HepatoToxicity Portal (HTP): an integrated database of drug-induced hepatotoxicity knowledgebase and graph neural network-based prediction model

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Title
HepatoToxicity Portal (HTP): an integrated database of drug-induced hepatotoxicity knowledgebase and graph neural network-based prediction model
Author(s)
J Han; W Zhung; InSoo Jang; J Lee; M J Kang; T D Lee; S J Kwack; K B Kim; D Hwang; Byungwook Lee; H S Kim; W Y Kim; S Lee
Bibliographic Citation
Journal of Cheminformatics, vol. 17, pp. 48-48
Publication Year
2025
Abstract
Liver toxicity poses a critical challenge in drug development due to the liver’s pivotal role in drug metabolism and detoxification. Accurately predicting liver toxicity is crucial but is hindered by scattered information sources, a lack of curation standards, and the heterogeneity of data perspectives. To address these challenges, we developed the HepatoToxicity Portal (HTP), which integrates an expert?curated knowledgebase (HTP?KB) and a state?of?the?art machine learning model for toxicity prediction (HTP?Pred). The HTP?KB consolidates hepatotoxicity data from nine major databases, carefully reviewed by hepatotoxicity experts and categorized into three levels: in vitro, in vivo, and clinical, using the Medical Dictionary for Regulatory Activities (MedDRA) terminology. The knowledgebase includes information on 8,306 chemicals. This curated dataset was used to build a hepatotoxicity prediction module by fine?tuning a GNN?based foundation model, which was pre?trained with approximately 10 million chemicals in the PubChem database. Our model demonstrated excellent performance, achieving an area under the ROC curve (AUROC) of 0.761, surpassing existing methods for hepatotoxicity prediction. The HTP is publicly accessible at https:// kobic.re.kr/htp/, offering both curated data and prediction services through an intuitive interface, thus effectively supporting drug development efforts.
Keyword
Liver toxicityDrug induced liver injuryHepatotoxicityMolecular graphFine?tuningFoundation modelDeep neural networkGraph neural network
ISSN
1758-2946
Publisher
Springer-BMC
Full Text Link
http://dx.doi.org/10.1186/s13321-025-00992-8
Type
Article
Appears in Collections:
1. Journal Articles > Journal Articles
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