Litcius/Paper detail

Comprehensive Evaluation and Comparison of Machine Learning Methods in QSAR Modeling of Antioxidant Tripeptides

Zhenjiao Du, Donghai Wang, Yonghui Li

2022ACS Omega53 citationsDOIOpen Access PDF

Abstract

of 0.627 for tripeptide antioxidants was obtained by combining random forest for feature selection and tree-based extreme gradient boost regression for model development. Based on the predicted antioxidant values of 7870 unknown tripeptides, potentially high antioxidant activity tripeptides all have a tyrosine, tryptophan, or cysteine residue at the C-terminal position. Furthermore, the predicted antioxidant activity of six synthesized tripeptides was confirmed through experimental determination, and for the first time, the cysteine or tyrosine residue at the C-terminal was found to be critical to the antioxidant activity based on both QSAR models and experimental observations.

Topics & Concepts

TripeptideQuantitative structure–activity relationshipFeature selectionAntioxidantMachine learningArtificial intelligenceRandom forestIn silicoLinear regressionPairwise comparisonChemistryComputer scienceComputational biologyBiological systemAmino acidBiochemistryBiologyGeneProtein Hydrolysis and Bioactive PeptidesComputational Drug Discovery MethodsMeat and Animal Product Quality