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)
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Propose a TCM prescription recommendation model (TCMPR) |
Deep learning |
TCMPR has high performance on TCM prescription recommendation |
Dong et al. (2022)
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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)
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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)
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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)
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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)
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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)
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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)
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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)
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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)
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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)
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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)
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