Infector characteristics exposed by spatial analysis of SARS-CoV-2 sequence and demographic data analysed at fine geographical scales

Anna GamżaThe Roslin Institute- University of Edinburgh- Edinburgh- UK, Samantha LycettThe Roslin Institute- University of Edinburgh- Edinburgh- UK, Will HarveyThe Roslin Institute- University of Edinburgh- Edinburgh- UK, Joseph HughesMRC-University of Glasgow Centre for Virus Research- Glasgow- UK, Sema NickbakhshPublic Health Scotland- Glasgow- UK, David L RobertsonMRC-University of Glasgow Centre for Virus Research- Glasgow- UK, Alison Smith PalmerPublic Health Scotland- Glasgow- UK, Anthony WoodThe Roslin Institute- University of Edinburgh- Edinburgh- UK, Rowland KaoThe Roslin Institute- University of Edinburgh- Edinburgh- UKSchool of Physics and Astronomy- University of Edinburgh- Edinburgh- UK
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Abstract

Characterising drivers of SARS-CoV-2 circulation is crucial for understanding COVID-19 because of the severity of control measures adopted during the pandemic. Whole genome sequence data augmented with demographic metadata provides the best opportunity to do this. We use Random Forest Decision Tree models to analyse a combination of over 4000 SARS-CoV2 sequences from a densely sampled, mixed urban and rural population (Tayside) in Scotland in the period from August 2020 to July 2021, with fine scale geographical and socio-demographic metadata. Comparing periods in versus out of "lockdown" restrictions, we show using genetic distance relationships that individuals from more deprived areas are more likely to get infected during lockdown but less likely to spread the infection further. As disadvantaged communities were the most affected by both COVID-19 and its restrictions, our finding has important implications for informing future approaches to control future pandemics driven by similar respiratory infections.
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通过对 SARS-CoV-2 序列的空间分析和精细地理尺度下的人口统计数据分析揭示的感染者特征
由于 SARS-CoV-2 流行期间采取的控制措施非常严厉,因此确定 SARS-CoV-2 循环的驱动因素对于了解 COVID-19 至关重要。全基因组序列数据加上人口统计学元数据为实现这一目标提供了最佳机会。我们使用随机森林决策树模型分析了从 2020 年 8 月到 2021 年 7 月期间来自苏格兰密集采样的城乡混合人群(泰赛德)的 4000 多个 SARS-CoV2 序列组合,以及精细的地理和社会人口元数据。通过比较 "封锁 "与 "解除 "限制期间的情况,我们利用遗传距离关系表明,来自更贫困地区的个体在封锁期间更有可能受到感染,但却不太可能进一步传播感染。由于贫困社区受 COVID-19 及其限制措施的影响最大,我们的发现对未来控制由类似呼吸道传染病引发的大流行具有重要意义。
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