Romain-Scelle Nicolas, Riche Benjamin, Benet Thomas, Rabilloud Muriel
Université Lyon 1, Lyon, France.
Laboratoire de Biométrie et Biologie Evolutive - UMR CNRS 5558, Villeurbanne, France.
Sci Rep. 2025 Jul 1;15(1):22076. doi: 10.1038/s41598-025-03768-0.
The COVID-19 pandemic in France induced the development of a national, high spatiotemporal resolution confirmed infection cases database. We aimed to estimate the predictive ability of census-based indicators on the infection risk to assess their potential usefulness in future pandemic response. We collected and aggregated all counts of biologically confirmed cases of SARS-CoV-2 infection in the Auvergne-Rhône-Alpes region in France at small-area statistical units between May 2020 and February 2021 (second wave). Ten census-based ecological covariates were evaluated as predictors of case incidence using a Poisson regression with conditional autoregressive (CAR) spatial effects. Benefits of CAR effects and covariates on model predictive ability was assessed comparing posterior predictive distribution of case incidence with the observed value for each statistical unit. Among 7,917,997 inhabitants, 438,992 infection cases over 5410 neighbourhoods were analysed. Spatial correlation was high for the periods before and after the epidemic peak, and illustrated with cartography. The addition of covariates to the null model led to an increase in satisfying prediction of + 5% from 14%, with a maximum of 21% across all periods. The ecological covariates assessed were insufficient to provide a satisfying prediction of infection risk without explicitly accounting for the spatial organization of the epidemic.
法国的新冠疫情促使建立了一个全国性的、具有高时空分辨率的确诊感染病例数据库。我们旨在评估基于人口普查的指标对感染风险的预测能力,以评估其在未来疫情应对中的潜在作用。我们收集并汇总了2020年5月至2021年2月(第二波疫情)期间法国奥弗涅-罗讷-阿尔卑斯地区小面积统计单位内所有经生物学确诊的新冠病毒感染病例数。使用具有条件自回归(CAR)空间效应的泊松回归,评估了十个基于人口普查的生态协变量作为病例发病率的预测因子。通过比较病例发病率的后验预测分布与每个统计单位的观测值,评估了CAR效应和协变量对模型预测能力的影响。在7917997名居民中,分析了5410个社区的438992例感染病例。疫情高峰前后各时期的空间相关性都很高,并通过制图进行了说明。在空模型中加入协变量后,令人满意的预测比例从14%提高了5%,在所有时期最高达到21%。所评估的生态协变量不足以在不明确考虑疫情空间组织的情况下对感染风险提供令人满意的预测。