| Literature DB >> 32548274 |
Nuria Oliver1,2, Bruno Lepri2,3, Harald Sterly4, Renaud Lambiotte5,6, Sébastien Deletaille7, Marco De Nadai3, Emmanuel Letouzé2,8, Albert Ali Salah2,9, Richard Benjamins10,11, Ciro Cattuto12,13, Vittoria Colizza14, Nicolas de Cordes15, Samuel P Fraiberger16, Till Koebe2,17, Sune Lehmann18, Juan Murillo19, Alex Pentland20, Phuong N Pham2,21, Frédéric Pivetta22, Jari Saramäki23, Samuel V Scarpino24, Michele Tizzoni12, Stefaan Verhulst25, Patrick Vinck2,21.
Abstract
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Year: 2020 PMID: 32548274 PMCID: PMC7274807 DOI: 10.1126/sciadv.abc0764
Source DB: PubMed Journal: Sci Adv ISSN: 2375-2548 Impact factor: 14.136
Examples of questions by areas of inquiry.
| • What are the most common | • What are variables that |
| • Which areas are spreading the | • How do local mobility patterns |
| • Are people continuing to travel | • Are business’ social distancing |
| • Are there hotspots at higher risk | • In what sectors are people |
| • What are the key entry points, | • What are the social and |
| • How are certain human mobility | • How have travel restrictions |
| • What are the likely effects of | • What is the potential of various |
| • What are likely to be the | • What is the effect of mandatory |
| • How has the dissemination of |
Fig. 1Pandemic intervals as defined by the U.S. Centers for Disease Control and the World Health Organization [based on ()].
Fig. 2Extraction of aggregated metrics from mobile phone data.
(A) Raw data representing 1-day mobility of two users. In this example, the area B is a hotspot, as it shows a high concentration of people. (B) OD matrix of five different areas, counting the number of trips from one area (rows) to another area (columns). (C) Contact matrix counting the number of potential face-to-face interactions between age groups. (D) Percentage of time spent at home, work, and other locations.