生物科学中机器学习的进化:文献计量网络分析

A. Vanaja, V. Yella
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引用次数: 0

摘要

机器学习是一个快速发展的数据分析领域,现在已经成为生命科学研究的一个组成部分。它已被广泛应用于探索基因组编码的信息和基因组之外的信息。在这项研究中,我们通过从PubMed搜索引擎检索的已发表文献,调查了生物医学研究中科学参与者的趋势和机器学习实施的概念结构。采用VOS查看工具对1964-2010年、2011-2015年、2016-2018年和2019-2020年4个时间段进行纵向队列书目耦合。机器学习研究的科学参与者包括42,629位独立作者,27,364个组织,平均合作指数为3.9。Coword分析表明,机器学习在生命科学领域应用的概念框架从简单的模式搜索转向了基因组科学和医学成像分析方法,从贝叶斯定理转向了深度学习算法。据观察,目前机器学习被广泛用于调查新冠肺炎等新情况。研究人员利用机器学习工具和高通量技术的进步,深入研究复杂而不断发展的生物学和医学概念。©2022 Vanaja和Yella。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evolution of machine learning in biosciences: A bibliometric network analysis
Machine learning, a rapidly evolving field of data analysis, has now become an integral part of life science research. It has been widely utilized for exploring the information encoded by the genome and beyond the genome. In this study, we surveyed the trends of scientific actors and the conceptual structure of machine learning implementation in biomedical research through the published literature retrieved from the PubMed search engine. A longitudinal cohort bibliographic coupling was executed by employing the VOS viewer tool for 4-time periods, 1964–2010, 2011–2015, 2016–2018, and 2019–2020. Scientific actors of machine learning research include 42,629 unique authors, 27,364 organizations with a mean collaboration index of 3.9. Coword analysis revealed that the conceptual framework of machine learning applications in life sciences moved from simple pattern searching to omic science and medical imaging analytic approaches and from Bayes’ theorem to deep learning algorithms. It is observed that presently machine learning is extensively utilized in investigating emerging situations like coronavirus disease. To epitomize, researchers capitalized on advancements in machine learning tools and high-throughput technologies to delve into the intricate and evolving concepts of biology and medicine. © 2022 Vanaja and Yella.
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