使用机器学习分类算法预测COVID-19患者的严重程度:以医疗设施最少的巴基斯坦小城市为例

H. Gull, Gomathi Krishna, May Aldossary, S. Z. Iqbal
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引用次数: 4

摘要

一种抽象的冠状病毒疾病已被宣布为影响全球数百万人生活和健康的传染性大流行。它造成了大量的死亡,在世界范围内产生了非常紧急状态。它没有影响到人民,但也破坏了不同国家的基础设施,特别是在全球卫生保健系统中造成了预期的情况。由于无法获得疫苗接种以及病毒在人与人之间的传播速度加快,卫生保健设施面临着超出其极限和能力的高风险,特别是在巴基斯坦等发展中国家。因此,重要的是在这些国家妥善管理资源,以控制高死亡率及其可能造成的损害。在本文中,我们对巴基斯坦的一个小城市进行了案例研究,那里的医疗设施不足以应对流行病。根据病情的严重程度,大部分患者只能转诊到大城市。我们从这个小城市获取了COVID-19阳性患者的数据,开发并应用了机器学习分类模型来预测患者的严重程度,以应对资源短缺的问题。在所有七个已测试的算法中,我们选择支持向量机来预测患者的严重程度。模型的准确率达到60%,并将患者的严重程度分为轻度、中度和重度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Severity Prediction of COVID-19 Patients Using Machine Learning Classification Algorithms: A Case Study of Small City in Pakistan with Minimal Health Facility
A bstract-Coronavirus disease has been declared as an infectious pandemic affecting the life and health of millions across the globe. It has caused high number of mortalities giving birth to exceptional state of emergency worldwide. It has not affected the people but also has damaged infrastructure of different countries, especially causing an expectational situation in health care systems globally. Due to unavailability of vaccination and faster human to human transmission of virus, healthcare facilities are at high risk of exceeding their limit and capacity, especially in developing countries like Pakistan. Therefore, it is important to manage resources properly in these countries to control high mortality rate and damage it can cause. In this paper we have taken a case study of small city in Pakistan, where healthcare facilities are not enough to deal with pandemic. Most of the COVID-19 patients have to be refer to big cities based on their severity. We have taken data of COVID-19 positive patients from this small city, developed and applied machine learning classification model to predict the severity of patient, in order to deal with the shortage of resources. Among all seven taken and tested algorithms, we have chosen SVM to predict severity of patients. Model has shown 60% of accuracy and have divided patient's severity into mild, moderate and severe levels.
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