4.7 Review

Machine Learning Approaches in Traditional Chinese Medicine: A Systematic Review

Journal

AMERICAN JOURNAL OF CHINESE MEDICINE
Volume 50, Issue 1, Pages 91-131

Publisher

WORLD SCIENTIFIC PUBL CO PTE LTD
DOI: 10.1142/S0192415X22500045

Keywords

Machine Learning Approaches; Traditional Chinese Medicine; Systematic Review

Funding

  1. National Science Foundation of China [81873226]
  2. Zhejiang Provincial Natural Science Foundation [LZ18H270001]
  3. National Major Scientific and Technological Special Project for Significant New Drugs Development [2019ZX09301101]
  4. Zhejiang Provincial Science and Technology Innovation Leading Talent Project of Ten Thousand Talents Plan (2019)

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This article introduces the application of machine learning methods in the field of traditional Chinese medicine, including classification, regression, clustering, and dimensionality reduction. It also discusses the specific models used in each category and the differences in function and features when applied to different fields.
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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