Literature DB >> 32159345

Development of a Nicotinic Acetylcholine Receptor nAChR α7 Binding Activity Prediction Model.

Sugunadevi Sakkiah1, Carmine Leggett2, Bohu Pan1, Wenjing Guo1, Luis G Valerio2, Huixiao Hong1.   

Abstract

Despite the well-known adverse health effects associated with tobacco use, addiction to nicotine found in tobacco products causes difficulty in quitting among users. Nicotinic acetylcholine receptors (nAChRs) are the physiological targets of nicotine and facilitate addiction to tobacco products. The nAChR-α7 subtype plays an important role in addiction; therefore, predicting the binding activity of tobacco constituents to nAChR-α7 is an important component for assessing addictive potential of tobacco constituents. We developed an α7 binding activity prediction model based on a large training data set of 843 chemicals with human α7 binding activity data extracted from PubChem and ChEMBL. The model was tested using 1215 chemicals with rat α7 binding activity data from the same databases. Based on the competitive docking results, the docking scores were partitioned to the key residues that play important roles in the receptor-ligand binding. A decision forest was used to train the human α7 binding activity prediction model based on the partition of docking scores. Five-fold cross validations were conducted to estimate the performance of the decision forest models. The developed model was used to predict the potential human α7 binding activity for 5275 tobacco constituents. The human α7 binding activity data for 84 of the 5275 tobacco constituents were experimentally measured to confirm and empirically validate the prediction results. The prediction accuracy, sensitivity, and specificity were 64.3, 40.0, and 81.6%, respectively. The developed prediction model of human α7 may be a useful tool for high-throughput screening of potential addictive tobacco constituents.

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Year:  2020        PMID: 32159345     DOI: 10.1021/acs.jcim.0c00139

Source DB:  PubMed          Journal:  J Chem Inf Model        ISSN: 1549-9596            Impact factor:   4.956


  3 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.  Functional alterations by a subgroup of neonicotinoid pesticides in human dopaminergic neurons.

Authors:  Udo Kraushaar; Marcel Leist; Dominik Loser; Maria G Hinojosa; Jonathan Blum; Jasmin Schaefer; Markus Brüll; Ylva Johansson; Ilinca Suciu; Karin Grillberger; Timm Danker; Clemens Möller; Iain Gardner; Gerhard F Ecker; Susanne H Bennekou; Anna Forsby
Journal:  Arch Toxicol       Date:  2021-03-29       Impact factor: 5.153

3.  Machine learning models for rat multigeneration reproductive toxicity prediction.

Authors:  Jie Liu; Wenjing Guo; Fan Dong; Jason Aungst; Suzanne Fitzpatrick; Tucker A Patterson; Huixiao Hong
Journal:  Front Pharmacol       Date:  2022-09-27       Impact factor: 5.988

  3 in total

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