论文标题

SARS-COV-2与天气条件和活动能力的协整在美国的第一年大流行期间

Cointegration of SARS-CoV-2 Transmission with Weather Conditions and Mobility during the First Year of the COVID-19 Pandemic in the United States

论文作者

Qin, Hong, Tareq, Syed, Torres, William, Doman, Megan, Falvey, Cleo, Moore, Jamaree, Tsai, Meng Hsiu, Wang, Yingfeng, Hossain, Azad, Xie, Mengjun, Yang, Li

论文摘要

天气与SARS-COV-2传播之间的相关性可能表明其季节性。协整分析可以避免时间序列数据之间的虚假相关性。我们研究了在美国大流行的第一年,病毒传播与每日温度,脱离点和流动性测量的混杂因素的协整。我们检查了病毒的有效生殖速率RT与露点的协整,在两米处,温度在两米处,苹果驱动移动性和Google Workplace移动性测量。我们发现DeWpoint和Apple驱动机动性是与RT协整的最佳因素,尽管温度和Google Workplace Mobilition也以大量水平与RT协整。我们发现,最佳滞后是RT和天气变量之间协整的两天,而RT和移动性为三天。我们观察到了共享RT,天气和活动性的共同点结果的国家群,提示了区域模式。我们的结果支持天气与SARS-COV-2及其潜在季节性的蔓延相关。

Correlation between weather and the transmission of SARS-CoV-2 may suggest its seasonality. Cointegration analysis can avoid spurious correlation among time series data. We examined the cointegration of virus transmission with daily temperature, dewpoint, and confounding factors of mobility measurements during the first year of the pandemic in the United States. We examined the cointegration of the effective reproductive rate, Rt, of the virus with the dewpoint at two meters, the temperature at two meters, Apple driving mobility, and Google workplace mobility measurements. We found that dewpoint and Apple driving mobility are the best factors to cointegrate with Rt, although temperature and Google workplace mobility also cointegrate with Rt at substantial levels. We found that the optimal lag is two days for cointegration between Rt and weather variables, and three days for Rt and mobility. We observed clusters of states that share similar cointegration results of Rt, weather, and mobility, suggesting regional patterns. Our results support the correlation of weather with the spread of SARS-CoV-2 and its potential seasonality.

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