Literature DB >> 29309657

In Silico Prediction of Chemical-Induced Hepatocellular Hypertrophy Using Molecular Descriptors.

Kaori Ambe1, Kana Ishihara1, Tatsuya Ochibe1, Kazuyuki Ohya1, Sorami Tamura1, Kaoru Inoue2, Midori Yoshida3, Masahiro Tohkin1.   

Abstract

In silico prediction for toxicity of chemicals is required to reduce cost, time, and animal testing. However, predicting hepatocellular hypertrophy, which often affects the derivation of the No-Observed-Adverse-Effect Level in repeated dose toxicity studies, is difficult because pathological findings are diverse, mechanisms are largely unknown, and a wide variety of chemical structures exists. Therefore, a method for predicting the hepatocellular hypertrophy of diverse chemicals without complete understanding of their mechanisms is necessary. In this study, we developed predictive classification models of hepatocellular hypertrophy using machine learning-specifically, deep learning, random forest, and support vector machine. We extracted hepatocellular hypertrophy data on rats from 2 toxicological databases, our original database developed from risk assessment reports such as pesticides, and the Hazard Evaluation Support System Integrated Platform. Then, we constructed prediction models based on molecular descriptors and evaluated their performance using independent test chemicals datasets, which differed from the training chemicals datasets. Further, we defined the applicability domain (AD), which generally limits the application for chemicals, as structurally similar to the training chemicals dataset. The best model was found to be the support vector machine model using the Hazard Evaluation Support System Integrated Platform dataset, which was trained with 251 chemicals and predicted 214 test chemicals inside the applicability domain. It afforded a prediction accuracy of 0.76, sensitivity of 0.90, and area under the curve of 0.81. These in silico predictive classification models could be reliable tools for hepatocellular hypertrophy assessments and can facilitate the development of in silico models for toxicity prediction.

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Year:  2018        PMID: 29309657     DOI: 10.1093/toxsci/kfx287

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


  5 in total

1.  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

2.  In Silico Approach to Predict Severe Cutaneous Adverse Reactions Using the Japanese Adverse Drug Event Report Database.

Authors:  Kaori Ambe; Kazuyuki Ohya; Waki Takada; Masaharu Suzuki; Masahiro Tohkin
Journal:  Clin Transl Sci       Date:  2021-01-08       Impact factor: 4.689

3.  Molecular Image-Based Prediction Models of Nuclear Receptor Agonists and Antagonists Using the DeepSnap-Deep Learning Approach with the Tox21 10K Library.

Authors:  Yasunari Matsuzaka; Yoshihiro Uesawa
Journal:  Molecules       Date:  2020-06-15       Impact factor: 4.411

4.  Prediction Model of Aryl Hydrocarbon Receptor Activation by a Novel QSAR Approach, DeepSnap-Deep Learning.

Authors:  Yasunari Matsuzaka; Takuomi Hosaka; Anna Ogaito; Kouichi Yoshinari; Yoshihiro Uesawa
Journal:  Molecules       Date:  2020-03-13       Impact factor: 4.411

5.  Analysis of Influencing Factors on the Gas Separation Performance of Carbon Molecular Sieve Membrane Using Machine Learning Technique.

Authors:  Yanqiu Pan; Liu He; Yisu Ren; Wei Wang; Tonghua Wang
Journal:  Membranes (Basel)       Date:  2022-01-17
  5 in total

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