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BMC Public Health . Clustering and mapping the first COVID-19 outbreak in France

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  • BMC Public Health . Clustering and mapping the first COVID-19 outbreak in France


    BMC Public Health


    . 2022 Jul 1;22(1):1279.
    doi: 10.1186/s12889-022-13537-7.
    Clustering and mapping the first COVID-19 outbreak in France


    Regis Darques 1 , Julie Trottier 2 , Raphael Gaudin 3 , Nassim Ait-Mouheb 4



    AffiliationsFree article

    Abstract

    Background: With more than 160 000 confirmed COVID-19 cases and about 30 000 deceased people at the end of June 2020, France was one of the countries most affected by the coronavirus crisis worldwide. We aim to assess the efficiency of global lockdown policy in limiting spatial contamination through an in-depth reanalysis of spatial statistics in France during the first lockdown and immediate post-lockdown phases.
    Methods: To reach that goal, we use an integrated approach at the crossroads of geography, spatial epidemiology, and public health science. To eliminate any ambiguity relevant to the scope of the study, attention focused at first on data quality assessment. The data used originate from official databases (Santé Publique France) and the analysis is performed at a departmental level. We then developed spatial autocorrelation analysis, thematic mapping, hot spot analysis, and multivariate clustering.
    Results: We observe the extreme heterogeneity of local situations and demonstrate that clustering and intensity are decorrelated indicators. Thematic mapping allows us to identify five "ghost" clusters, whereas hot spot analysis detects two positive and two negative clusters. Our re-evaluation also highlights that spatial dissemination follows a twofold logic, zonal contiguity and linear development, thus determining a "metastatic" propagation pattern.
    Conclusions: One of the most problematic issues about COVID-19 management by the authorities is the limited capacity to identify hot spots. Clustering of epidemic events is often biased because of inappropriate data quality assessment and algorithms eliminating statistical-spatial outliers. Enhanced detection techniques allow for a better identification of hot and cold spots, which may lead to more effective political decisions during epidemic outbreaks.

    Keywords: Background; COVID-19; Epidemiology; France; SARS-CoV-2; Spatial clustering.

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