Literature DB >> 31004930

Using a hybrid read-across method to evaluate chemical toxicity based on chemical structure and biological data.

Yajie Guo1, Linlin Zhao2, Xiaoyi Zhang3, Hao Zhu4.   

Abstract

Read-across has become a primary approach to fill data gaps for chemical safety assessments. Chemical similarity based on structure, reactivity, and physic-chemical property information is a traditional approach applied for read-across toxicity studies. However, toxicity mechanisms are usually complicated in a biological system, so only using chemical similarity to perform the read-across for new compounds was not satisfactory for most toxicity endpoints, especially when the chemically similar compounds show dissimilar toxicities. This study aims to develop an enhanced read-across method for chemical toxicity predictions. To this end, we used two large toxicity datasets for read-across purposes. One consists of 3979 compounds with Ames mutagenicity data, and the other contains 7332 compounds with rat acute oral toxicity data. First, biological data for all compounds in these two datasets were obtained by querying thousands of PubChem bioassays. The PubChem bioassays with at least five compounds from either of these two datasets showing active responses were selected to generate comprehensive bioprofiles. The read-across studies were performed by using chemical similarity search only and also by using a hybrid similarity search based on both chemical descriptors and bioprofiles. Compared to traditional read-across based on chemical similarity, the hybrid read-across approach showed improved accuracy of predictions for both Ames mutagenicity and acute oral toxicity. Furthermore, we could illustrate potential toxicity mechanisms by analyzing the bioprofiles used for this hybrid read-across study. The results of this study indicate that the new hybrid read-across approach could be an applicable computational tool for chemical toxicity predictions. In this way, the bottleneck of traditional read-across studies can be overcome by introducing public biological data into the traditional process. The incorporation of bioprofiles generated from the additional biological data for compounds can partially solve the "activity cliff" issue and reveal their potential toxicity mechanisms. This study leads to a promising direction to utilize data-driven approaches for computational toxicology studies in the big data era.
Copyright © 2019 Elsevier Inc. All rights reserved.

Entities:  

Keywords:  Big data; Biosimilarity; Computational toxicology; Hybrid approach; Read-across; Toxicity mechanisms

Mesh:

Substances:

Year:  2019        PMID: 31004930      PMCID: PMC6508079          DOI: 10.1016/j.ecoenv.2019.04.019

Source DB:  PubMed          Journal:  Ecotoxicol Environ Saf        ISSN: 0147-6513            Impact factor:   6.291


  5 in total

Review 1.  Advancing computer-aided drug discovery (CADD) by big data and data-driven machine learning modeling.

Authors:  Linlin Zhao; Heather L Ciallella; Lauren M Aleksunes; Hao Zhu
Journal:  Drug Discov Today       Date:  2020-07-11       Impact factor: 7.851

Review 2.  In silico toxicology: From structure-activity relationships towards deep learning and adverse outcome pathways.

Authors:  Jennifer Hemmerich; Gerhard F Ecker
Journal:  Wiley Interdiscip Rev Comput Mol Sci       Date:  2020-03-31

3.  Predicting Prenatal Developmental Toxicity Based On the Combination of Chemical Structures and Biological Data.

Authors:  Heather L Ciallella; Daniel P Russo; Swati Sharma; Yafan Li; Eddie Sloter; Len Sweet; Heng Huang; Hao Zhu
Journal:  Environ Sci Technol       Date:  2022-04-22       Impact factor: 11.357

4.  RAID: Regression Analysis-Based Inductive DNA Microarray for Precise Read-Across.

Authors:  Yuto Amano; Masayuki Yamane; Hiroshi Honda
Journal:  Front Pharmacol       Date:  2022-07-22       Impact factor: 5.988

5.  ChemBioSim: Enhancing Conformal Prediction of In Vivo Toxicity by Use of Predicted Bioactivities.

Authors:  Marina Garcia de Lomana; Andrea Morger; Ulf Norinder; Roland Buesen; Robert Landsiedel; Andrea Volkamer; Johannes Kirchmair; Miriam Mathea
Journal:  J Chem Inf Model       Date:  2021-06-21       Impact factor: 4.956

  5 in total

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