Prognosis Method on the Outcome of Covid-19 Patients in Senegal

Seck C.T., Faye I., D. A., Niang M.A., Sylla S.N., Ndao A., Idrissa S.
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Abstract

There have been disturbing waves of Covid-19 deaths in many countries due to a lack of adequate treatment in the early stages of the pandemic but also to the presence of co-morbidities in many hospitalised patients. This work aims to determine the discriminatory features between the surviving patients and the deceased ones after their hospitalisation to propose a new method of prognosis on the outcome of a new patient under treatment. To this end, we use three supervised classification methods, each allowing us to select the most significant features associated with patient death. These are binary logistic regression (BLR), random forests (RF), and support vector machines (SVM). The data comes from the Ministry of Health and Social Action of Senegal and covers the period from March 2020 to December 2022. Age emerged as the most discriminatory factor between the two patient groups: survivors and deceased. The study found that patients 60 and older are more likely to die of Covid-19.
塞内加尔新冠肺炎患者预后的预测方法
由于在大流行的早期阶段缺乏适当的治疗,以及许多住院患者中存在合并症,许多国家出现了令人不安的Covid-19死亡浪潮。这项工作旨在确定幸存患者和死亡患者住院后的歧视性特征,提出一种新的治疗新患者预后方法。为此,我们使用三种监督分类方法,每种方法都允许我们选择与患者死亡相关的最重要特征。它们是二元逻辑回归(BLR)、随机森林(RF)和支持向量机(SVM)。数据来自塞内加尔卫生和社会行动部,涵盖时间为2020年3月至2022年12月。年龄成为两组患者之间最具歧视性的因素:幸存者和死者。研究发现,60岁及以上的患者更有可能死于Covid-19。
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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