Applications of machine learning in clinical decision support in the omic era

With the development of the omic technologies, the acquisition approaches of various biological data on different levels and types are becoming more mature. As a large amount of data will be produced in the process of diagnosis and treatment of diseases, it is necessary to utilize the artificial int...

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Bibliographic Details
Published inYíchuán Vol. 40; no. 9; p. 693
Main Authors Zhao, Xue Tong, Yang, Ya Dong, Qu, Hong Zhu, Fang, Xiang Dong
Format Journal Article
LanguageChinese
Published China 20.09.2018
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Summary:With the development of the omic technologies, the acquisition approaches of various biological data on different levels and types are becoming more mature. As a large amount of data will be produced in the process of diagnosis and treatment of diseases, it is necessary to utilize the artificial intelligence such as machine learning to analyze complex, multi-dimensional and multi-scale data and to construct clinical decision support tools. It will provide a method to figure out rapid and effective programs in diagnosis and treatment. In this process, the choice of artificial intelligence seems to be particularly important, such as machine learning. The article reviews the type and algorithm of machine learning used in clinical decision support, such as support vector machines, logistic regression, clustering algorithms, Bagging, random forests and deep learning. The application of machine learning and other methods in clinical decision support has been summarized and classified. The advantages and disadvantag
ISSN:0253-9772
DOI:10.16288/j.yczz.18-139