Xu Shanshan, Li Haibo, Wang Juan, Lu Lin, Dai Zhengxiang
Office of Infection Management, Jiangsu Province Hospital of Chinese Medicine, Affiliated Hospital of Nanjing University of Chinese Medicine, Nanjing, Jiangsu, 210029, China.
Division of Birth Cohort Study, Fujian Maternity and Child Health Hospital, College of Clinical Medicine for Obstetrics & Gynecology and Pediatrics, Fujian Medical University, Fuzhou, Fujian, 350001, China.
Heliyon. 2023 Jul 22;9(8):e18565. doi: 10.1016/j.heliyon.2023.e18565. eCollection 2023 Aug.
Recent studies on COVID-19 have demonstrated that poverty, comorbidities, race/ethnicity, population density, mobility, hygiene and use of masks are some of the important correlates of COVID-19 outcomes. In fact, weather conditions also play an important role in enhancing or eradicating health issues. Based on Chinese experience, the development of SARS and COVID-19 is partially associated with alterations in climate that align with the seasonal shifts of the "24 solar terms." However, the applicability of this pattern to other countries, particularly the United States, which has the highest global incidence and mortality rates, remains subject to ongoing investigation. We need to find more evidence to in the U.S. states verify the relationship between meteorological factors and COVID-19 outcomes to provide epidemiological and environmental support for the COVID-19 pandemic prevention and resource preservation.
To evaluate the relationship between meteorological factors and Coronavirus Disease 2019 (COVID-19) mortality.
We conducted an ecological cross-sectional study to evaluate the relationship between meteorological factors (maximum temperature, minimum temperature, humidity, wind speed, precipitation, atmospheric pressure) and COVID-19 mortality. This retrospective observational study examines mortality rates among COVID-19 patients in the three US states, California, Texas, and New York, with the highest fatality numbers, between March 7, 2020 and March 7, 2021. The study draws upon data sourced from the publicly accessible Dryad database. The daily corresponding meteorological conditions were retrieved from the National Oceanic and Atmospheric Administration Global Meteorological website (https://www.ncei.noaa.gov/maps/hourly/). This study employed multivariate linear regression analysis to assess the correlation between six meteorological factors and COVID-19 mortality. Gaussian distribution models were utilized to generate smooth curves for examining the linear association between maximum or minimum temperature and mortality. Additionally, breakpoint analysis was conducted to evaluate the threshold effect of temperature.
We found that the death toll of patients with COVID-19 decreased with an increase in the highest and lowest ambient temperatures (p < 0.001). In our study, we observed a seasonal difference in mortality rates, with a higher number of deaths occurring during winter months, particularly in January and February. However, mortality rates decreased significantly in March. Notably, we found no statistically significant correlation between relative humidity, average precipitation, and average wind speed with COVID-19 mortality (all p > 0.05). Daily COVID-19 death was negatively correlated with the maximum temperature (β = -22, 95% CI, -26.2 to -17.79 -, p < 0.01), while the maximum temperature was below 30 °C. Similarly, the number of deaths was negatively correlated with the minimum temperature (β = -27.46, 95% CI, -31.48 to -23.45, p < 0.01), when the minimum temperature was below 8 °C. Our study found a significant association between temperature and COVID-19 mortality, with every 1 °C increase in maximum or minimum temperature resulting in a decrease of 22 and 27 deceased cases, respectively. The relationship between atmospheric pressure and COVID-19 mortality was not fully elucidated due to its complex interaction with maximum temperature.
This empirical study adds to the existing body of research on the impact of climate factors on COVID-19 prevention and resource allocation. Policymakers and health scientists may find these findings useful in conjunction with other social factors when making decisions related to COVID-19 prevention and resource allocation.
近期关于新冠病毒病(COVID-19)的研究表明,贫困、合并症、种族/民族、人口密度、流动性、卫生状况和口罩使用是影响COVID-19疫情结果的一些重要相关因素。事实上,天气条件在加剧或消除健康问题方面也起着重要作用。根据中国的经验,严重急性呼吸综合征(SARS)和COVID-19的发展与气候的变化部分相关,这种变化与“二十四节气”的季节性变化一致。然而,这种模式在其他国家,特别是全球发病率和死亡率最高的美国的适用性,仍在持续研究中。我们需要在美国各州找到更多证据,以验证气象因素与COVID-19疫情结果之间的关系,为COVID-19疫情防控和资源储备提供流行病学和环境方面的支持。
评估气象因素与2019冠状病毒病(COVID-19)死亡率之间的关系。
我们进行了一项生态横断面研究,以评估气象因素(最高气温、最低气温、湿度、风速、降水量、气压)与COVID-19死亡率之间的关系。这项回顾性观察研究考察了2020年3月7日至2021年3月7日期间,美国死亡人数最多的三个州,即加利福尼亚州、得克萨斯州和纽约州的COVID-19患者死亡率。该研究利用了可公开获取的Dryad数据库中的数据。每日相应的气象条件从美国国家海洋和大气管理局全球气象网站(https://www.ncei.noaa.gov/maps/hourly/)获取。本研究采用多元线性回归分析,以评估六个气象因素与COVID-19死亡率之间的相关性。利用高斯分布模型生成平滑曲线,以检验最高或最低气温与死亡率之间的线性关联。此外,进行了断点分析,以评估温度的阈值效应。
我们发现,COVID-19患者的死亡人数随着环境最高气温和最低气温的升高而减少(p<0.001)。在我们的研究中,我们观察到死亡率存在季节性差异,冬季,尤其是1月和2月的死亡人数较多。然而,3月份死亡率显著下降。值得注意的是,我们发现相对湿度、平均降水量和平均风速与COVID-19死亡率之间无统计学显著相关性(所有p>0.05)。当最高气温低于30°C时,每日COVID-19死亡人数与最高气温呈负相关(β=-22,95%CI,-26.2至-17.79,p<0.01)。同样,当最低气温低于8°C时,死亡人数与最低气温呈负相关(β=-27.46,95%CI,-31.48至-23.45,p<0.01)。我们的研究发现温度与COVID-19死亡率之间存在显著关联,最高气温或最低气温每升高1°C,死亡病例分别减少22例和27例。由于气压与最高气温之间存在复杂的相互作用,其与COVID-19死亡率之间的关系尚未完全阐明。
这项实证研究为气候因素对COVID-19防控和资源分配影响的现有研究增添了内容。政策制定者和健康科学家在做出与COVID-19防控和资源分配相关的决策时,结合其他社会因素,可能会发现这些研究结果有用。