4.7 Article

Is clay-polycation adsorbent future of the greener society? In silico modeling approach with comprehensive virtual screening

期刊

CHEMOSPHERE
卷 220, 期 -, 页码 1108-1117

出版社

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.chemosphere.2018.12.215

关键词

Adsorption; Clay-polymer nanocomposites (CPNs); Organic pollutants; QSPR; Virtual screening

资金

  1. National Science Foundation [NSF/CREST HRD-1547754, NSF/RISE HRD-1547836]

向作者/读者索取更多资源

Presence of organic pollutants in the wastewater and aquatic environment is one of the serious concerns worldwide. Superior adsorption of organic pollutants on modified clays with organocations is well approved nowadays. Among hybrid materials, clay-polyelectrolyte nanocomposites (CPN) are one of the specifically designed materials for the efficient adsorption of diverse organic pollutants. Due to higher surface area of the clay mineral coupled with a polymer coating, they have an explicit affinity for the organic pollutants. In this background, we have developed statistically significant and mechanistically interpretable quantitative structure-property relationship (QSPR) model for adsorption coefficient of diverse organic pollutants to the protonated montmorillonite poly-4-vinylpyridine-co-styrene (Mt-HPVPcoS), a hybrid CPN. Further, the model was employed to predict the logk(d) value of similar to 0.9 million chemicals from five diverse databases spanning from existing and experimental pharmaceuticals, natural and synthetic chemicals and dyes with unknown logk(d) value for the mentioned CPN. The reliability of predicted data is checked with two layers confidence screening i.e. the applicability domain study followed by prediction quality check by 'Prediction Reliability Indicator'. Thus, prediction of each compound can be used for data gap filling by environmental regulatory authorities as well as industries. Followed by, maximum common substructure-based (MCS) algorithm is employed for individual database to extract the important structural scaffold for higher logk(d) to the mentioned CPN. (C) 2019 Elsevier Ltd. All rights reserved.

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