Human contact network analytics and COVID-19 hospital incidence in France
收藏NIAID Data Ecosystem2026-03-12 收录
下载链接:
https://zenodo.org/record/5207323
下载链接
链接失效反馈官方服务:
资源简介:
This data set contains COVID-19 hospital incidence, temperature and human mobility and contact data recorded between 2020-03-24 and 2021-03-30 used in the paper:
Selinger et al. 2021: Predicting COVID-19 incidence in French hospitals using human contact network analytics. 10.1016/j.ijid.2021.08.029
See methods in the article for detailed descriptions and the data curation process.
1) cov_mob_tst_national.csv contains national-level data
The columns comprise:
incid_hosp: hospital admission incidence
incid_rea: ICU admission incidence
incid_dc: hospital death incidence
incid_rad: incidence of those returned home
within_departement_colocation_X%: X%-quantile of colocation probabilities with départements
between_departement_colocation_X%: X%-quantile of colocation probabilities between départements
fb_population_coverage_X%: X%-quantile of ratio of fb_population over census population in département
null_links_X%: X%-quantile of null links across départements
clustering_X%: X%-quantile of clustering coefficients across départements
ricci_X%: X%-quantile of curvature across départements
ricci_min_X%: X%-quantile of minimum curvature across départements
ricci_mean_X%: X%-quantile of average curvature across départements
ricci_max_X%: X%-quantile of maximum curvature across départements
strength_X%: X%-quantile of network strengths across départements
betweenness_centrality_X%: X%-quantile of betweenness_centrality scores across départements
positive_test_ratio_weekly: ratio of weekly cumulated positive tested over weekly cumulated tests
retail_and_recreation_percent_change_from_baseline: Google Mobility Reports
grocery_and_pharmacy_percent_change_from_baseline: Google Mobility Reports
parks_percent_change_from_baseline: Google Mobility Reports
transit_stations_percent_change_from_baseline: Google Mobility Reports
workplaces_percent_change_from_baseline: Google Mobility Reports
residential_percent_change_from_baseline: Google Mobility Reports
mean_temperature_X%: X% quantile of mean daily temperatures averaged over the week across départements
min_temperature_X%: X% quantile of minimum daily temperatures averaged over the week across départements
max_temperature_X%: X% quantile of maximum daily temperatures averaged over the week across départements
2) cov_mob_dep.csv contains département-level data
The columns comprise:
dep: département code
incid_hosp: hospital admission incidence
incid_rea: ICU admission incidence
incid_dc: hospital death incidence
incid_rad: incidence of those returned home
week: week (matched to colocation data recording usually on Tuesdays)
dep_name: name of the département
null_links: number of null links
betweenness_centrality: betweenness centrality
clustering: clustering coefficient
strength: network strength
ricci_mean: minimum curvature among all edges incident to a département
ricci_min: mean curvature across all edges incident to a département
ricci_X%: X%-quantile curvature among all edges incident to a département
fb_population: number of facebook users
facebook_colocation_within_dep: colocation probability within département
fb_population_coverage: ratio of fb_population over census population in département
facebook_colocation_between_dep_X%: X%-quantile of facebook colocation among all edges incident to the département
min_temperature: minimum daily temperature averaged over the week
max_temperature: maximum daily temperature averaged over the week
mean_temperature: mean daily temperature averaged over the week
incid_hosp_Y: incidence of hospital admission from Ynd most colocated département
incid_rea_Y: incidence of ICU admission from Ynd most colocated département
incid_dc_Y: incidence of hospital deaths from Ynd most colocated département
incid_rad_Y: incidence of returned home from Ynd most colocated département
创建时间:
2021-08-18



