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. 2024 Feb 23;15:1181183. doi: 10.3389/fphar.2024.1181183

TABLE 2.

Application of AI in TCM data mining.

Aim of study AI methods Results REF
Propose a multi-graph convolution network (MGCN) prescription recommendation model Multi-graph convolutional network MGCN significantly improved the accuracy of TCM herbal prescription recommendations Zhao et al. (2022)
Propose a TCM prescription recommendation model (TCMPR) Deep learning TCMPR has high performance on TCM prescription recommendation Dong et al. (2022)
Generate TCM prescriptions from a few medical records and TCM documentary resources a two-stage transfer learning model, TCMBERT model TCMBERT model outperforms the state-of-the-art methods in all comparison baselines on the TCM prescription generation task Liu et al. (2022b)
Examine and propagate the medication experience and group formula of TCM Master XIONG Jibo in diagnosing and treating arthralgia syndrome (AS) Frequency analysis, association rule analysis, cluster analysis, and visual analysis Customized NLP model could improve the efficiency of data mining in TCM Wenxiang et al. (2022)
Propose an intelligent formula recommendation system (FordNet) Deep learning, convolution neural network FordNet can learn from the effective experience of TCM masters and get excellent recommendation results Zhou et al. (2021)
Propose mechanism about a TCM prescription PageRank algorithm, network pharmacology Provided a new unsupervised learning strategy for polypharmacology research about TCM Xiong et al. (2022)
Explore the mechanism of eight classic TCM formulae in the treatment of different types of coronary heart disease Screening, network clustering, hierarchical clustering, network topology Showed that each formula’s targets were significantly correlated with CHD associated genes and overlapped with the targets of 9 classes of drugs for cardio vascular diseases (CVD) to some degree Yang et al. (2020)
Explore the effects and mechanisms of Ge-Gen-Qin-Lian decoction treatment in acute lung injury Network pharmacology Suggested that GQD did have a better therapeutic effect on acute lung injury Ding et al. (2020)
Quantify the interactions in herb pairs Network-based modeling Provided a network pharmacology framework to quantify the degree of herb interactions Wang et al. (2021b)
Explore the patterns of TCM use and its efficacy in children with cancer Association rule mining ARM showed that Radix Astragali, the most commonly used medicinal herb (58.0%), was associated with treating myelosuppression, gastrointestinal complications, and infection Lam et al. (2022b)
Explore the potential therapeutic effect of TCM on coronavirus disease 2019 (COVID-19) Data mining, frequency and association analysis, network pharmacology analysis, bioinformatics analysis Collected a total of 173 prescriptions which were involved in the anti-inflammatory, anti-viral, and neuroprotective effects Sun et al. (2020b)
Investigate the potential mechanism of Biyuan Tongqiao granule (BYTQ) against allergic rhinitis (AR) Network pharmacology Found the potential protein targets and mechanism for BYTQ to treat AR Wang et al. (2024)