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About:
Impact of media reports on the early spread of COVID-19 epidemic
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An Entity of Type :
schema:ScholarlyArticle
, within Data Space :
covidontheweb.inria.fr
associated with source
document(s)
Type:
Academic Article
research paper
schema:ScholarlyArticle
New Facet based on Instances of this Class
Attributes
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type
Academic Article
research paper
schema:ScholarlyArticle
isDefinedBy
Covid-on-the-Web dataset
has title
Impact of media reports on the early spread of COVID-19 epidemic
Creator
Tang, Sanyi
Tang, Y
Wang, J
Yang, L
Yang, X
Tang, Yingling
Wang, Jiaying
Yan, Q
Yan, Dingding
Yan, Qinling
Yang, Linqian
Yang, Xinpei
Yan, D
topic
covid:e0870a29e3968f2bc9a247c6bf29a9b536403968#this
Source
Elsevier; Medline; PMC
abstract
Media reports can modify people’s knowledge of emerging infectious diseases, and thus changing the public attitudes and behaviors. However, how the media reports affect the development of COVID-19 epidemic is a key public health issue. Here the Pearson correlation and cross-correlation analyses are conducted to find the statistically significant correlations between the number of new hospital notifications for COVID-19 and the number of daily news items for twelve major websites in China from January 11th to February 6th 2020. To examine the implication for transmission dynamics of these correlations, we proposed a novel model, which embeds the function of individual behaviour change (media impact) into the intensity of infection. The nonlinear least squares estimation is used to identify the best-fit parameter values in the model from the observed data. To determine impact of key parameters with media impact and control measures for the later outcome of the outbreak, we also carried out the uncertainty and sensitivity analyses. These findings confirm the importance of the responses of individuals to the media reports, and the crucial role of experts and governments in promoting the public under self-quarantine. Therefore, for mitigating epidemic COVID-19, the media publicity should be focused on how to guide people’s behavioral changes by experts, and the management departments and designated hospitals of the COVID-19 should take effective quarantined measures, which are critical for the control of the disease.
has issue date
2020-06-25
(
xsd:dateTime
)
bibo:doi
10.1016/j.jtbi.2020.110385
bibo:pmid
32593679
has license
no-cc
sha1sum (hex)
e0870a29e3968f2bc9a247c6bf29a9b536403968
schema:url
https://doi.org/10.1016/j.jtbi.2020.110385
resource representing a document's title
Impact of media reports on the early spread of COVID-19 epidemic
has PubMed Central identifier
PMC7316072
has PubMed identifier
32593679
schema:publication
J Theor Biol
resource representing a document's body
covid:e0870a29e3968f2bc9a247c6bf29a9b536403968#body_text
is
http://vocab.deri.ie/void#inDataset
of
proxy:http/ns.inria.fr/covid19/e0870a29e3968f2bc9a247c6bf29a9b536403968
is
schema:about
of
named entity 'impact'
named entity 'disease'
named entity 'cross-correlation'
named entity 'statistically'
named entity 'COVID-19'
named entity 'sensitivity analyses'
named entity 'measures'
named entity 'changing'
named entity 'responses'
named entity 'Impact'
named entity 'observed'
named entity 'January'
named entity 'epidemic'
named entity 'model'
named entity 'epidemic'
named entity 'China'
named entity 'modify'
named entity 'number'
named entity 'However'
named entity 'attitudes'
named entity 'COVID-19'
named entity 'COVID-19'
named entity 'Pearson correlation'
named entity 'major websites'
named entity 'behaviour change'
named entity 'embeds'
named entity 'epidemic'
named entity 'Wuhan'
named entity 'COVID-19 infection'
named entity 'Hubei'
named entity 'Cross-correlation'
named entity 'contact tracing'
named entity 'Wuhan'
named entity 'Shandong'
named entity 'exponential growth'
named entity 'model selection'
named entity 'China'
named entity 'Hubei'
named entity 'Shaanxi'
named entity 'sina.com'
named entity 'sina.com'
named entity 'epidemic'
named entity 'cross-correlation'
named entity 'cross-correlation'
named entity 'Pearson correlation'
named entity 'cnr.cn'
named entity 'epidemic'
named entity 'COVID-19'
named entity 'Ningxia'
named entity 'COVID-19'
named entity 'COVID-19'
named entity '0.01'
named entity 'contact tracing'
named entity 'epidemic'
named entity 'Hebei'
named entity 'Matlab'
named entity 'COVID-19'
named entity 'Hubei'
named entity 'provincial municipalities'
named entity 'virus'
named entity 'incubation period'
named entity 'Cross-correlation'
named entity 'China'
named entity 'sina.com'
named entity 'quarantine'
named entity '0.01'
named entity 'qq.com'
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