SARS-CoV-2传播的宏观驱动因素:对美国第一波疫情期间流行病增长因素的数据驱动分析

IF 2.1 Q3 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH Spatial and Spatio-Temporal Epidemiology Pub Date : 2022-11-01 DOI:10.1016/j.sste.2022.100539
Matthew J. Watts
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引用次数: 19

摘要

背景:关于SARS-CoV-2传播如何受到经济、环境和卫生方面的影响,许多问题仍未得到解答。更好地了解这些因素如何相互作用,可以帮助我们设计早期卫生预防和控制策略,并为SARS-CoV-2的公共卫生风险管理开发更好的预测模型。本研究考察了美国第一波疫情期间COVID-19疫情增长与宏观层面传播决定因素(如人口、社会经济、气候和健康因素)之间的关系。方法:从各种相关数据源中创建时空数据集。采用一种独特的数据驱动研究设计,利用广义可加模型(GAM)评估COVID-19感染与死亡、流行病加倍时间和解释变量之间的关系。结果:人口密度高、家庭拥挤、制造业和娱乐业是导致感染翻倍的主要因素。贫穷也是流行病更快增长的一个重要预测因素,这可能是由于与工作中与贫穷有关的条件有关的因素,尽管贫穷也是人口健康状况不佳的一个预测因素,这可能会推动感染和死亡报告。空气污染和糖尿病是感染报告的其他重要驱动因素。气温升高与流行病增长放缓有关,这很可能是由于与温暖地点有关的人类行为,即为家庭和工作场所通风,以及在户外社交。与死亡率翻倍相关的主要因素是人口密度、贫困、老年、糖尿病和空气污染。温度也略微显著减缓死亡倍增时间。结论:这些发现有助于巩固当前对该疾病流行病学的理解,也支持当前建议家庭、工作场所和学校通风、保持社交距离和戴口罩的政策和建议。鉴于加倍时间与严格程度指数之间的密切联系,那些通过实施一系列措施(如关闭学校、关闭工作场所、限制集会、关闭公共交通、限制内部流动、国际旅行管制和公共信息宣传运动)更快地应对病毒的国家,可能确实在减缓病毒传播方面取得了一定的成功。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Macro-level drivers of SARS-CoV-2 transmission: A data-driven analysis of factors contributing to epidemic growth during the first wave of outbreaks in the United States

Background:

Many questions remain unanswered about how SARS-CoV-2 transmission is influenced by aspects of the economy, environment, and health. A better understanding of how these factors interact can help us to design early health prevention and control strategies, and develop better predictive models for public health risk management of SARS-CoV-2. This study examines the associations between COVID-19 epidemic growth and macro-level determinants of transmission such as demographic, socio-economic, climate and health factors, during the first wave of outbreaks in the United States.

Methods:

A spatial–temporal data-set was created from a variety of relevant data sources. A unique data-driven study design was implemented to assess the relationship between COVID-19 infection and death epidemic doubling times and explanatory variables using a Generalized Additive Model (GAM).

Results:

The main factors associated with infection doubling times are higher population density, home overcrowding, manufacturing, and recreation industries. Poverty was also an important predictor of faster epidemic growth perhaps because of factors associated with in-work poverty-related conditions, although poverty is also a predictor of poor population health which is likely driving infection and death reporting. Air pollution and diabetes were other important drivers of infection reporting. Warmer temperatures are associated with slower epidemic growth, which is most likely explained by human behaviors associated with warmer locations i.e. ventilating homes and workplaces, and socializing outdoors. The main factors associated with death doubling times were population density, poverty, older age, diabetes, and air pollution. Temperature was also slightly significant slowing death doubling times.

Conclusions:

Such findings help underpin current understanding of the disease epidemiology and also supports current policy and advice recommending ventilation of homes, work-spaces, and schools, along with social distancing and mask-wearing. Given the strong associations between doubling times and the stringency index, it is likely that those states that responded to the virus more quickly by implementing a range of measures such as school closing, workplace closing, restrictions on gatherings, close public transport, restrictions on internal movement, international travel controls, and public information campaigns, did have some success slowing the spread of the virus.

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来源期刊
Spatial and Spatio-Temporal Epidemiology
Spatial and Spatio-Temporal Epidemiology PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH-
CiteScore
5.10
自引率
8.80%
发文量
63
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