COVID-19期间使用机器学习分析疾病严重程度和死亡率预测

IF 2.7 4区 心理学 Q2 PSYCHOLOGY, EXPERIMENTAL
Hodjat (Hojatollah) Hamidi, Mostafa Moradi
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引用次数: 0

摘要

本文重点介绍了机器学习(ML)算法和应用如何在COVID-19研究中用于分析疾病严重程度和死亡率预测。过去,研究人员和官员更常用更简单的统计和流行病学方法来预测大流行的进程。然而,近年来,医学检测的局限性、高昂的成本和所需的时间已成为阻止COVID-19传播的重大挑战。一些改进的统计方法已经被用来解决这些挑战,但它们只是在一定的质量水平上部分地解决了问题。另一方面,机器学习提供了广泛的智能方法、框架和工具来处理医疗领域的问题。本文利用来自患者的公开和临床数据,通过不同的机器学习算法研究了死亡的严重程度和风险,并确定了该领域最重要的特征。本文的主要创新点是利用统计数据对不同的诊断模型进行比较分析。首先对COVID-19数据集进行预处理,然后使用几种已知的疾病分类模型,并对其准确率进行比较。该研究有助于医疗中心和医院根据患者病情的严重程度优先分配医疗资源,并预测他们的生存机会。通过100多万患者的数据和对12个模型的评估,Logistic回归模型对于0类和1类的准确率通常都是最高的。在各种情况下,该模型在0类(97%)和1类(80%)中实现了最高的准确率。因此,可以得出结论,逻辑回归模型在诊断这两类疾病时都表现得最好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of disease severity and mortality prediction using machine learning during COVID-19
This paper focuses on how machine learning (ML) algorithms and applications have been used to analyze disease severity and mortality prediction in COVID-19 research. In the past, simpler statistical and epidemiological methods were more commonly used by researchers and officials to predict the course of the pandemic. However, in recent years, the limitations, high costs, and time required for medical tests have become significant challenges in stopping the spread of COVID-19. Some improved statistical methods have been used to tackle these challenges, but they have only partially solved the problems at a certain quality level. On the other hand, machine learning offers a wide range of smart methods, frameworks, and tools to deal with problems in the medical field. In this paper, using public and clinical data from patients, the severity and risk of death are studied through different machine learning algorithms, and the most important features in this area are identified. The main innovation of this paper is the comparative analysis of different models for diagnosis using statistical data. First, the COVID-19 dataset is preprocessed, and then several well-known models in disease classification are used, and their accuracy is compared. This study helps healthcare centers and hospitals prioritize the allocation of medical resources based on the severity of patients' conditions and predict their chances of survival. With data from over one million patients and the evaluation of >12 models, the Logistic Regression model generally shows the highest accuracy for both class 0 and class 1. In various situations, this model achieved the highest accuracy for class 0 (97 %) and for class 1 (80 %). Therefore, it can be concluded that the Logistic Regression model performs best in diagnosing both classes.
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来源期刊
Acta Psychologica
Acta Psychologica PSYCHOLOGY, EXPERIMENTAL-
CiteScore
3.00
自引率
5.60%
发文量
274
审稿时长
36 weeks
期刊介绍: Acta Psychologica publishes original articles and extended reviews on selected books in any area of experimental psychology. The focus of the Journal is on empirical studies and evaluative review articles that increase the theoretical understanding of human capabilities.
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