Comparative analysis of the machine learning models determining COVID-19 patient risk levels

Q3 Computer Science Radioelectronic and Computer Systems Pub Date : 2023-09-29 DOI:10.32620/reks.2023.3.01
Kseniia Bazilevych, Olena Kyrylenko, Yurii Parfenyuk, Serhii Krivtsov, Ievgen Meniailov, Victoriya Kuznietcova, Dmytro Chumachenko
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Abstract

The COVID-19 pandemic has posed unprecedented challenges to global healthcare systems, emphasizing the need for predictive tools for resource allocation and patient care. This study delves into the potential of machine learning models to predict the risk levels of COVID-19 patients using a comprehensive dataset. This study aimed to evaluate and compare the efficacy of three distinct machine learning methodologies – Bayesian Criterion, Logistic Regression, and Gradient Boosting – in predicting the risk associated with COVID-19 patients based on their symptoms, status, and medical history. This research is targeted at the process of patient state determination. The research subjects are machine learning methods for patient state determination. To achieve the aim of the research, the following tasks have been formulated: methods and models of the COVID-19 patients state determination should be analyzed; classification model of the patient state determination based on Bayes criterion should be developed; classification model of the patient state determination based on logistic regression should be developed; classification model of the patient state determination based on gradient boosting should be developed; the information system should be developed; the experimental study based on machine learning methods should be provided; and the results of the experimental study should be analyzed. Methods: using a dataset provided by the Mexican government, which encompasses over a million unique patients with 21 distinct features, we developed an information system in C# programming language. This system allows users to select their preferred method for risk calculation, offering a real-time decision-making tool for healthcare professionals. Results: All models demonstrated commendable accuracy levels. However, subtle differences in their performance metrics, such as sensitivity, precision, and the F1-score, were observed. The Gradient Boosting method slightly outperformed the other models in terms of overall accuracy. Conclusions: While each model showcased its merits, the choice of method should be based on the specific needs and constraints of the healthcare system. The Gradient Boosting method emerged as marginally superior in this study. This research underscores the potential of machine learning in enhancing pandemic response strategies, offering both scientific insights and practical tools for healthcare professionals.
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确定COVID-19患者风险水平的机器学习模型的比较分析
2019冠状病毒病大流行给全球卫生保健系统带来了前所未有的挑战,凸显了对资源分配和患者护理预测工具的需求。本研究深入研究了机器学习模型使用综合数据集预测COVID-19患者风险水平的潜力。本研究旨在评估和比较三种不同的机器学习方法(贝叶斯标准、逻辑回归和梯度增强)在根据症状、状态和病史预测与COVID-19患者相关的风险方面的功效。本研究针对的是患者状态确定的过程。研究课题为确定患者状态的机器学习方法。为实现研究目的,制定了以下任务:分析COVID-19患者状态确定的方法和模型;建立基于贝叶斯准则的患者状态判定分类模型;建立基于logistic回归的患者状态判别分类模型;建立基于梯度增强的患者状态判别分类模型;应当发展信息系统;应提供基于机器学习方法的实验研究;并对实验研究结果进行分析。方法:使用墨西哥政府提供的数据集,其中包含超过一百万的独特患者,具有21个不同的特征,我们用c#编程语言开发了一个信息系统。该系统允许用户选择他们喜欢的风险计算方法,为医疗保健专业人员提供实时决策工具。结果:所有模型均显示出良好的准确性。然而,观察到它们的性能指标(如灵敏度、精度和f1分数)存在细微差异。梯度增强方法在整体精度方面略优于其他模型。结论:虽然每种模式都有其优点,但方法的选择应基于医疗保健系统的具体需求和约束条件。梯度增强法在本研究中表现略胜一筹。这项研究强调了机器学习在加强大流行应对战略方面的潜力,为医疗保健专业人员提供了科学见解和实用工具。
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来源期刊
Radioelectronic and Computer Systems
Radioelectronic and Computer Systems Computer Science-Computer Graphics and Computer-Aided Design
CiteScore
3.60
自引率
0.00%
发文量
50
审稿时长
2 weeks
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