Frontiers in Pharmacology (Jan 2022)

AOPM: Application of Antioxidant Protein Classification Model in Predicting the Composition of Antioxidant Drugs

  • Yixiao Zhai,
  • Jingyu Zhang,
  • Tianjiao Zhang,
  • Yue Gong,
  • Zixiao Zhang,
  • Dandan Zhang,
  • Yuming Zhao

DOI
https://doi.org/10.3389/fphar.2021.818115
Journal volume & issue
Vol. 12

Abstract

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Antioxidant proteins can not only balance the oxidative stress in the body, but are also an important component of antioxidant drugs. Accurate identification of antioxidant proteins is essential to help humans fight diseases and develop new drugs. In this paper, we developed a friendly method AOPM to identify antioxidant proteins. 188D and the Composition of k-spaced Amino Acid Pairs were adopted as the feature extraction method. In addition, the Max-Relevance-Max-Distance algorithm (MRMD) and random forest were the feature selection and classifier, respectively. We used 5-folds cross-validation and independent test dataset to evaluate our model. On the test dataset, AOPM presented a higher performance compared with the state-of-the-art methods. The sensitivity, specificity, accuracy, Matthew’s Correlation Coefficient and an Area Under the Curve reached 87.3, 94.2, 92.0%, 0.815 and 0.972, respectively. In addition, AOPM still has excellent performance in predicting the catalytic enzymes of antioxidant drugs. This work proved the feasibility of virtual drug screening based on sequence information and provided new ideas and solutions for drug development.

Keywords