COVID-19 in Eastern Mediterranean Region Countries

L. Moradi
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引用次数: 2

Abstract

Background: COVID-19, as an emerging disease, is characterized by acute respiratory syndrome and caused by a coronavirus. The disease was first seen in China and gradually spread across other parts of the world. Objectives: This study aimed to investigate COVID-19 characteristics in the Eastern Mediterranean Region. Methods: The data of confirmed COVID-19 cases and related deaths in different countries were extracted from the reports of the World Health Organization and transferred to SPSS software, where final calculations were performed, and fatality rates were obtained. Results: The highest rate of COVID-19 was observed in Iran, with 975951 confirmed cases. The highest COVID-19 death rate was also in Iran, with 48628 deaths, and the highest fatality rate was in Yemen with 29.12%. Conclusions: The findings related to the confirmed cases of COVID-19, including death reports, showed that the quality and accuracy of reports were not the same in different countries, in different countries, including Iran, in which health equipment and facilities are comparable with developed countries. Observing social distancing and avoiding unnecessary travel are essential to prevent the disease from spreading across the Eastern Mediterranean region.
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东地中海地区国家的COVID-19
背景:COVID-19是一种新型疾病,以急性呼吸综合征为特征,由冠状病毒引起。这种疾病首先在中国发现,并逐渐蔓延到世界其他地区。目的:本研究旨在调查东地中海地区COVID-19的特征。方法:从世界卫生组织的报告中提取不同国家的COVID-19确诊病例和相关死亡数据,并转移到SPSS软件中进行最终计算,得到病死率。结果:伊朗的新冠肺炎感染率最高,确诊病例975951例。伊朗的新冠肺炎死亡率最高,为48628人,也门的死亡率最高,为29.12%。结论:与COVID-19确诊病例(包括死亡报告)相关的调查结果表明,在不同的国家,包括伊朗在内的不同国家,报告的质量和准确性并不相同,这些国家的卫生设备和设施与发达国家相当。保持社会距离和避免不必要的旅行对于防止该疾病在东地中海区域蔓延至关重要。
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