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首页> 外文期刊>International journal of infectious diseases : >Spatial modeling, risk mapping, change detection, and outbreak trend analysis of coronavirus (COVID-19) in Iran (days between February 19 and June 14, 2020)
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Spatial modeling, risk mapping, change detection, and outbreak trend analysis of coronavirus (COVID-19) in Iran (days between February 19 and June 14, 2020)

机译:伊朗冠状病毒(Covid-19)的空间建模,风险映射,变革检测和爆发趋势分析(2月19日至6月14日至6月14日)

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Objectives Coronavirus disease 2019 (COVID-19) represents a major pandemic threat that has spread to more than 212 countries with more than 432,902 recorded deaths and 7,898,442 confirmed cases worldwide so far (on June 14, 2020). It is crucial to investigate the spatial drivers to prevent and control the epidemic of COVID-19. Methods This is the first comprehensive study of COVID-19 in Iran; and it carries out spatial modeling, risk mapping, change detection, and outbreak trend analysis of the disease spread. Four main steps were taken: comparison of Iranian coronavirus data with the global trends, prediction of mortality trends using regression modeling, spatial modeling, risk mapping, and change detection using the random forest (RF) machine learning technique (MLT), and validation of the modeled risk map. Results The results show that from February 19 to June 14, 2020, the average growth rates (GR) of COVID-19 deaths and the total number of COVID-19 cases in Iran were 1.08 and 1.10, respectively. Based on the World Health Organisation (WHO) data, Iran’s fatality rate (deaths/0.1?M pop) is 10.53. Other countries’ fatality rates were, for comparison, Belgium – 83.32, UK – 61.39, Spain – 58.04, Italy – 56.73, Sweden – 48.28, France – 45.04, USA – 35.52, Canada – 21.49, Brazil – 20.10, Peru – 19.70, Chile – 16.20, Mexico– 12.80, and Germany – 10.58. The fatality rate for China is 0.32 (deaths/0.1?M pop). Over time, the heatmap of the infected areas identified two critical time intervals for the COVID-19 outbreak in Iran. The provinces were classified in terms of disease and death rates into a large primary group and three provinces that had critical outbreaks were separate from the others. The heatmap of countries of the world shows that China and Italy were distinguished from other countries in terms of nine viral infection-related parameters. The regression models for death cases showed an increasing trend but with some evidence of turning. A polynomial relationship was identified between the coronavirus infection rate and the province population density. Also, a third-degree polynomial regression model for deaths showed an increasing trend recently, indicating that subsequent measures taken to cope with the outbreak have been insufficient and ineffective. The general trend of deaths in Iran is similar to the world's, but Iran’s shows lower volatility. Change detection of COVID-19 risk maps with a random forest model for the period from March 11 to March 18 showed an increasing trend of COVID-19 in Iran’s provinces. It is worth noting that using the LASSO MLT to evaluate variables’ importance, indicated that the most important variables were the distance from bus stations, bakeries, hospitals, mosques, ATMs (automated teller machines), banks, and the minimum temperature of the coldest month. Conclusions We believe that this study's risk maps are the primary, fundamental step to take for managing and controlling COVID-19 in Iran and its provinces.
机译:目标冠状病毒疾病2019(Covid-19)代表了一个主要的大熊肿大威胁,这些威胁已经蔓延到212个以上的国家,其中432,902名录得的死亡和7,898,442个确认案件(于6月14日,2020年6月14日)。调查空间司机以防止和控制Covid-19流行病至关重要。方法是伊朗科迪德-19的第一综合研究;并且它进行空间建模,风险映射,变化检测和疾病的爆发趋势分析。采取了四个主要步骤:使用回归建模,空间建模,风险映射和使用随机森林(RF)机器学习技术(MLT)的识别,预测死亡率趋势的比较,预测死亡率趋势,以及使用随机森林(RF)机器学习技术(MLT)和验证建模风险地图。结果结果表明,从2月19日至6月14日,2020年,Covid-19死亡的平均增长率(GR)和伊朗的Covid-19案件总数分别为1.08和1.10。基于世界卫生组织(世卫组织)数据,伊朗的死亡率(死亡/ 0.1?M POP)是10.53。其他国家的死亡率是比较,比利时 - 313.32,英国 - 61.39,西班牙 - 58.04,意大利 - 56.73,瑞典 - 48.28,法国 - 45.04,美国 - 35.52,加拿大 - 21.49,巴西 - 20.10,秘鲁 - 19.70,智利 - 16.20,墨西哥 - 12.80和德国 - 10.58。中国的死亡率为0.32(死亡/ 0.1?MOP)。随着时间的推移,受感染区域的热爱图确定了伊朗的Covid-19爆发的两个临界时间间隔。省份以疾病和死亡率分类为一个大型小组,三个省份与他人分开。世界各国的热爱图表明,在九种病毒感染相关参数方面,中国和意大利与其他国家的区别。死亡病例的回归模型表现出越来越趋势,但有一些转向的证据。在冠状病毒感染率和省份人口密度之间确定了多项式关系。此外,用于死亡的三级多项式回归模型最近显示出越来越大的趋势,表明随后采取疫情的措施是不够的,无效的。伊朗死亡的一般趋势与世界类似,但伊朗表现出较低的波动性。在3月11日至3月18日的随机森林模型的Covid-19风险地图的变更检测显示了伊朗省份Covid-19的趋势。值得注意的是,使用套索MLT来评估变量的重要性,表明最重要的变量是公交车站,面包店,医院,清真寺,ATM(自动柜员机),银行和最寒冷的最低温度的距离月。结论我们认为,本研究的风险地图是管理和控制伊朗及其省份Covid-19的主要,基本步骤。

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