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      Assessing the use of mobile phone data to describe recurrent mobility patterns in spatial epidemic models

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          Abstract

          The recent availability of large-scale call detail record data has substantially improved our ability of quantifying human travel patterns with broad applications in epidemiology. Notwithstanding a number of successful case studies, previous works have shown that using different mobility data sources, such as mobile phone data or census surveys, to parametrize infectious disease models can generate divergent outcomes. Thus, it remains unclear to what extent epidemic modelling results may vary when using different proxies for human movements. Here, we systematically compare 658 000 simulated outbreaks generated with a spatially structured epidemic model based on two different human mobility networks: a commuting network of France extracted from mobile phone data and another extracted from a census survey. We compare epidemic patterns originating from all the 329 possible outbreak seed locations and identify the structural network properties of the seeding nodes that best predict spatial and temporal epidemic patterns to be alike. We find that similarity of simulated epidemics is significantly correlated to connectivity, traffic and population size of the seeding nodes, suggesting that the adequacy of mobile phone data for infectious disease models becomes higher when epidemics spread between highly connected and heavily populated locations, such as large urban areas.

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          A universal model for mobility and migration patterns.

          Introduced in its contemporary form in 1946 (ref. 1), but with roots that go back to the eighteenth century, the gravity law is the prevailing framework with which to predict population movement, cargo shipping volume and inter-city phone calls, as well as bilateral trade flows between nations. Despite its widespread use, it relies on adjustable parameters that vary from region to region and suffers from known analytic inconsistencies. Here we introduce a stochastic process capturing local mobility decisions that helps us analytically derive commuting and mobility fluxes that require as input only information on the population distribution. The resulting radiation model predicts mobility patterns in good agreement with mobility and transport patterns observed in a wide range of phenomena, from long-term migration patterns to communication volume between different regions. Given its parameter-free nature, the model can be applied in areas where we lack previous mobility measurements, significantly improving the predictive accuracy of most of the phenomena affected by mobility and transport processes.
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            Unique in the Crowd: The privacy bounds of human mobility

            We study fifteen months of human mobility data for one and a half million individuals and find that human mobility traces are highly unique. In fact, in a dataset where the location of an individual is specified hourly, and with a spatial resolution equal to that given by the carrier's antennas, four spatio-temporal points are enough to uniquely identify 95% of the individuals. We coarsen the data spatially and temporally to find a formula for the uniqueness of human mobility traces given their resolution and the available outside information. This formula shows that the uniqueness of mobility traces decays approximately as the 1/10 power of their resolution. Hence, even coarse datasets provide little anonymity. These findings represent fundamental constraints to an individual's privacy and have important implications for the design of frameworks and institutions dedicated to protect the privacy of individuals.
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              Anticipating the international spread of Zika virus from Brazil.

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                Author and article information

                Journal
                R Soc Open Sci
                R Soc Open Sci
                RSOS
                royopensci
                Royal Society Open Science
                The Royal Society Publishing
                2054-5703
                May 2017
                17 May 2017
                17 May 2017
                : 4
                : 5
                : 160950
                Affiliations
                [1 ]Dipartimento di Fisica, Università degli Studi di Torino , via Giuria 1, Torino 10125, Italy
                [2 ]ISI Foundation , via Alassio 11/C, Torino 10126, Italy
                [3 ]Aizoon Technology Consulting , Str. del Lionetto 6, Torino, Italy
                [4 ]Sociology and Economics of Networks and Services Department, Orange Laboratories , Issy-les-Moulineaux, France
                [5 ]Sorbonne Universités, UPMC Univ Paris 06, INSERM, Institut Pierre Louis d’Epidémiologie et de Santé Publique (IPLESP, UMR–S 1136) , Paris, France
                Author notes
                Author for correspondence: Michele Tizzoni e-mail: michele.tizzoni@ 123456isi.it
                Author information
                http://orcid.org/0000-0001-7246-2341
                Article
                rsos160950
                10.1098/rsos.160950
                5451791
                28572990
                4cabfe7f-9a19-40b1-b9c0-96cd9c36cada
                © 2017 The Authors.

                Published by the Royal Society under the terms of the Creative Commons Attribution License http://creativecommons.org/licenses/by/4.0/, which permits unrestricted use, provided the original author and source are credited.

                History
                : 22 November 2016
                : 19 April 2017
                Funding
                Funded by: Seventh Framework Programme, http://dx.doi.org/10.13039/501100004963;
                Award ID: 278433
                Funded by: Agence Nationale de la Recherche, http://dx.doi.org/10.13039/501100001665;
                Award ID: ANR-12-MONU-0018
                Funded by: Fondazione CRT, http://dx.doi.org/10.13039/100007364;
                Award ID: Lagrange Project
                Categories
                1001
                44
                87
                1003
                50
                Biology (Whole Organism)
                Research Article
                Custom metadata
                May, 2017

                epidemic modelling,infectious diseases,mobile phones,spatial epidemiology

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