Literature DB >> 33494041

Quantitative structure activity relationships (QSARs) and machine learning models for abiotic reduction of organic compounds by an aqueous Fe(II) complex.

Yidan Gao1, Shifa Zhong1, Tifany L Torralba-Sanchez2, Paul G Tratnyek2, Eric J Weber3, Yiling Chen4, Huichun Zhang5.   

Abstract

Due to the increasing diversity of organic contaminants discharged into anoxic water environments, reactivity prediction is necessary for chemical persistence evaluation for water treatment and risk assessment purposes. Almost all quantitative structure activity relationships (QSARs) that describe rates of contaminant transformation apply only to narrowly-defined, relatively homogenous families of reactants (e.g., dechlorination of alkyl halides). In this work, we develop predictive models for abiotic reduction of 60 organic compounds with diverse reducible functional groups, including nitroaromatic compounds (NACs), aliphatic nitro-compounds (ANCs), aromatic N-oxides (ANOs), isoxazoles (ISXs), polyhalogenated alkanes (PHAs), sulfoxides and sulfones (SOs), and others. Rate constants for their reduction were measured using a model reductant system, Fe(II)-tiron. Qualitatively, the rates followed the order NACs > ANOs ≈ ISXs ≈ PHAs > ANCs > SOs. To develop QSARs, both conventional chemical descriptor-based and machine learning (ML)-based approaches were investigated. Conventional univariate QSARs based on a molecular descriptor ELUMO (energy of the lowest-unoccupied molecular orbital) gave good correlations within classes. Multivariate QSARs combining ELUMO with Abraham descriptors for physico-chemical properties gave slightly improved correlations within classes for NCs and NACs, but little improvement in correlation within other classes or among classes. The ML model obtained covers reduction rates for all classes of compounds and all of the conditions studied with the prediction accuracy similar to those of the conventional QSARs for individual classes (r2 = 0.41-0.98 for univariate QSARs, 0.71-0.94 for multivariate QSARs, and 0.83 for the ML model). Both approaches required a scheme for a priori classification of the compounds for model training. This work offers two alternative modeling approaches to comprehensive abiotic reactivity prediction for persistence evaluation of organic compounds in anoxic water environments.
Copyright © 2021 Elsevier Ltd. All rights reserved.

Entities:  

Keywords:  Abiotic reduction kinetics; Fe(II) reductant; Machine learning; Organic contaminants; QSARs

Mesh:

Substances:

Year:  2021        PMID: 33494041      PMCID: PMC8193646          DOI: 10.1016/j.watres.2021.116843

Source DB:  PubMed          Journal:  Water Res        ISSN: 0043-1354            Impact factor:   11.236


  24 in total

1.  Reductive dehalogenation of hexachloroethane, carbon tetrachloride, and bromoform by anthrahydroquinone disulfonate and humic Acid.

Authors:  G P Curtis; M Reinhard
Journal:  Environ Sci Technol       Date:  1994-12-01       Impact factor: 9.028

2.  In silico environmental chemical science: properties and processes from statistical and computational modelling.

Authors:  Paul G Tratnyek; Eric J Bylaska; Eric J Weber
Journal:  Environ Sci Process Impacts       Date:  2017-03-22       Impact factor: 4.238

3.  Experimental Validation of Hydrogen Atom Transfer Gibbs Free Energy as a Predictor of Nitroaromatic Reduction Rate Constants.

Authors:  Jimmy Murillo-Gelvez; Kevin P Hickey; Dominic M Di Toro; Herbert E Allen; Richard F Carbonaro; Pei C Chiu
Journal:  Environ Sci Technol       Date:  2019-05-09       Impact factor: 9.028

4.  Reactivity of alkyl polyhalides toward granular iron: development of QSARs and reactivity cross correlations for reductive dehalogenation.

Authors:  David M Cwiertny; William A Arnold; Tamar Kohn; Lisa A Rodenburg; A Lynn Roberts
Journal:  Environ Sci Technol       Date:  2010-10-15       Impact factor: 9.028

5.  Chlorinated solvents in groundwater of the United States.

Authors:  Michael J Moran; John S Zogorski; Paul J Squillace
Journal:  Environ Sci Technol       Date:  2007-01-01       Impact factor: 9.028

6.  Abiotic reduction of nitroaromatic compounds by aqueous iron(ll)-catechol complexes.

Authors:  Daisuke Naka; Dongwook Kim; Timothy J Strathmann
Journal:  Environ Sci Technol       Date:  2006-05-01       Impact factor: 9.028

7.  Predicting reduction rates of energetic nitroaromatic compounds using calculated one-electron reduction potentials.

Authors:  Alexandra J Salter-Blanc; Eric J Bylaska; Hayley J Johnston; Paul G Tratnyek
Journal:  Environ Sci Technol       Date:  2015-02-27       Impact factor: 9.028

8.  Role of organically complexed iron(II) species in the reductive transformation of RDX in anoxic environments.

Authors:  Dongwook Kim; Timothy J Strathmann
Journal:  Environ Sci Technol       Date:  2007-02-15       Impact factor: 9.028

9.  Diversity of contaminant reduction reactions by zerovalent iron: role of the reductate.

Authors:  Rosemarie Miehr; Paul G Tratnyek; Joel Z Bandstra; Michelle M Scherer; Michael J Alowitz; Eric J Bylaska
Journal:  Environ Sci Technol       Date:  2004-01-01       Impact factor: 9.028

10.  Redox behavior of magnetite: implications for contaminant reduction.

Authors:  Christopher A Gorski; James T Nurmi; Paul G Tratnyek; Thomas B Hofstetter; Michelle M Scherer
Journal:  Environ Sci Technol       Date:  2010-01-01       Impact factor: 9.028

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