将机器学习应用于长期 COVID 症状分析:分析综述

P. Ariza-Colpas, M. Piñeres-Melo, M. Urina-Triana, E. Barcelo-Martínez, Camilo Barceló-Castellanos, Fabian Roman
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引用次数: 0

摘要

COVID-19 大流行继续构成具有国际重要性的突发公共卫生事件,尽管紧急状态声明确实已在全球范围内终止,但仍有许多人继续受到感染,并出现与该疾病相关的不同症状。毫无疑问,基于机器学习等不同技术的解决方案为了解、识别和治疗该疾病做出了巨大贡献。由于这种病毒的突然出现,科学界已经开展了许多工作来支持检测和治疗过程,从而产生了大量的出版物,这使得我们很难确定当前的研究状况以及未来围绕这一在我们中间仍然有效的问题所能继续产生的贡献。为了解决这个问题,本文展示了科学计量学分析的结果,通过该分析,可以确定自动学习在监测和治疗与该病症相关的症状方面做出的各种贡献。分析方法分为两个阶段:在第一阶段,进行科学计量分析,确定与该主题相关的成果最多的国家、作者和杂志;在第二阶段,确定基于知识之树隐喻的贡献。本综述确定的主要概念涉及症状、已实施的算法和应用的影响。这些结果为该领域的研究人员提供了相关信息,帮助他们寻找新的解决方案或应用现有的解决方案来治疗 COVID-19 仍然存在的症状。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Applied to the Analysis of Prolonged COVID Symptoms: An Analytical Review
The COVID-19 pandemic continues to constitute a public health emergency of international importance, although the state of emergency declaration has indeed been terminated worldwide, many people continue to be infected and present different symptoms associated with the illness. Undoubtedly, solutions based on divergent technologies such as machine learning have made great contributions to the understanding, identification, and treatment of the disease. Due to the sudden appearance of this virus, many works have been carried out by the scientific community to support the detection and treatment processes, which has generated numerous publications, making it difficult to identify the status of current research and future contributions that can continue to be generated around this problem that is still valid among us. To address this problem, this article shows the result of a scientometric analysis, which allows the identification of the various contributions that have been generated from the line of automatic learning for the monitoring and treatment of symptoms associated with this pathology. The methodology for the development of this analysis was carried out through the implementation of two phases: in the first phase, a scientometric analysis was carried out, where the countries, authors, and magazines with the greatest production associated with this subject can be identified, later in the second phase, the contributions based on the use of the Tree of Knowledge metaphor are identified. The main concepts identified in this review are related to symptoms, implemented algorithms, and the impact of applications. These results provide relevant information for researchers in the field in the search for new solutions or the application of existing ones for the treatment of still-existing symptoms of COVID-19.
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