Do pre-existing medical conditions affect COVID-19 incidence and fatality in Nigeria? A Geographical Perspective

T. Osayomi, Richard Adeleke, S. Yaya, Joy Temitope Ayanda, Lawrence Enejeta Akpoterai, Opeyemi Caleb Fatayo
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引用次数: 2

Abstract

Abstract Clinical evidence shows the incidence of novel coronavirus is associated with pre-existing medical conditions. Thus, people with pre-existing medical conditions are more likely to be infected with COVID-19. In light of this, this paper examined the extent to which pre-existing medical conditions are related to COVID-19 incidence and mortality in Nigeria from a geographical perspective. We used the geographically weighted regression (GWR) to determine the effect and extent to which pre-existing medical conditions affect COVID-19 incidence in Nigeria. Our findings show that besides the remarkable spatial variation in COVID-19 incidence and mortality, obesity was a significant predictor of COVID-19 with its effect strongest in southwest Nigeria and other parts of the country. The conclusion of the paper is that areas with high prevalence of pre-existing medical conditions coincide with areas with high COVID-19 incidence and fatality. We recommended that there should be a spatially explicit intervention on the reduction of exposure to COVID-19 among states with high prevalence of pre-existing medical conditions through vaccination.
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既往医疗状况是否会影响尼日利亚的COVID-19发病率和病死率?地理视角
临床证据表明,新型冠状病毒的发病率与既往医疗状况有关。因此,已有疾病的人更有可能感染COVID-19。鉴于此,本文从地理角度研究了尼日利亚现有医疗条件与COVID-19发病率和死亡率的关系程度。我们使用地理加权回归(GWR)来确定已有医疗条件对尼日利亚COVID-19发病率的影响和程度。我们的研究结果表明,除了COVID-19发病率和死亡率的显著空间差异外,肥胖是COVID-19的重要预测因素,其影响在尼日利亚西南部和该国其他地区最强。本文的结论是,既往病史高发地区与新冠肺炎高发和高病死率地区重合。我们建议,应通过接种疫苗,在已有疾病高发的国家开展明确的空间干预,以减少COVID-19的暴露。
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