Machine Learning Approaches in Traditional Chinese Medicine: A Systematic Review.

IF 4.8 2区 医学 Q1 INTEGRATIVE & COMPLEMENTARY MEDICINE American Journal of Chinese Medicine Pub Date : 2022-01-01 Epub Date: 2021-12-02 DOI:10.1142/S0192415X22500045
Haiyang Chen, Yu He
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引用次数: 7

Abstract

Machine learning (ML), as a branch of artificial intelligence, acquires the potential and meaningful rules from the mass of data via diverse algorithms. Owing to all research of traditional Chinese medicine (TCM) belonging to the digitalization of clinical records or experimental works, a massive and complex amount of data has become an inextricable part of the related studies. It is thus not surprising that ML approaches, as novel and efficient tools to mine the useful knowledge from data, have created inroads in a diversity of scopes of TCM over the past decade of years. However, by browsing lots of literature, we find that not all of the ML approaches perform well in the same field. Upon further consideration, we infer that the specificity may inhere between the ML approaches and their applied fields. This systematic review focuses its attention on the four categories of ML approaches and their eight application scopes in TCM. According to the function, ML approaches are classified into four categories, including classification, regression, clustering, and dimensionality reduction, and into 14 models as follows in more detail: support vector machine, least square-support vector machine, logistic regression, partial least squares regression, k-means clustering, hierarchical cluster analysis, artificial neural network, back propagation neural network, convolutional neural network, decision tree, random forest, principal component analysis, partial least squares-discriminant analysis, and orthogonal partial least squares-discriminant analysis. The eight common applied fields are divided into two parts: one for TCM, such as the diagnosis of diseases, the determination of syndromes, and the analysis of prescription, and the other for the related researches of Chinese herbal medicine, such as the quality control, the identification of geographic origins, the pharmacodynamic material basis, the medicinal properties, and the pharmacokinetics and pharmacodynamics. Additionally, this paper discusses the function and feature difference among ML approaches when they are applied to the corresponding fields via comparing their principles. The specificity of each approach to its applied fields has also been affirmed, whereby laying a foundation for subsequent studies applying ML approaches to TCM.

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机器学习在中医中的应用:系统综述。
机器学习(ML)作为人工智能的一个分支,通过多种算法从海量数据中获取潜在的、有意义的规则。由于所有中医研究都属于临床记录或实验工作的数字化,海量复杂的数据已成为相关研究不可分割的一部分。因此,机器学习方法作为从数据中挖掘有用知识的新颖而有效的工具,在过去十年中在中医的多种领域取得了进展,这并不奇怪。然而,通过浏览大量文献,我们发现并不是所有的机器学习方法在同一领域都表现良好。经过进一步的考虑,我们推断特异性可能存在于机器学习方法及其应用领域之间。本文系统综述了四类机器学习方法及其在中医中的八个应用范围。根据功能将ML方法分为分类、回归、聚类、降维四大类,具体分为以下14种模型:支持向量机、最小二乘支持向量机、逻辑回归、偏最小二乘回归、k-均值聚类、层次聚类分析、人工神经网络、反向传播神经网络、卷积神经网络、决策树、随机森林、主成分分析、偏最小二乘判别分析、正交偏最小二乘判别分析。这八个常用的应用领域分为两部分:一是中医领域,如疾病的诊断、证候的确定、方剂的分析;二是中草药的相关研究,如质量控制、产地鉴定、药效学物质基础、药性、药代动力学和药效学等。此外,本文还通过对机器学习方法原理的比较,讨论了机器学习方法在应用于相应领域时的功能和特征差异。每种方法在其应用领域的特殊性也得到了肯定,从而为后续研究将ML方法应用于中医奠定了基础。
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来源期刊
American Journal of Chinese Medicine
American Journal of Chinese Medicine 医学-全科医学与补充医学
CiteScore
9.90
自引率
8.80%
发文量
159
审稿时长
4.5 months
期刊介绍: The American Journal of Chinese Medicine, which is defined in its broadest sense possible, publishes original articles and essays relating to traditional or ethnomedicine of all cultures. Areas of particular interest include: Basic scientific and clinical research in indigenous medical techniques, therapeutic procedures, medicinal plants, and traditional medical theories and concepts; Multidisciplinary study of medical practice and health care, especially from historical, cultural, public health, and socioeconomic perspectives; International policy implications of comparative studies of medicine in all cultures, including such issues as health in developing countries, affordability and transferability of health-care techniques and concepts; Translating scholarly ancient texts or modern publications on ethnomedicine. The American Journal of Chinese Medicine will consider for publication a broad range of scholarly contributions, including original scientific research papers, review articles, editorial comments, social policy statements, brief news items, bibliographies, research guides, letters to the editors, book reviews, and selected reprints.
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