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基于 COVID-19 患者生理数据的临床结局预测的机器学习和深度学习方法:范围综述。

Machine and deep learning methods for clinical outcome prediction based on physiological data of COVID-19 patients: a scoping review.

机构信息

Department of Surgery, School of Medicine, Nazarbayev University, Astana, Kazakhstan; Department of Anesthesiology, Intensive Care, and Pain Medicine, National Research Oncology Center, Astana, Kazakhstan.

Department of Computer Science, College of Engineering, Wayne State University, Detroit, USA.

出版信息

Int J Med Inform. 2024 Feb;182:105308. doi: 10.1016/j.ijmedinf.2023.105308. Epub 2023 Dec 5.

Abstract

INTRODUCTION

Since the beginning of the COVID-19 pandemic, numerous machine and deep learning (MDL) methods have been proposed in the literature to analyze patient physiological data. The objective of this review is to summarize various aspects of these methods and assess their practical utility for predicting various clinical outcomes.

METHODS

We searched PubMed, Scopus, and Cochrane Library, screened and selected the studies matching the inclusion criteria. The clinical analysis focused on the characteristics of the patient cohorts in the studies included in this review, the specific tasks in the context of the COVID-19 pandemic that machine and deep learning methods were used for, and their practical limitations. The technical analysis focused on the details of specific MDL methods and their performance.

RESULTS

Analysis of the 48 selected studies revealed that the majority (∼54 %) of them examined the application of MDL methods for the prediction of survival/mortality-related patient outcomes, while a smaller fraction (∼13 %) of studies also examined applications to the prediction of patients' physiological outcomes and hospital resource utilization. 21 % of the studies examined the application of MDL methods to multiple clinical tasks. Machine and deep learning methods have been shown to be effective at predicting several outcomes of COVID-19 patients, such as disease severity, complications, intensive care unit (ICU) transfer, and mortality. MDL methods also achieved high accuracy in predicting the required number of ICU beds and ventilators.

CONCLUSION

Machine and deep learning methods have been shown to be valuable tools for predicting disease severity, organ dysfunction and failure, patient outcomes, and hospital resource utilization during the COVID-19 pandemic. The discovered knowledge and our conclusions and recommendations can also be useful to healthcare professionals and artificial intelligence researchers in managing future pandemics.

摘要

简介

自 COVID-19 大流行开始以来,文献中已经提出了许多机器和深度学习 (MDL) 方法来分析患者的生理数据。本综述的目的是总结这些方法的各个方面,并评估它们在预测各种临床结局方面的实际效用。

方法

我们在 PubMed、Scopus 和 Cochrane Library 中进行了检索,并筛选和选择了符合纳入标准的研究。临床分析侧重于本综述中纳入的研究中患者队列的特征、机器和深度学习方法在 COVID-19 大流行背景下用于的特定任务以及它们的实际局限性。技术分析侧重于特定 MDL 方法的细节及其性能。

结果

对 48 项选定研究的分析表明,其中大多数(约 54%)研究检验了 MDL 方法在预测与生存/死亡率相关的患者结局方面的应用,而较小比例(约 13%)的研究也检验了其在预测患者生理结局和医院资源利用方面的应用。21%的研究检验了 MDL 方法在多个临床任务中的应用。机器和深度学习方法已被证明可有效预测 COVID-19 患者的几种结局,例如疾病严重程度、并发症、重症监护病房 (ICU) 转科和死亡率。MDL 方法在预测所需的 ICU 床位和呼吸机数量方面也取得了很高的准确性。

结论

机器和深度学习方法已被证明是预测 COVID-19 大流行期间疾病严重程度、器官功能障碍和衰竭、患者结局和医院资源利用的有价值工具。发现的知识以及我们的结论和建议也可能对医疗保健专业人员和人工智能研究人员管理未来的大流行有用。

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