Prediction of antioxidant peptides using a quantitative structure-activity relationship predictor (AnOxPP) based on bidirectional long short-term memory neural network and interpretable amino acid descriptors
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Youjin Hao | G. Liang | Dongya Qin | Ruihong Wang | Linna Jiao | Yi Zhao | Gui-zhao Liang
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