Literature DB >> 23997115

Quantitative structure-activity relationship models for predicting drug-induced liver injury based on FDA-approved drug labeling annotation and using a large collection of drugs.

Minjun Chen1, Huixiao Hong, Hong Fang, Reagan Kelly, Guangxu Zhou, Jürgen Borlak, Weida Tong.   

Abstract

Drug-induced liver injury (DILI) is one of the leading causes of the termination of drug development programs. Consequently, identifying the risk of DILI in humans for drug candidates during the early stages of the development process would greatly reduce the drug attrition rate in the pharmaceutical industry but would require the implementation of new research and development strategies. In this regard, several in silico models have been proposed as alternative means in prioritizing drug candidates. Because the accuracy and utility of a predictive model rests largely on how to annotate the potential of a drug to cause DILI in a reliable and consistent way, the Food and Drug Administration-approved drug labeling was given prominence. Out of 387 drugs annotated, 197 drugs were used to develop a quantitative structure-activity relationship (QSAR) model and the model was subsequently challenged by the left of drugs serving as an external validation set with an overall prediction accuracy of 68.9%. The performance of the model was further assessed by the use of 2 additional independent validation sets, and the 3 validation data sets have a total of 483 unique drugs. We observed that the QSAR model's performance varied for drugs with different therapeutic uses; however, it achieved a better estimated accuracy (73.6%) as well as negative predictive value (77.0%) when focusing only on these therapeutic categories with high prediction confidence. Thus, the model's applicability domain was defined. Taken collectively, the developed QSAR model has the potential utility to prioritize compound's risk for DILI in humans, particularly for the high-confidence therapeutic subgroups like analgesics, antibacterial agents, and antihistamines.

Entities:  

Keywords:  drug label; drug-induced liver injury; external validation.; predictive model; quantitative structure-activity relationship; therapeutic categories

Mesh:

Substances:

Year:  2013        PMID: 23997115     DOI: 10.1093/toxsci/kft189

Source DB:  PubMed          Journal:  Toxicol Sci        ISSN: 1096-0929            Impact factor:   4.849


  24 in total

1.  A testing strategy to predict risk for drug-induced liver injury in humans using high-content screen assays and the 'rule-of-two' model.

Authors:  Minjun Chen; Chun-Wei Tung; Qiang Shi; Lei Guo; Leming Shi; Hong Fang; Jürgen Borlak; Weida Tong
Journal:  Arch Toxicol       Date:  2014-06-11       Impact factor: 5.153

Review 2.  The Promise of AI for DILI Prediction.

Authors:  Andreu Vall; Yogesh Sabnis; Jiye Shi; Reiner Class; Sepp Hochreiter; Günter Klambauer
Journal:  Front Artif Intell       Date:  2021-04-14

3.  Predicting drug-induced liver injury in human with Naïve Bayes classifier approach.

Authors:  Hui Zhang; Lan Ding; Yi Zou; Shui-Qing Hu; Hai-Guo Huang; Wei-Bao Kong; Ji Zhang
Journal:  J Comput Aided Mol Des       Date:  2016-09-17       Impact factor: 3.686

4.  Integrating Drug's Mode of Action into Quantitative Structure-Activity Relationships for Improved Prediction of Drug-Induced Liver Injury.

Authors:  Leihong Wu; Zhichao Liu; Scott Auerbach; Ruili Huang; Minjun Chen; Kristin McEuen; Joshua Xu; Hong Fang; Weida Tong
Journal:  J Chem Inf Model       Date:  2017-04-10       Impact factor: 4.956

5.  Machine Learning Models for Predicting Liver Toxicity.

Authors:  Jie Liu; Wenjing Guo; Sugunadevi Sakkiah; Zuowei Ji; Gokhan Yavas; Wen Zou; Minjun Chen; Weida Tong; Tucker A Patterson; Huixiao Hong
Journal:  Methods Mol Biol       Date:  2022

Review 6.  In Silico Models for Hepatotoxicity.

Authors:  Claire Ellison; Mark Hewitt; Katarzyna Przybylak
Journal:  Methods Mol Biol       Date:  2022

7.  Metformin Disrupts Bile Acid Efflux by Repressing Bile Salt Export Pump Expression.

Authors:  Brandy Garzel; Tao Hu; Linhao Li; Yuanfu Lu; Scott Heyward; James Polli; Lei Zhang; Shiew-Mei Huang; Jean-Pierre Raufman; Hongbing Wang
Journal:  Pharm Res       Date:  2020-01-06       Impact factor: 4.200

8.  Drug properties and host factors contribute to biochemical presentation of drug-induced liver injury: a prediction model from a machine learning approach.

Authors:  Andres Gonzalez-Jimenez; Ayako Suzuki; Minjun Chen; Kristin Ashby; Ismael Alvarez-Alvarez; Raul J Andrade; M Isabel Lucena
Journal:  Arch Toxicol       Date:  2021-03-05       Impact factor: 5.153

9.  Identification of average molecular weight (AMW) as a useful chemical descriptor to discriminate liver injury-inducing drugs.

Authors:  Yuki Shimizu; Takamitsu Sasaki; Jun-Ichi Takeshita; Michiko Watanabe; Ryota Shizu; Takuomi Hosaka; Kouichi Yoshinari
Journal:  PLoS One       Date:  2021-06-25       Impact factor: 3.240

10.  Machine Learning for Predicting Risk of Drug-Induced Autoimmune Diseases by Structural Alerts and Daily Dose.

Authors:  Yue Wu; Jieqiang Zhu; Peter Fu; Weida Tong; Huixiao Hong; Minjun Chen
Journal:  Int J Environ Res Public Health       Date:  2021-07-03       Impact factor: 3.390

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