experience
    Mental simulation
    Visualizing places and streets
    Sequential order of streets
    (C) Combination of the above Bird’s eye and in-street view
    Call over partner
    Combination of all to simulate examination and fares
    Practice material
    Exam questions
    a Lordan (2018). b Learn the Knowledge of London.
    In general, maps are used to learn the structure of the street network from a bird’s eye view. They help obtain knowledge about relations between places and areas (e.g., quarter-miles and boroughs) and learn traffic rules that can limit route planning due to one-way systems and turning restrictions. Additionally, maps facilitate a better understanding of the sequential order of streets that are part of a run.

    Initially, when studying the Knowledge, this information is obtained mainly through the “dumbbell method.” This requires students to identify the quarter-miles of the origin and the destination and visualize the connecting Blue Book run by tracing it on the map. By including variations of origins and destinations from the quarter-miles on the map, students start to connect nearby points with the original Blue Book origins and destinations and create a network that is forming the “dumbbell” (Figure 3). This method is later extended to other places, as students learn to flexibly link runs and cover larger distances across London. This is also supported by the “cottoning-up” and the use of subgoals, called the “50% markers,” which are not included in the blue book and must be determined by the trainee (interview with K.T., Appendix S1). These 50% markers (not always chosen halfway along the direct line) are bridges if the river needs to be crossed to ensure efficient planning through these bottlenecks at early stages, or other major roads and places. Additional subgoals are added before and after, as needed, to help give initial direction for the route planning without overwhelming the students. Both methods, the “cottoning-up” and the “50% markers,” when used during initial stages of the training, help students to correctly visualize the map and relations between places. At a later stage of the Knowledge, when route planning is carried out mentally and without a physical map, these methods are integrated in the planning process automatically. Notably, the process involves focusing on distance rather than time between locations. The route with the shortest distance might be extremely slow, but during the training taxi drivers are required to find this route. This relates to the assessment used which uses distance to determine the correct answer (see Section 4.3). After qualifying drivers taxi drivers describe incorporating time into their choice of routes.

    To help students memorize sequences of street names that are often used for runs, different memory techniques are applied during the learning process and often remembered years after obtaining the license. The most common techniques are creations of acronyms and mnemonics, inventions of short stories that contain street name references, mental walks through rooms of an imaginary house, historical connections and personal memories that logically structure (cf. Table 2, Lordan, 2018). Trainees use the range of techniques in combination to learn, rather than starting with one method and moving to another. Thus, the learning techniques listed in Table 2 provide a set of cognitive tools for learning the layout of London.

    TABLE 2. Common memory techniques to learn runs
    Technique name Example Streets or places Run Book reference
    Acronym “MEG”
    (1) Melton St

    (2) Euston Rd

    (3) Gower St

    (4) …

    121 p. 22
    Mnemonic
    A: “bask under nice fair weather”

    (1) Blackfriars Bridge

    (2) Unilever Circus

    (3) New Bridge St

    (4) Farringdon St

    (5) West Smithfield

    153 p. 26
    B: “little apples grow quickly please”
    Lyric, Apollo, Gielgud

    Queen’s, Palace

    (order of Shaftesbury Av theaters)

    – p. 20
    Short story “In the scary monster film (1), the creatures burst out from behind the closed doors, riling (2) their victims with sheer terror (3). […]”
    (1) Munster Rd, Filmer Rd

    (2) Rylston Rd, Dawes Rd

    (3) Sherbrooke Rd

    (4) …

    20 p. 92
    Method of loci “On the wall of the lobby are several framed certificates (1). Below them is a bookcase where a guide to New York City sticks out, the cover of which is illustrated with an image of Park Avenue (2). A train ticket to Macclesfield is tucked inside as a bookmark (3). […]”
    (1) College Crescent

    (2) Avenue Rd

    (3) Macclesfield Bridge

    (4) …

    7 p. 148
    History
    “It’s believed that Copenhagen House was named either in honor of the King of Denmark or the Danish Ambassador, both of whom stayed there in the 17th century.

    Consequently the first roads on this run have a Danish theme. Matilda Street is named after Queen Caroline Matilda who was born in London but became Queen consort to Denmark after her marriage to Christian VII. […]”

    (1) Matilda St

    (2) Copenhagen St

    (3) …

    2 p. 106
    Experience
    “I remember arriving at Manor House very early one Sunday morning; it was cold and misty and, as I expected many fellow students did, had a brief moment of crisis when I asked myself what on earth I was getting myself into.

    But this thought was quickly expelled when I stood up to stretch my legs – and promptly trod in some dog mess, which in hindsight was probably a symbol of good luck although it certainly did not feel like that at that time. […]”

    (1) Manor House

    (2) …

    1 p. 190
    Source: Adapted from Lordan (2018).
    Location specific information from an in-street view is learnt through “in situ” visits to the 320 origin–destination pairs of the Blue Book, their quarter-miles and driving the corresponding runs. These visits—carried out multiple times, often on a scooter with a map of the Blue Book run attached to the windscreen—are essential to learning and recalling the Knowledge. These experiences of runs and the quarter miles create memories that drivers use to later recall sequences of streets (Table 2, Lordan, 2018) and visualize routes during planning (interview with K.T., Appendix S1). For instance, memories of traveling a run for the first time might help the recall of sequences of streets, places of interest and specific traffic rules that must be obeyed. These memories become an essential source of information when planning and calling out similar runs, linked to the original. Students use them for mental simulations that facilitate decisions about where to pick up or set down passengers, in which direction to leave or to approach an area and how to find the most optimal route. Thus, students incorporate their study from maps into egocentric representations of directions and turns when driving the runs in situ and this is vital for the planning process. Trainees are not paid so the process of learning is expensive as well as time consuming.

    4.3 Assessment scheme
    The assessment scheme for trainee taxi drivers in London was designed to support the learning process and guide students from early stages of learning the initial Blue Book runs to final stages, where their knowledge of London and suburban artery roads is rigorously challenged (Figure 6; interview with K.T., Appendix S1, Learn the Knowledge of London, Transport for London, n.d.). Initially, Knowledge schools offer an introductory class to provide basic information and an overview of the content of the Knowledge. This introductory class includes expectations, procedures, and requirements of the qualification process, before preparatory examinations (Figure 6, light gray) can be taken. Within the first 6 months of starting the Knowledge, students are expected to sit an assessment that is testing the Knowledge on the initial 80 runs (five lists) of the Blue Book. Even though this assessment is unmarked, it is obligatory and of supportive and informative purpose at the same time (i.e., formative assessment). Feedback is given and the performance is discussed with teachers to help students identify problems in their learning process that need adjustment at an early stage to enable students to successfully progress at later stages. Following this initial self-assessment, students have 18 months to sit a marked multiple-choice exam that tests their knowledge of the Blue Book, to ensure they have acquired the basics that are necessary to progress to the appearance stages (Figure 6, dark gray). To test this, the multiple-choice exams consist of two parts, where (a) the shortest, legal route out of three possibilities has to be identified for 5 randomly chosen Blue Book runs, and (b) the correct location out of six possible locations has to be selected for 25 points of interest that are likely to be part of the learning of the Blue Book runs.

    FIGURE 6


    Knowledge examination process. The initial stage (light gray) of the Knowledge examination process provides feedback (Self-Assessment) on the individual progress of learning the first 80 runs of the Blue Book and assesses the minimum knowledge on all 320 Blue Book runs needed (Multiple Choice Exam) to start the oral examination (Appearances). The main part of the examination process (dark gray) consists of a series of oral examinations, the so-called “appearances,” consisting of three different stages (the 56s, 28s, and 21s, named after the intervals between each exam in the corresponding stage). Even though the requirements to students sitting these exams become more rigorous as they proceed, there are general rules that apply across all stages. These are related to the general layout of each appearance (e.g., duration, number of runs), expectations (e.g., shortest route), format of call out (e.g., identifying the location of origin and destination, sequentially naming streets and providing turning instructions), penalties (e.g., traffic rule violations, deviations from shortest route, hesitations), awarded points and progressing to the next stage. Following the appearances, students are required to pass an exam on suburban Knowledge before they obtain their license
    Source: Adapted from Learn the Knowledge of London; Knowledge of London learning and examination process, p. 21

    After passing the two entry assessments, trainee taxi drivers enter what is known as the “appearances,” a set of oral examinations. At each appearance, students are expected to call runs from any two points that the examiner names. The appearances also comprise the longest and most difficult part of the Knowledge examination process. It is quite common that several of the stages have to be retaken by students due to shorter intervals between appearances coupled with the growing expectations of the examiners as they proceed. In total, there are three stages of appearances, the 56s, 28s, and 21s, which correspond to the number of days between any two appearances in that stage.

    Even though the requirements for students sitting these exams become more rigorous as they proceed, there are general rules that apply across all stages: Each appearance is about 20 min long and can consist of up to 4 runs that students have to call, using the shortest route, disregarding traffic and temporary roadworks. The call outs (i.e., naming streets in sequential order) include identifying the location (i.e., the correct street) of the origin and destination (points of interest), naming streets and giving turning directions along the run in correct sequential order, as well as including instructions for leaving and setting down passengers. Possible errors that will cause deductions of points are incorrect street names, any divergence from the shortest route, violation of traffic rules, impossible leaving or setting down instructions and hesitations during the call of the run. In each appearance, 3–6 points are awarded and 12 points are needed to progress to the next stage. Per stage, students are allowed to fail a maximum of three appearances, before the stage has to be repeated (first time) or students have to go back to a previously successfully passed stage (failing second time), limiting the number of exams per stage to a maximum of seven appearances.

    In contrast to later appearance stages, the “‘56s” are very closely related to the Knowledge obtained from the Blue Book. Here, examiners closely stick to runs from the Blue Book, which reflects a good knowledge of primary and secondary roads (i.e., the “oranges and lemons”). At this stage, examiners also take into account differences in the choice of additional points of the quarter-miles that different Knowledge schools provide in their version of the Blue Book (Figure 2a). Additionally, runs are structured in a way that they will not contain obstacles (e.g., road closures), special requirements (e.g., requests to avoid traffic lights) or theater shows and temporary events (e.g., Chelsea Flower Show). Students are also allowed to correct mistakes by going back in their call out and changing their run. At the next stage, the “28s,” examinees are expected to be able to link runs, using some minor roads and avoid obstacles or comply with special requests without being granted a chance of correcting faulty runs. At the final stage, the 21 s, trainee drivers have to demonstrate an overarching knowledge that is up to date and can additionally refer to particular topics (e.g., new tourist attractions, changes in hotel names) and temporary events, such as the Chelsea Flower Show.

    After passing all appearances, the final exam is set to test the knowledge of suburban London. This knowledge covers 22 specific routes, including major points along those routes, radiating from the six-mile radius to the borough boundaries of London. In this final appearance, trainee drivers will be asked six questions relating to the 22 routes and points along those routes.

    For the learning process of a Knowledge student, the Blue Book is central, as it provides them with “the ability to know where streets and roads are going to and where all those places are” (interview with K.T., Appendix S1). However, over the course of obtaining the Knowledge and learning how to link Blue Book runs efficiently, there seems to be a change in the perception of London. Initially it consists of distinct routes and locally focused areas on a map. Over the course of time, this fades into a connected, large-scale, inseparable network of streets and places in the real world (Appendix S1). During consulting conversations with taxi drivers, they reported that they just knew where they had to go without much planning. For well-known places, Robert Lordan described the planning and execution of a run as “I wouldn’t even have to think; my brain would be on autopilot. […] like a moth drawn to a light!” (email conversation with Robert Lordan, Appendix S2). For longer distances, subgoals (as trained with the 50% markers) are used automatically: “I’d find that my brain would often plan in stages; essentially I’d envision a set of waypoints and the route would then come to me as I progressed” (email conversation with Robert Lordan, Appendix S2).

    The overall impact of the Knowledge also seems to foster a deeper connection (“I already loved the city, but in studying it I now love it all the more. It feels like an old, familiar friend,” email conversation with Robert Lordan, Appendix S2). It provides a constant drive to stay up to date with changes in the city (“The Knowledge made me crave detail! To this day I want to know as much as I can about London,” email conversation with Robert Lordan, Appendix S2) and new curiosity (“The Knowledge also makes you want to know as much as you can about new locations that you’ve never been to before,” email conversation with Robert Lordan, Appendix S2).

    5 DISCUSSION
    Here we examined the process by which licensed London taxi drivers learn and are examined on the Knowledge of London, which includes the network of ~26,000 streets and thousands of points of interest. In summary, to learn the Knowledge of London, taxi drivers use a wide range of theoretical and practical methods and learn specific methods for efficient planning. Such training primarily includes map-related study, based on an overlapping network of basic points of interest and list of routes (Blue Book) that systematically covers London. This knowledge is combined with visits to the locations used in the routes and retracing of the theoretically learnt routes on motorbikes. Both experiences are reported to be vital for linking theoretically learned information to specific real-world locations and flexible navigation in London. We also observed a range of techniques to improve memory, such as acronyms and stories linked to sequences of streets, visualizing the locations and travel along streets, and the strategic use of subgoals. We discuss: (i) how these findings relate to other studies examining spatial learning, (ii) how the learning compares with taxi drivers in other cities, (iii) why the knowledge is still required and trained when GPS aided navigation systems exist, and (iv) how these methods and techniques might benefit the general population in spatial learning.

    Research based studies of spatial navigation have employed a variety of methods to train participants learning unfamiliar environments. These include instructed learning of paths (e.g., Brunec et al., 2017; Meilinger et al., 2008; Meilinger, Frankenstein, & Bülthoff, 2014; Meilinger, Riecke, & Bülthoff, 2014; Wiener et al., 2013), learning from cartographic maps (e.g., Coutrot et al., 2018, 2019; Grison et al., 2017; Hölscher et al., 2006, 2009), landmark-based navigation (e.g., Astur et al., 2005; Newman et al., 2007; Wiener et al., 2004, 2012, 2013; Wiener & Mallot, 2003), exploration of the environment without a map (e.g., de Cothi et al., 2020; Hartley et al., 2003; Spiers, Burgess, Hartley, et al., 2001; Spiers, Burgess, Maguire, et al., 2001) or a combination of map study with in situ exploration (e.g., Javadi et al., 2017; Javadi, Patai, Marin-Garcia, Margois, et al., 2019; Javadi, Patai, Marin-Garcia, Margolis, et al., 2019; Newman et al., 2007; Patai et al., 2019; Spriggs et al., 2018; Warren et al., 2017; Wiener et al., 2004; Wiener & Mallot, 2003). The general assumption is that the method used for learning is efficient, or a standard way of learning the environment. Here we found that for London taxi drivers the training is significantly more intensive and elaborate than any of these studies, which relates to the dramatically increased demands of learning 26,000 streets and thousands of points of interest.

    Several methods for learning, such as guided turn-based navigation (e.g., Wiener et al., 2013), have not found an application in the training phase of London taxi drivers. The absence of this approach might be explained through the advantage of in situ experience, understanding the changes with lighting over day time and the very regular changes to the environment (e.g., temporary road closures, name changes of hotels or restaurants, and temporary events). Indeed, being able to adapt to these changes and being aware of some of the temporary events are considered essential knowledge, especially at later stages of the training process.

    Successfully recalling mental images of locations, retrieving specific street names and judicious uses of subgoal planning were described as key to being a London taxi driver. These observations help to explain results of by Spiers and Maguire (2008) where London taxi drivers were asked to recall their thoughts watching video replay of their navigation of a highly detailed virtual reality simulation of London. London taxi drivers often reported sequential planning to subgoals along the route, comparison of route alternatives or mental visualizations of places and route sequences. Many taxi drivers reported “picturing the destination,” planning with a bird’s eye view, and “filling-in” the plan as they navigated, which indicate a use of mental visualization as trained through the Knowledge. We found teachers and examiners claim to know when students “see the points” as they actively visualize origins and destinations as part of their planning process. It may be that trainee taxi drivers need some ability with mental imagery to succeed in the train process. Not all trainees will pass the examination process (Woollett & Maguire, 2011). The ability to use spatial visualization strategies has been found to differ between individuals and vary with age and experience (Salthouse et al., 1990), education levels or gender differences (e.g., Coluccia & Louse, 2004; Fennema & Sherman, 1977; Moffat et al., 1998; Montello et al., 1999; Wolbers & Hegarty, 2010). There is also evidence that certain spatial visualization skills can be improved through training (Sorby, 2009). In our study we found that it was expected that the visualization improves with the training. Further investigation of the visualization process in novice trainees and expert drivers would be useful and may relate to the changes in the hippocampus observed in those that past the exam to obtain a license (Woollett & Maguire, 2011). The multifaceted learning approach reported here may relate to why changes in gray matter density have consistently been observed in taxi drivers.

    Further evidenced use of mental simulation during navigation was found in the way taxi drivers are required to call out the runs in the exam by using instructions and phrases such as “forward,” “left/right into,” and “comply” (traffic rules). These provide an egocentric description of movement through London. Conversely, during the early stages of the Knowledge training, the planning process is reported to rely on an allocentric reference frame by studying maps to train students on planning shortest paths. At later stages, as experience is gained from planning runs and through in situ visits to locations, the aim is to build an automatic awareness of the direction of travel or a particular route. This is consistent with the reports that experienced taxi drivers very rapidly determined the direction to a requested destination (Spiers & Maguire, 2006a, 2008).

    We found that the examination process appears to provide a layered approach to learning the London street network. There is an initial focus on testing the Blue Book routes (runs) or routes along main arterial roads (i.e., “oranges and lemons”) and only at later stages are minor roads integrated into the assessments. However, we found the actual learning process requires students to learn minor roads in the quarter-miles from the beginning (i.e., with the first run). This differs from the requirements in other cities, such as Paris, where drivers have to demonstrate knowledge of a limited number of major points of interest, as well as predefined major routes. There, taxi drivers are expected to expand their knowledge to the minor street network through experience while working as a taxi driver (Préfecture de Police, Démarches, & Services, 2020; Skok, 2004). Similar to the “oranges and lemons” of the London street network, the Parisian street network covers the city in two layers: The base network, an uneven grid-like pattern that allows travel on major roads, helps to reduce traffic on the secondary network, a network of minor streets (Chase, 1982; Pailhous, 1969, 1970, 1984). For Parisian taxi drivers, such a selective learning of the base network was found to be also reflected in their mental representation of the street network in form of these two layers (Pailhous, 1969, 1970, 1984). In contrast to London taxi drivers, Parisian taxi drivers’ awareness of the secondary network only grows and becomes more efficient and optimal through experience rather than in the training and is almost nonexistent at the beginning of their career (Chase, 1982; Giraudo & Peruch, 1988, 1988b; Peruch et al., 1989).

    The approach that London has taken to train and test their taxi drivers on the Knowledge as described above, is historically motivated and has been retained over centuries since its implementation, only allowing for adaptations and improvements. This concept of learning all possible points, their locations, the street names and how to flexibly plan routes and adjust to specific requirements is globally unique. In contrast, other cities, such as Paris (Préfecture de Police, Démarches, & Services, 2020) or Madrid (Federación Profesional del Taxi de Madrid: Departamento de Formación, 2010; Skok & Martinez, 2010), often only require applicants of the trait to learn the major grid of the street network (i.e., the base network) and expect the knowledge of the minor street network (i.e., the secondary network) to be obtained through experience. Instead, taxi drivers are also required to demonstrate knowledge on other trade related areas, such as knowledge related to driving a car, professional regulations, safety and business management, a language test (Skok, 2004), fares and legislations (Skok & Martinez, 2010). Considering these alternative qualification requirements for Paris or Madrid, the London qualification scheme, that relies on a thorough knowledge of London streets, can be questioned as regards to its adequacy and value, in times of GPS systems that can guide navigation.

    Given that GPS in general successfully supports navigation and thus is omnipresent in daily life, it remains a key question as to why London taxi drivers continue to rely on their own abilities to plan routes. We found that this to be their sense of accomplishment of a difficult, and in this case, almost impossible task. They often find pride in their ability to master challenging navigation tasks in a complex city only by using their spatial memory independently from external devices that could be sources of mistakes (McKinlay, 2016). This ability to flexibly navigate beyond a base network of major streets, enables London taxi drivers to rapidly follow their route plan even to points in the secondary network, quickly adapt to any changes on-route due to customer preferences or traffic flow (i.e., congestion or road closures) and avoid errors that might result from incorrect instructions given by passengers (e.g., Lordan, 2018). For instance, they might confuse Chelsea’s buzzing shopping mile, King’s Road, with the quiet King Street near St James’s Park, Westminster. These adaptations, that taxi drivers can make instantly, might even outperform GPS systems that sometimes need manual adjustments and additional information input to get to a similar result. In contrast to London, it takes taxi drivers in Paris, Madrid and other cities years to acquire this type of knowledge in their cities and in the end, they might never achieve a similar, highly accurate knowledge of their cities as some areas might be less frequently traveled. Moreover, their experience to filling the gaps in their knowledge might strongly rely on their use of GPS devices, which have been found to impair spatial learning (e.g., Ishikawa et al., 2008) and interfere with spatial navigation (Johnson et al., 2008; McKinlay, 2016). These methods of training taxi drivers might be less efficient and it is thus not surprising that there have been requests from taxi trades of cities like Tokyo, asking London Knowledge teachers to develop a similar method for their taxi schools (interview with K.T., Appendix S1).

    How might the Knowledge training process be improved? The Knowledge in its current form, based on the 320 Blue Book runs, has been in place for about two decades, but the study methods have remained the same over many more decades. However, there has been a tendency of involving new technologies and creating online resources, such as apps that can hold and test students on the Blue Book runs. By providing the first plot of all the blue book runs we were able to identify regions in the road network that were poorly sampled and it may be possible for this information to be useful should new routes be required in updating the runs.

    It is possible that a database of videos of Blue Book runs would be useful. However, updating this database is a challenge due to the regular change in London’s appearance and layout. Online maps and applications could provide a platform that could be regularly updated. Here, the focus could be on Knowledge requirements that allow general contribution, similar to OpenStreetMaps (n.d.), and individual modification, as with Google My Maps (Google Maps. My Maps, n.d.), to support the individual learning process. Such a platform could include updates on points asked in recent appearances that students use for preparation or an option to train with and challenge other students, as well as their call-over partner. Past research has shown it is possible to probe navigation effectively using Google Street View (Brunec et al., 2018, 2019; Patai et al., 2019). However, these platforms would not be able to replace the social situations that students find themselves in at Knowledge schools and when practicing face to face with their call-over partners. These social interactions also have a psychologically motivating, supportive effect. Neither can these digital maps overcome some obvious visual limitations due to screen sizes. These will not allow for a similar view of the “bigger picture” that a wallpaper map is able to convey.

    How might the learning process described here be exploited for the general population to learn new places, or emergency workers, or those with wayfinding difficulties caused by a clinical condition? A number of recommendations could be made. One is the focus on street-names. Much navigation in cities can be based on landmarks and the rough knowledge of the area. Recent work has explored how navigation could be improved by enhanced acquisition of landmark knowledge using audio information (Gramann et al., 2017; Wunderlich et al., 2020; Wunderlich & Gramann, 2019). While landmark acquisition is important for navigation (points of interest for the taxi drivers), our analysis of how London taxi drivers learn shows the extra value of learning street names. Learning the street names makes it possible to plan precise paths through the network of streets. This allows for flexible planning that goes beyond chaining sets of landmarks together. This learning can be enhanced by a focus on methods to draw out the street names such as acronyms and rhymes (“East to West Embankment Best”). The memory techniques used in Knowledge schools to memorize sequences of streets such as the “dumbbell method” that links small areas through routes, or mental visualizations of familiar places could initiate new ways of displaying spatial information in maps or GPS devices. A focus on mental imagery is also worth considering in future research to explore how this may benefit new navigation. Finally, teaching a method for efficient planning of longer routes would be a benefit. More research will be required to fully explore these possibilities and understand how they may be integrated with other technology for efficient spatial learning. In such research understanding the order in which information and training is provided would be an important step. Trainee taxi drivers do not have a set order by which they use the different methods, other than the prescribed order in which they learn the blue book runs. Future route guidance systems for learning a new environment might exploit the approach of integrating a set of routes as taxi drivers do here.

    Another question arising is how might these discoveries be useful for researchers seeking to build efficient artificial intelligence systems capable of rapid learning and planning? Recent work has explored methods for learning environments and navigating them from street view data or video (Hermann et al., 2020; Mirowski et al., 2016; Xu et al., 2021). The main discoveries here that may be relevant are (1) the organized learning of a set of interconnected routes that allows for flexible planning in the future, (2) the focus on learning a route and then exploring the points at the start and end and then connecting the route to other routes, and (3) learning to create subgoals during the planning process. These approaches to learning may extend not just to improving guidance for how humans learn but for considering the construction of agents that optimally learn structures in the layout of a large city network.

    In conclusion, studying the training process of licensed London taxi drivers has provided a useful opportunity to better understand learning strategies and methods that efficiently support the learning process of a large and complex environment. In this observational report, information was gathered on licensed London taxi drivers, who acquire unique spatial knowledge to navigate an enormous street network independently from external support, such as GPS. Forming such mental representations of real-world spaces is essential for the job they perform. Essential strategies include memory techniques, map-based strategies using tactical subgoal selection to improve planning efficiency and mental visualization of places and routes based on experiences. Further research is needed to understand the mental representation that results from these training methods and how this representation affects navigation related planning in brain circuits including the hippocampus.

    #Taxi #Neurologie #Hirnforschung

  • #SARS‐CoV‐2 virulence evolution: Avirulence theory, immunity and trade‐offs - Alizon - - Journal of Evolutionary Biology - Wiley Online Library
    https://onlinelibrary.wiley.com/doi/10.1111/jeb.13896

    In the long run, immune escape strategies may not be viable for coronaviruses because they impose too many constraints on their genomes (Belshaw et al., 2008). Such reasoning largely rests on our knowledge of the current seasonal coronaviruses, for which large pandemics of immune escape mutants have not been recorded. However, recent results from a time shift experiment conducted using human serum collected from 1985 and 1990 and synthesized spike proteins of the seasonal alphacoronavirus 229E from 1984 to 2016 found that our immune system appears to be less efficient at recognizing ‘future’ coronaviruses (Eguia et al., 2021). This would mean that regular reinfections by seasonal coronaviruses may not just be related to their ability to infect URT, where the immune response is limited, but could also depend on antigenic evolution of the viral spike. Furthermore, an important lesson from this pandemic is that extreme care should be taken before comparing SARS-CoV-2 to other viruses, even human coronaviruses. Indeed, this has led to underestimating the transmission before symptoms onset, the airborne transmission and even the magnitude of the pandemic. One of the most recent seasonal coronaviruses is thought to have emerged in the 1950s (Forni et al., 2017). As suggested by Figure 1b, even though half a century ago the age pyramids were different in many countries, the IFR of a coronavirus with a virulence pattern similar to SARS-CoV-2 would not have gone unnoticed, although the baseline immunity in the population to viral infections could have been higher at the time due to higher exposition to infectious diseases. This suggests that the virulence of the new virus, which is lower than SARS-CoV and MERS, with increased transmission before symptoms, but higher than the seasonal coronaviruses, is the worst in terms of population mortality. Again, basing our strategies on immune escape patterns from known coronaviruses can be extremely hazardous.

    The high virulence of SARS-CoV-2 and its evolution makes it essential to closely monitor this trait. Beyond the definition issues raised in the introduction, a major difficulty for this resides in the proportion of asymptomatic or paucisymptomatic infections, meaning that the IFR is much more difficult to measure than the CFR. To minimize the biases in virulence estimation, the random testing strategy implemented in countries such as the UK seems ideal because it allows controlling for the proportion of variants (Challen et al., 2021; Davies, Jarvis, et al., 2021). International coordination for such random testing appears to be particularly urgent, especially in the context of vaccination (Kennedy & Read, 2020).

    On a more positive note, the successful implementation of RNA vaccines does change the dark picture painted by immune escape risk. Indeed, these vaccines theoretically have the potential to follow the coevolutionary race with the virus, at least whereas its genetic diversity remains limited (Dearlove et al., 2020), and this could prove decisive, given the evolutionary rates observed so far. However, we also know that virulence-blocking vaccines tend to select for strains that are more virulent in nonvaccinated hosts (Gandon et al., 2001). More than ever, we need to monitor virus evolution to avoid an arms race between SARS-CoV-2 and public health policies (Kennedy & Read, 2020; Van Baalen, 1998).

  • #COVID-19 : Un coup de chaleur assomme le #SARS-CoV-2 en moins d’une seconde | santé log
    https://www.santelog.com/actualites/covid-19-un-coup-de-chaleur-assomme-le-sars-cov-2-en-moins-dune-seconde

    [...] cette recherche menée à l’Université Texas A&M montre que l’exposition à une température élevée neutralise le SARS-CoV-2 en moins d’une seconde. Il s’agit de « chauffer » le coronavirus à 72° C, un niveau certes pas supportable pour l’Homme mais qui ouvre des applications de désinfection via des systèmes d’aération existants, tels que les systèmes de chauffage, de ventilation et de climatisation. Ces travaux de laboratoire, publiés dans la revue Biotechnology and Bioengineering laissent ainsi espérer l’efficacité de traitements thermiques ultra-rapides des bâtiments publics.

    Source :
    Sub‐second heat inactivation of coronavirus using a betacoronavirus model - Jiang - 2021 - Biotechnology and Bioengineering - Wiley Online Library
    https://onlinelibrary.wiley.com/doi/10.1002/bit.27720

  • Invisibiliser pour dominer. L’effacement des classes populaires dans l’urbanisme contemporain
    https://journals.openedition.org/tem/5241

    « Il n’y avait rien ». La récurrence de cette expression au sein de discours recueillis dans deux types très différents d’opérations de requalification urbaine soulève la question de l’invisibilisation de certains groupes sociaux dans l’urbanisme contemporain. À partir du matériau qualitatif issu de nos terrains d’enquête – un nouveau quartier d’habitation lyonnais et des jardins partagés de région parisienne – nous mettons en évidence un processus d’invisibilisation et de stigmatisation. Dans les deux cas, ce processus accompagne le remplacement de classes populaires par des groupes plus favorisés socialement. L’analyse comparative nous permet d’en montrer les enjeux. D’une part, l’invisibilisation participe à renforcer la position dominante des invisibilisateurs. En effet, un tel processus n’est pas neutre et ne peut s’appliquer qu’en situation de domination. Il intervient dans les cas observés pour compenser le déficit d’antériorité, seul manque de légitimité qui pourrait mettre en danger la posture des invisibilisateurs. D’autre part, la stigmatisation écarte les indésirables sur la base de critères individualisés, niant la dimension sociale et politique des luttes pour l’espace. Le croisement de nos deux terrains nous permet ainsi de décrire les fonctions sociales de ce processus pour les acteurs qui le produisent et de considérer ce qu’il révèle des rapports de domination travaillés par les enjeux d’urbanisme.

    #gentrification #lutte_des_classes #urban_matters
    #Matthieu_Adam #Léa_Mestdagh

    • Struggling with the Creative Class - PECK - 2005 - International Journal of Urban and Regional Research - Wiley Online Library
      https://onlinelibrary.wiley.com/doi/abs/10.1111/j.1468-2427.2005.00620.x

      L’article présente une critique des concepts de ‘classe créative’ et ‘villes créatives’ publiés récemment. La portée géographique et la pertinence politique de ces discours s’expliquent non par leurs mérites intrinsèques, ceux‐ci pouvant être remis en question à plus d’un titre, mais en tant que fonction des paysages urbains fortement néolibéraux qu’ils ont traversés. Quant à leur manifestation concrète de l’innovation culturelle libérale, les stratégies de créativité dérangent à peine les orthodoxies qui subsistent en politique urbaine, fondées sur une compétition interlocale, un marketing de lieu, une expansion axée sur la propriété et le marché, un embourgeoisement et une inégalité socio‐spatiale normalisée. Mais surtout, ces stratégies toujours plus présentes prolongent et recodifient des tendances bien installées en politique urbaine néolibérale, les rhabillant de manière attrayante dans un flou artistique terminologique de politique culturelle. Ainsi, la créativité est élevée au statut de nouvel impératif urbain pour définir de nouveaux sites, valider de nouvelles stratégies, positionner de nouveaux sujets et instaurer de nouveaux enjeux dans la concurrence interurbaine.

    • Migration, environnement et gentrification rurale en Montagne limousine
      https://journals.openedition.org/rga/2525

      Les dynamiques migratoires des espaces ruraux et/ou montagnards font l’objet de nombreuses recherches dont les différents appareillages conceptuels et méthodologiques relèvent de (sous)champs scientifiques ou disciplinaires distincts. Se distinguent, entre autres, les entrées par la population, les migrations d’aménités ou encore par la gentrification rurale (Smith, 1998 ; M. Phillips, 1993 ; Bryson et Wyckoff, 2010). C’est à travers le prisme de cette dernière que la contribution proposée vise à lire les dynamiques démographiques, socioculturelles et environnementales à l’œuvre dans la Montagne limousine. Une partie de la littérature anglo-saxonne portant sur la gentrification rurale a permis de souligner le rôle central de l’environnement et/ou de la nature à la fois en tant que représentations et cadre géographique dans les dynamiques migratoires et les processus de recomposition sociale susceptibles de produire une ou des formes de gentrification rurale, ou greentrication. Dans le détail, l’environnement agirait en amont de l’installation des migrants et les accompagnerait tout au long de leur parcours migratoire et résidentiel. Mais en aval de leur implantation, du fait même de leurs caractéristiques de gentrifieurs, c’est-à-dire de nouveaux résidents, acteurs de la gentrification, ces derniers agiraient pour modifier la ou les dimensions environnementales de leur cadre de vie et le faire ainsi tendre vers « l’idéal » qui les avait initialement attirés. En l’espèce, les enquêtes de terrain tendraient à indiquer que si ce cadre général est plutôt pertinent pour la Montagne limousine, il reste néanmoins nécessaire de préciser, d’une part la nature des gentrifieurs, lesquels pourraient éventuellement être qualifiés d’altergentrifieurs, et d’autre part, que leur impact est inégalement significatif au sein du PNR de Millevaches.

    • L’injonction aux comportements « durables », nouveau motif de production d’indésirabilité
      https://journals.openedition.org/gc/4497

      Les projets urbains dits durables se sont multipliés durant la décennie dernière. Matériellement standardisés, ils sont aussi accompagnés de la diffusion d’attendus comportementaux à destination des habitants. Ceux-ci sont incités à adopter des comportements « éco-citoyens » (faible utilisation de l’automobile, tri des déchets, consommation dite responsable) censés être plus « vertueux ». Outre les élus et les communicants, les concepteurs (urbanistes, architectes, paysagistes) et certains habitants de ces projets diffusent ces attendus comportementaux. Les jugements moraux associés aux comportements sont vite transférés aux individus et aux groupes. Ceux qui les mettent en œuvre sont légitimés, à l’inverse de ceux qui ne les adoptent pas. Nous observons un processus de catégorisation qui distin­gue usagers légitimés ou indésirables en vertu de la conformité ou non de leurs pratiques avec les valeurs durabilistes. En l’occurrence, ce sont les habitants des logements sociaux et ceux issus des classes populaires qui sont montrés du doigt. L’objectif de cet article est de comprendre comment le développement urbain durable rénove les motifs de production de l’indésirabilité. Cet article s’appuie sur l’analyse de 71 entretiens réalisés avec les concepteurs et les habitants de deux projets urbains emblématiques de la production contemporaine : Bottière-Chénaie, à Nantes, et Confluence, à Lyon. Notre enquête montre une redéfinition du groupe social habitant en fonction de la conformité ou non de ses membres à la nouvelle norme qu’est le développement urbain durable.

  • Researchers find that more people died from opioid deaths than reported - The Washington Post
    https://www.washingtonpost.com/health/2020/02/28/opioid-deaths

    Opioid-related overdoses could be 28 percent higher than reported because of incomplete death records, researchers found in a study published Thursday.

    More than 400,000 people in the United States have died of opioid overdoses since the turn of the century, a quarter of them in just the past six years. But University of Rochester researchers found that between 1999 and 2016, about 100,000 more people died from opioids who were not accounted for — potentially obscuring the scope of the opioid epidemic and affecting funding for government programs intended to confront it, Elaine Hill, an economist and senior author of the study, told The Washington Post.

    The discrepancies were most pronounced in several states, including Alabama, Mississippi, Pennsylvania, Louisiana and Indiana.
    We thought we would find underreporting, but we were definitely not prepared to find how spatially determined it is,” Hill said.

    • The researchers found that the records were least consistent in poorer communities. On average, the people whose records were not counted were white females in the 30 to 60 age range.
      The incorrect records could be attributed to several factors, Hill said. Limited resources in counties can delay toxicology reports, limit drug testing and even prevent the completion of autopsies.

    • Seul le résumé est accessible

      Using contributing causes of death improves prediction of opioid involvement in unclassified drug overdoses in US death records - Boslett - - Addiction - Wiley Online Library
      https://onlinelibrary.wiley.com/doi/10.1111/add.14943

      Abstract
      Background and Aims

      A substantial share of fatal drug overdoses is missing information on specific drug involvement, leading to under‐reporting of opioid‐related death rates and a misrepresentation of the extent of the opioid epidemic. We aimed to compare methodological approaches to predicting opioid involvement in unclassified drug overdoses in US death records and to estimate the number of fatal opioid overdoses from 1999 to 2016 using the best‐performing method.

      Design
      This was a secondary data analysis of the universe of drug overdoses in 1999–2016 obtained from the National Center for Health Statistics Detailed Multiple Cause of Death records.

      Setting
      United States.

      Cases
      A total of 632 331 drug overdose decedents. Drug overdoses with known drug classification comprised 78.2% of the cases (n = 494 316) and unclassified drug overdoses (ICD‐10 T50.9) comprised 21.8% (n = 138 015).

      Measurements
      Known opioid involvement was defined using ICD‐10 codes T40.0–40.4 and T40.6, recorded in the set of contributing causes. Opioid involvement in unclassified drug overdoses was predicted using multiple methodological approaches: logistic regression and machine learning techniques, inclusion/exclusion of contributing causes of death and inclusion/exclusion of county‐level characteristics. Having selected the model with the highest predictive ability, we calculated corrected estimates of opioid‐related mortality.

      Findings
      Logistic regression and random forest models performed similarly. Including contributing causes substantially improved predictive accuracy, while including county characteristics did not. Using a superior prediction model, we found that 71.8% of unclassified drug overdoses in 1999–2016 involved opioids, translating into 99 160 additional opioid‐related deaths, or approximately 28% more than reported. Importantly, there was a striking geographic variation in undercounting of opioid overdoses.

      Conclusions
      In modeling opioid involvement in unclassified drug overdoses, highest predictive accuracy is achieved using a statistical model—either logistic regression or a random forest ensemble—with decedent characteristics and contributing causes of death as predictors.

  • Smuggling, Trafficking, and Extortion: New Conceptual and Policy Challenges on the Libyan Route to Europe

    This paper contributes a conceptual and empirical reflection on the relationship between human smuggling, trafficking and #kidnapping, and extortion in Libya. It is based on qualitative interview data with Eritrean asylum seekers in Italy. Different tribal regimes control separate territories in Libya, which leads to different experiences for migrants depending on which territory they enter, such as Eritreans entering in the southeast #Toubou controlled territory. We put forth that the kidnapping and extortion experienced by Eritreans in Libya is neither trafficking, nor smuggling, but a crime against humanity orchestrated by an organized criminal network. The paper details this argument and discusses the implications.

    https://onlinelibrary.wiley.com/doi/epdf/10.1111/anti.12579
    #traite_d'êtres_humains #traite #trafic_d'êtres_humains #Libye #asile #migrations #réfugiés #réfugiés_érythréens #extorsion #crime_contre_l'humanité #cartographie #visualisation
    ping @isskein

  • Spatio‐temporal assessment of illicit drug use at large scale: evidence from 7 years of international wastewater monitoring - González‐Mariño - - Addiction - Wiley Online Library
    https://onlinelibrary.wiley.com/doi/10.1111/add.14767


    Figure 6: 2011–17 total average number of doses/1000 people/day

    Abstract

    Background and aims
    Wastewater‐based epidemiology is an additional indicator of drug use that is gaining reliability to complement the current established panel of indicators. The aims of this study were to: (i) assess spatial and temporal trends of population‐normalized mass loads of benzoylecgonine, amphetamine, methamphetamine and 3,4‐methylenedioxymethamphetamine (MDMA) in raw wastewater over 7 years (2011–17); (ii) address overall drug use by estimating the average number of combined doses consumed per day in each city; and (iii) compare these with existing prevalence and seizure data.

    Design
    Analysis of daily raw wastewater composite samples collected over 1 week per year from 2011 to 2017.

    Setting and Participants
    Catchment areas of 143 wastewater treatment plants in 120 cities in 37 countries.

    Measurements
    Parent substances (amphetamine, methamphetamine and MDMA) and the metabolites of cocaine (benzoylecgonine) and of Δ9‐tetrahydrocannabinol (11‐nor‐9‐carboxy‐Δ9‐tetrahydrocannabinol) were measured in wastewater using liquid chromatography–tandem mass spectrometry. Daily mass loads (mg/day) were normalized to catchment population (mg/1000 people/day) and converted to the number of combined doses consumed per day. Spatial differences were assessed world‐wide, and temporal trends were discerned at European level by comparing 2011–13 drug loads versus 2014–17 loads.

    Findings
    Benzoylecgonine was the stimulant metabolite detected at higher loads in southern and western Europe, and amphetamine, MDMA and methamphetamine in East and North–Central Europe. In other continents, methamphetamine showed the highest levels in the United States and Australia and benzoylecgonine in South America. During the reporting period, benzoylecgonine loads increased in general across Europe, amphetamine and methamphetamine levels fluctuated and MDMA underwent an intermittent upsurge.

    Conclusions
    The analysis of wastewater to quantify drug loads provides near real‐time drug use estimates that globally correspond to prevalence and seizure data.

    article en libre accès

  • Global Migration Trends 2015 Factsheet

    J’archive ici ce document car il y a la référence au 3%, que je cherche depuis longtemps :

    In 2015, the number of international migrants worldwide – people residing in a country other than their country of birth – was the highest ever recorded, having reached 244 million (from 232 million in 2013). As a share of the world population, however, international migration has remained fairly constant over the past decades, at around 3% . While female migrants constitute only 48% of the international migrant stock worldwide, and 42% in Asia, women make up the majority of international migrants in Europe (52.4%) and North America (51.2%).

    http://publications.iom.int/system/files/global_migration_trends_2015_factsheet.pdf

    #asile #migrations #statistiques #chiffres #3% #3_pourcent
    cc @reka