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Machine learning approaches in COVID-19 diagnosis, mortality, and severity risk prediction: A review

机译:Covid-19诊断,死亡率和严重程度预测的机器学习方法:综述

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The existence of widespread COVID-19 infections has prompted worldwide efforts to control and manage the virus, and hopefully curb it completely. One important line of research is the use ofmachine learning(ML) to understand and fight COVID-19. This is currently an active research field. Although there are already many surveys in the literature, there is a need to keep up with the rapidly growing number of publications on COVID-19-related applications of ML. This paper presents a review of recent reports on ML algorithms used in relation to COVID-19. We focus on the potential of ML for two main applications: diagnosis of COVID-19 and prediction of mortality risk and severity, using readily available clinical and laboratory data. Aspects related to algorithm types, training data sets, and feature selection are discussed. As we cover work published between January 2020 and January 2021, a few key points have come to light. The bulk of the machine learning algorithms used in these two applications are supervised learning algorithms. The established models are yet to be used in real-world implementations, and much of the associated research is experimental. The diagnostic and prognostic features discovered by ML models are consistent with results presented in the medical literature. A limitation of the existing applications is the use of imbalanced data sets that are prone to selection bias.
机译:普遍存在的Covid-19感染的存在促使全球控制和管理病毒的努力,并希望完全抑制它。一个重要的研究线是使用Machine学习(ML)来理解和打击Covid-19。这是目前有活跃的研究领域。虽然文献中已经有许多调查,但需要跟上Covid-19的ML的Covid-19相关申请的快速越来越多的出版物。本文介绍了最近关于与Covid-19相关的ML算法的报告。我们专注于两个主要应用的潜力:使用易于使用的临床和实验室数据诊断Covid-19的预测和死亡风险和严重程度。讨论了与算法类型,训练数据集和特征选择相关的方面。随着我们在2020年1月至2021年1月至2021年期间发布的工作,一些关键点已经到了光明。这两个应用中使用的机器学习算法的大部分是监督学习算法。既定的模型尚未用于现实世界的实现,大部分相关的研究都是实验性的。 ML模型发现的诊断和预后特征与医学文献中呈现的结果一致。对现有应用程序的限制是使用易于选择偏差的不平衡数据集。

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