Modern Statistical Methods for Infectious Diseases to Analyse Covid-19 Pandemic Data in Rwanda

J. L. Murorunkwere, Sylvestre Mbanza
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Abstract

The corona-virus ailment 2019(COVID-19) took tens of millions of lives and disrupted dwelling requirements at individual, societal, and international levels, causing penalties globally. Understanding its epidemic curve and Spatio-temporal dynamics is indispensable for the development of tremendous public fitness plans and responses and the allocation of resources. Thus, we performed the analysis of the epidemiological dynamics and spatio-temporal patterns of the COVID-19 pandemic in Rwanda. Using the surveillance bundle in R software version 4.0.2, we implemented endemic-epidemic multivariate time sequence methods for infectious diseases to analyze COVID-19 facts with the aid of Rwanda Biomedical Center, under the Ministry of Health, from March 15, 2020, to January 15, 2021. The COVID-19 pandemic came in waves in Rwanda and showed a heterogeneous spatial distribution across districts. The Rwandan authorities answered effectively and successively through the implementation of more than a few health measures and intervention policies to reduce the transmission of the disease. Analysis of the three factors of the mannequin confirmed that the most affected districts displayed epidemic elements inside the area, whereas the impact of epidemic elements from spatial neighbors had been skilled via the districts that surround the most affected districts. The contamination followed the disorder endemic vogue in other districts. The epidemiological and Spatio-temporal dynamics of COVID-19 in Rwanda show that the implementation of measures and interventions contributed appreciably to minimize COVID-19 transmission inside and between districts. This accentuates the essential name for endured intra-and inter-business enterprise and community engagement nationwide to make a certain effective and efficient response to the pandemic.
用现代传染病统计方法分析卢旺达 Covid-19 大流行病数据
2019年电晕病毒病(COVID-19)夺走了数千万人的生命,破坏了个人、社会和国际层面的生活需求,在全球范围内造成了惩罚。了解其流行曲线和时空动态对于制定巨大的公共卫生计划和应对措施以及分配资源是不可或缺的。因此,我们对卢旺达 COVID-19 大流行的流行动态和时空模式进行了分析。我们利用 R 软件 4.0.2 版中的监测捆绑包,在卫生部下属卢旺达生物医学中心的协助下,采用传染病流行-疫情多变量时序方法,分析了 COVID-19 从 2020 年 3 月 15 日到 2021 年 1 月 15 日的事实。COVID-19 大流行在卢旺达一波接一波,并在各地区呈现出不同的空间分布。卢旺达当局相继采取了多项卫生措施和干预政策,以减少疾病的传播。对模型中三个因素的分析表明,疫情最严重的地区显示出区域内的流行因素,而疫情最严重地区周围地区则显示出空间邻近地区流行因素的影响。其他地区的污染也与疾病流行趋势一致。卢旺达 COVID-19 的流行病学和时空动态表明,措施和干预的实施极大地减少了 COVID-19 在地区内部和地区之间的传播。这突出表明,全国范围内的企业内部和企业之间以及社区的持久参与对于有效和高效地应对该流行病至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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