Retrospective analysis of the possibility of predicting the COVID-19 outbreak from Internet searches and social media data, China, 2020.
Identifieur interne : 000381 ( PubMed/Corpus ); précédent : 000380; suivant : 000382Retrospective analysis of the possibility of predicting the COVID-19 outbreak from Internet searches and social media data, China, 2020.
Auteurs : Cuilian Li ; Li Jia Chen ; Xueyu Chen ; Mingzhi Zhang ; Chi Pui Pang ; Haoyu ChenSource :
- Euro surveillance : bulletin Europeen sur les maladies transmissibles = European communicable disease bulletin [ 1560-7917 ] ; 2020.
English descriptors
- KwdEn :
- China (epidemiology), Coronavirus Infections (diagnosis), Coronavirus Infections (epidemiology), Coronavirus Infections (transmission), Disease Outbreaks (statistics & numerical data), Humans, Incidence, Internet, Laboratories (statistics & numerical data), Pneumonia, Viral (diagnosis), Pneumonia, Viral (epidemiology), Pneumonia, Viral (transmission), Population Surveillance (methods), Public Health Practice, Search Engine (statistics & numerical data), Social Media (statistics & numerical data), Social Media (trends), Web Browser (statistics & numerical data), Web Browser (trends).
- MESH :
- geographic , epidemiology : China.
- diagnosis : Coronavirus Infections, Pneumonia, Viral.
- epidemiology : Coronavirus Infections, Pneumonia, Viral.
- methods : Population Surveillance.
- statistics & numerical data : Disease Outbreaks, Laboratories, Search Engine, Social Media, Web Browser.
- transmission : Coronavirus Infections, Pneumonia, Viral.
- trends : Social Media, Web Browser.
- Humans, Incidence, Internet, Public Health Practice.
Abstract
The peak of Internet searches and social media data about the coronavirus disease 2019 (COVID-19) outbreak occurred 10-14 days earlier than the peak of daily incidences in China. Internet searches and social media data had high correlation with daily incidences, with the maximum r > 0.89 in all correlations. The lag correlations also showed a maximum correlation at 8-12 days for laboratory-confirmed cases and 6-8 days for suspected cases.
DOI: 10.2807/1560-7917.ES.2020.25.10.2000199
PubMed: 32183935
Links to Exploration step
pubmed:32183935Le document en format XML
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<front><div type="abstract" xml:lang="en">The peak of Internet searches and social media data about the coronavirus disease 2019 (COVID-19) outbreak occurred 10-14 days earlier than the peak of daily incidences in China. Internet searches and social media data had high correlation with daily incidences, with the maximum r > 0.89 in all correlations. The lag correlations also showed a maximum correlation at 8-12 days for laboratory-confirmed cases and 6-8 days for suspected cases.</div>
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