4.8 Article

A novel unambiguous strategy of molecular feature extraction in machine learning assisted predictive models for environmental properties

Journal

GREEN CHEMISTRY
Volume 22, Issue 12, Pages 3867-3876

Publisher

ROYAL SOC CHEMISTRY
DOI: 10.1039/d0gc01122c

Keywords

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Funding

  1. National Natural Science Foundation of China [21878028]
  2. Fundamental Research Funds for the Central Universities [2019CDQYHG021]
  3. Chongqing Innovation Support Program for Returned Overseas Chinese Scholars [CX2018048]
  4. Beijing Hundreds of Leading Talents Training Project of Science and Technology [Z171100001117154]

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Environmental properties of compounds provide significant information in treating organic pollutants, which drives the chemical process and environmental science toward eco-friendly technology. Traditional group contribution methods play an important role in property estimations, whereas various disadvantages emerge in their applications, such as scattered predicted values for certain groups of compounds. In order to address such issues, an extraction strategy for molecular features is proposed in this research, which is characterized by interpretability and discriminating power with regard to isomers. Based on the Henry's law constant data of organic compounds in water, we developed a hybrid predictive model that integrates the proposed strategy in conjunction with a neural network framework. The structure of the predictive model is optimized using cross-validation and grid search to improve its robustness. Moreover, the predictive model is improved by introducing the plane of best fit descriptor as input and adopting k-means clustering in sampling. In contrast with reported models in the literature, the developed predictive model demonstrates improved generality, higher accuracy, and fewer molecular features used in its development.

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