Hepatotoxicity prediction for traditional Chinese medicine: a two-step in silico framework integrating network and machine learning approaches
- BMC Complement Med Ther. 2026 Apr 2;26(1):177. doi: 10.1186/s12906-026-05369-4.
- 1. Clinical Research Center, Hainan Hospital, Guangdong Provincial Hospital of Chinese Medicine, Hainan Medical University, Haikou, 570100, China.
- 2. First Clinical Medical College, Yunnan University of Chinese Medicine, Kunming, 650000, China.
- 3. Chemical Experiment Teaching Center, School of Pharmacy, Hainan Academy of Medical Sciences, Hainan Medical University, Haikou, 571000, China.
- 4. State Key Laboratory of Traditional Chinese Medicine Syndrome, Science and Technology Innovation Center, Guangzhou University of Chinese Medicine, Guangzhou, 510405, China.
- 5. Division of biomedical informatics, Department of Computer Science, Shantou University, Shantou, 515000, China.
- 6. Ultrasound diagnosis department, Hainan Hospital, Guangdong Provincial Hospital of Chinese Medicine, Haikou, 570100, China.
- 7. Institute for Advanced Study, Jiangxi University of Chinese Medicine, Nanchang, 330004, China.
- 8. Clinical Research Center, Hainan Hospital, Guangdong Provincial Hospital of Chinese Medicine, Hainan Medical University, Haikou, 570100, China. [email protected].
- 9. State Key Laboratory of Traditional Chinese Medicine Syndrome, Science and Technology Innovation Center, Guangzhou University of Chinese Medicine, Guangzhou, 510405, China. [email protected].
- 10. Division of biomedical informatics, Department of Computer Science, Shantou University, Shantou, 515000, China. [email protected].
- # Contributed equally.
Traditional Chinese medicine (TCM) has gained increasing attention due to several severe cases of herb-induced liver injury over the last few decades. Due to the intricate components and complex internal interactions, the identification of hepatotoxic ingredients in TCM remains a significant challenge. In this study, we proposed a novel two-step in silico framework, which integrates a network-based systems pharmacology approach and a machine learning-based consensus model, to identify potential hepatotoxicity from TCM-derived compounds. Compared to currently available tools, our method showed superior predictive capability in terms of accuracy (0.76) and F1 score (0.72) on a natural product-specific benchmark test set. Based on the two-step in silico framework, we conducted a comprehensive screening of 3,882 TCM compounds, revealing that 133 exhibited potential high-risk hepatotoxicity, including 45 (33.8%) corroborated by clinical and experimental evidence. Cell viability tests and serum biochemistry analyses on HepG2 cells confirmed the significant hepatotoxicity of the predicted compounds, including dehydroevodiamine, monocrotaline, tetrahydrocoptisine, citric acid, and eugenol. We next performed pharmacovigilance assessment of hepatotoxicity for the top 100 commonly used TCM herbs in clinical practice, prioritized the high-risk herbs, and explored the hepatotoxic mechanisms of TCM. Finally, we selected Rheum palmatum L. (Dahuang) as case study to showcase how the proposed two-step in silico framework aids in accurately identifying the compositions and understanding the underlying molecular mechanisms of TCM-induced liver injury. Overall, this study demonstrates a potent computational toxicology framework for TCM-induced hepatotoxicity prediction, aiming to provide guidance for the clinical use of TCM.
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Cat. No.Product NameDescriptionTargetResearch Area
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target: Others
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Research Areas: Metabolic Disease; Inflammation/Immunology; Infection; Cardiovascular Disease; Cancer
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Research Areas: Neurological Disease
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Research Areas: Inflammation/Immunology