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Green-Blue Spaces and Population Density versus COVID-19 Cases and Deaths in Poland

机译:绿色蓝色空间和人口密度与波兰的Covid-19案例和死亡

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摘要

In the last year, in connection with the COVID-19 pandemic caused by the SARS-CoV-2 coronavirus, scientific papers have appeared in which the authors are trying to identify factors (including environmental) favoring the spread of this disease. This paper presents the spatial differentiation in the total number of COVID-19 cases and deaths during the full year (March 2020–March 2021) of the SARS-CoV-2 pandemic in Poland versus green-blue spaces (green—i.a. forests, orchards, meadows and pastures, recreational and rest areas, biologically active arable land; blue—lakes and artificial water reservoirs, rivers, ecological areas and internal waters) and population density. The analysis covers 380 counties, including 66 cities. This study used daily reports on the progress of the pandemic in Poland published by the Ministry of Health of the Republic of Poland and unique, detailed data on 24 types of land use available in the Statistics Poland database. Statistical relationships were determined between the above-mentioned environmental variables and the variables characterizing COVID-19 (cases and deaths). Various basic types of regression models were analysed. The optimal model was selected, and the determination coefficient, significance level and the values of the parameters of these relationships, together with the estimation error, were calculated. The obtained results indicated that the higher the number of green-blue spaces in individual counties, the lower the total number of COVID-19 infections and deaths. These relationships were described by logarithmic and homographic models. In turn, an increase in the population density caused an increase in COVID-19 cases and deaths, according to the power model. These results can be used in the current analysis of the spread of the pandemic, including the location of potential outbreaks. In turn, the developed models can be used as a tool in forecasting the development of the pandemic and making decisions about the implementation of preventive measures.
机译:在去年,与SARS-COV-2冠状病毒引起的Covid-19大流行有关,似乎提交人试图识别有利于这种疾病传播的因素(包括环境)。本文呈现的COVID-19病例和死亡总人数的空间分异在全年(2020年3月 - 2021年3月)的SARS-COV-2大流行的波兰与蓝绿色空间(绿色-IA的森林,果园,草地和牧场,休闲和休息区,生物活性耕地;蓝湖和人工水库,河流,生态区域和内部水域)和人口密度。分析涵盖了380个县,其中包括66个城市。本研究使用了波兰共和国卫生部发表的波兰大流行进程的日报,以及统计波兰数据库统计数据库中的24种土地使用的独特详细数据。在上述环境变量和表征Covid-19(病例和死亡)之间的变量之间确定统计关系。分析了各种基本类型的回归模型。选择了最佳模型,并计算了这些关系的确定系数,显着性水平和这些关系的参数的值以及估计误差。所获得的结果表明,个别县中的绿色蓝色空间数量越高,Covid-19感染和死亡总数越低。这些关系由对数和相同的模型描述。反过来,根据电力模型,人口密度的增加引起了Covid-19案例和死亡的增加。这些结果可用于目前对大流行扩散的分析,包括潜在爆发的位置。反过来,开发的模型可以用作预测大流行发展的工具,并决定实施预防措施。

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