AnOxPePred: using deep learning for the prediction of antioxidative properties of peptides

计算机科学 机器学习 深度学习 人工智能 计算生物学 生物信息学 生物
作者
Tobias Hegelund Olsen,Betül Yeşiltaş,Frederikke Isa Marin,Margarita Pertseva,Pedro J. García‐Moreno,Simon Gregersen,Michael T. Overgaard,Charlotte Jacobsen,Ole Lund,Egon Bech Hansen,Paolo Marcatili
出处
期刊:Scientific Reports [Nature Portfolio]
卷期号:10 (1) 被引量:119
标识
DOI:10.1038/s41598-020-78319-w
摘要

Dietary antioxidants are an important preservative in food and have been suggested to help in disease prevention. With consumer demands for less synthetic and safer additives in food products, the food industry is searching for antioxidants that can be marketed as natural. Peptides derived from natural proteins show promise, as they are generally regarded as safe and potentially contain other beneficial bioactivities. Antioxidative peptides are usually obtained by testing various peptides derived from hydrolysis of proteins by a selection of proteases. This slow and cumbersome trial-and-error approach to identify antioxidative peptides has increased interest in developing computational approaches for prediction of antioxidant activity and thereby reduce laboratory work. A few antioxidant predictors exist, however, no tool predicting the antioxidative properties of peptides is, to the best of our knowledge, currently available as a web-server. We here present the AnOxPePred tool and web-server ( http://services.bioinformatics.dtu.dk/service.php?AnOxPePred-1.0 ) that uses deep learning to predict the antioxidant properties of peptides. Our model was trained on a curated dataset consisting of experimentally-tested antioxidant and non-antioxidant peptides. For a variety of metrics our method displays a prediction performance better than a k-NN sequence identity-based approach. Furthermore, the developed tool will be a good benchmark for future predictors of antioxidant peptides.

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