根据温度变化对covid - 19在人群中传播的季节性进行地理量化

Bailey Magers, Moiz Usmani, Chang-Yu Wu, Antarpreet Jutla
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Background
The occurrence of cases of COVID-19 suggests that it will likely become seasonally endemic in human populations. 
Objectives
We seek to provide a quantification of the seasonality of the occurrence and severity of COVID-19 cases in human populations.
Methods
Using global data, we show that the spatiotemporal distribution of COVID-19 cases is a function of distinct seasons and climates. We investigated this at the county and the country scale using a comparison of seasonal means, correlation analyses using ambient air temperatures and dew point temperatures, and multiple linear regression techniques. 
Results
We found that most locations had the highest incidence of COVID-19 during winter compared to other seasons. Regions closer to the equator had a higher incidence of COVID-19 during the summer than regions further from the equator. Regions close to the equator, where mean annual temperatures have less variance compared to those further from the equator, had smaller differences between seasonal COVID-19 incidence. Correlation and regression analyses showed that ambient air and dew point temperatures were significantly associated with COVID-19 incidence. 
Discussion
Our results suggest that temperature and the environment are influential factors to understand the transmission of COVID-19 within the human population. This research provides empirical evidence that temperature changes are a strong indicator of seasonal COVID-19 outbreaks, and as such it will aid in planning for future outbreaks and for mitigating their impacts.
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Background
The occurrence of cases of COVID-19 suggests that it will likely become seasonally endemic in human populations. 
Objectives
We seek to provide a quantification of the seasonality of the occurrence and severity of COVID-19 cases in human populations.
Methods
Using global data, we show that the spatiotemporal distribution of COVID-19 cases is a function of distinct seasons and climates. We investigated this at the county and the country scale using a comparison of seasonal means, correlation analyses using ambient air temperatures and dew point temperatures, and multiple linear regression techniques. 
Results
We found that most locations had the highest incidence of COVID-19 during winter compared to other seasons. Regions closer to the equator had a higher incidence of COVID-19 during the summer than regions further from the equator. Regions close to the equator, where mean annual temperatures have less variance compared to those further from the equator, had smaller differences between seasonal COVID-19 incidence. Correlation and regression analyses showed that ambient air and dew point temperatures were significantly associated with COVID-19 incidence. 
Discussion
Our results suggest that temperature and the environment are influential factors to understand the transmission of COVID-19 within the human population. This research provides empirical evidence that temperature changes are a strong indicator of seasonal COVID-19 outbreaks, and as such it will aid in planning for future outbreaks and for mitigating their impacts.
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引用次数: 0

摘要

[摘要]背景 2019冠状病毒病病例的发生表明它可能会在人群中成为季节性流行。 目的 我们试图对人群中COVID-19病例发生和严重程度的季节性进行量化。 方法 利用全球数据,我们表明COVID-19病例的时空分布是不同季节和气候的函数。我们利用季节均值比较、环境空气温度和露点温度的相关性分析以及多元线性回归技术,在县和国家尺度上对此进行了调查。结果 我们发现,与其他季节相比,大多数地区的COVID-19发病率在冬季最高。夏季,靠近赤道的地区的COVID-19发病率高于远离赤道的地区。与远离赤道的地区相比,靠近赤道的地区年平均气温差异较小,因此COVID-19季节性发病率之间的差异较小。相关分析和回归分析显示,环境空气和露点温度与COVID-19发病率显著相关。我们的研究结果表明,温度和环境是了解COVID-19在人群中传播的影响因素。这项研究提供的经验证据表明,温度变化是COVID-19季节性疫情的一个强有力指标,因此它将有助于规划未来的疫情并减轻其影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Geographical quantification of the seasonality of transmission of COVID19 in human population as a function of the variability of temperatures
Abstract Abstract
Background
The occurrence of cases of COVID-19 suggests that it will likely become seasonally endemic in human populations. 
Objectives
We seek to provide a quantification of the seasonality of the occurrence and severity of COVID-19 cases in human populations.
Methods
Using global data, we show that the spatiotemporal distribution of COVID-19 cases is a function of distinct seasons and climates. We investigated this at the county and the country scale using a comparison of seasonal means, correlation analyses using ambient air temperatures and dew point temperatures, and multiple linear regression techniques. 
Results
We found that most locations had the highest incidence of COVID-19 during winter compared to other seasons. Regions closer to the equator had a higher incidence of COVID-19 during the summer than regions further from the equator. Regions close to the equator, where mean annual temperatures have less variance compared to those further from the equator, had smaller differences between seasonal COVID-19 incidence. Correlation and regression analyses showed that ambient air and dew point temperatures were significantly associated with COVID-19 incidence. 
Discussion
Our results suggest that temperature and the environment are influential factors to understand the transmission of COVID-19 within the human population. This research provides empirical evidence that temperature changes are a strong indicator of seasonal COVID-19 outbreaks, and as such it will aid in planning for future outbreaks and for mitigating their impacts.
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