Machine learning in TCM with natural products and molecules: current status and future perspectives

被引:0
|
作者
Suya Ma
Jinlei Liu
Wenhua Li
Yongmei Liu
Xiaoshan Hui
Peirong Qu
Zhilin Jiang
Jun Li
Jie Wang
机构
[1] China Academy of Chinese Medicine Sciences,Guang’anmen Hospital
[2] Tianjin University of Traditional Chinese Medicine,undefined
来源
Chinese Medicine | / 18卷
关键词
Machine learning; Deep learning; Traditional Chinese medicine; Natural products; Chemical components; Multidisciplinary intersection;
D O I
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中图分类号
学科分类号
摘要
Traditional Chinese medicine (TCM) has been practiced for thousands of years with clinical efficacy. Natural products and their effective agents such as artemisinin and paclitaxel have saved millions of lives worldwide. Artificial intelligence is being increasingly deployed in TCM. By summarizing the principles and processes of deep learning and traditional machine learning algorithms, analyzing the application of machine learning in TCM, reviewing the results of previous studies, this study proposed a promising future perspective based on the combination of machine learning, TCM theory, chemical compositions of natural products, and computational simulations based on molecules and chemical compositions. In the first place, machine learning will be utilized in the effective chemical components of natural products to target the pathological molecules of the disease which could achieve the purpose of screening the natural products on the basis of the pathological mechanisms they target. In this approach, computational simulations will be used for processing the data for effective chemical components, generating datasets for analyzing features. In the next step, machine learning will be used to analyze the datasets on the basis of TCM theories such as the superposition of syndrome elements. Finally, interdisciplinary natural product-syndrome research will be established by unifying the results of the two steps outlined above, potentially realizing an intelligent artificial intelligence diagnosis and treatment model based on the effective chemical components of natural products under the guidance of TCM theory. This perspective outlines an innovative application of machine learning in the clinical practice of TCM based on the investigation of chemical molecules under the guidance of TCM theory.
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