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10.1038/s41591-020-1104-0

http://scihub22266oqcxt.onion/10.1038/s41591-020-1104-0
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33020651!ä!33020651

suck abstract from ncbi

pmid33020651      Nat+Med 2020 ; 26 (12): 1829-1834
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  • Crowding and the shape of COVID-19 epidemics #MMPMID33020651
  • Rader B; Scarpino SV; Nande A; Hill AL; Adlam B; Reiner RC; Pigott DM; Gutierrez B; Zarebski AE; Shrestha M; Brownstein JS; Castro MC; Dye C; Tian H; Pybus OG; Kraemer MUG
  • Nat Med 2020[Dec]; 26 (12): 1829-1834 PMID33020651show ga
  • The coronavirus disease 2019 (COVID-19) pandemic is straining public health systems worldwide, and major non-pharmaceutical interventions have been implemented to slow its spread(1-4). During the initial phase of the outbreak, dissemination of severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) was primarily determined by human mobility from Wuhan, China(5,6). Yet empirical evidence on the effect of key geographic factors on local epidemic transmission is lacking(7). In this study, we analyzed highly resolved spatial variables in cities, together with case count data, to investigate the role of climate, urbanization and variation in interventions. We show that the degree to which cases of COVID-19 are compressed into a short period of time (peakedness of the epidemic) is strongly shaped by population aggregation and heterogeneity, such that epidemics in crowded cities are more spread over time, and crowded cities have larger total attack rates than less populated cities. Observed differences in the peakedness of epidemics are consistent with a meta-population model of COVID-19 that explicitly accounts for spatial hierarchies. We paired our estimates with globally comprehensive data on human mobility and predict that crowded cities worldwide could experience more prolonged epidemics.
  • |*Crowding[MESH]
  • |*Pandemics[MESH]
  • |COVID-19/*epidemiology/*etiology[MESH]
  • |China/epidemiology[MESH]
  • |Cities/epidemiology[MESH]
  • |Contact Tracing[MESH]
  • |Demography/standards/statistics & numerical data[MESH]
  • |Disease Outbreaks[MESH]
  • |Forecasting/methods[MESH]
  • |Geography[MESH]
  • |Human Activities/statistics & numerical data[MESH]
  • |Humans[MESH]
  • |Physical Distancing[MESH]
  • |Population Density[MESH]
  • |Public Policy/trends[MESH]
  • |SARS-CoV-2/physiology[MESH]


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