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AoP-LSE: Antioxidant Proteins Classification Using Deep Latent Space Encoding of Sequence Features
Authors:Muhammad Usman  Shujaat Khan  Seongyong Park  Jeong-A Lee
Institution:1.Department of Computer Engineering, Chosun University, Gwangju 61452, Korea;2.Department of Bio and Brain Engineering, KAIST, Daejeon 34141, Korea; (S.K.); (S.P.)
Abstract:It is of utmost importance to develop a computational method for accurate prediction of antioxidants, as they play a vital role in the prevention of several diseases caused by oxidative stress. In this correspondence, we present an effective computational methodology based on the notion of deep latent space encoding. A deep neural network classifier fused with an auto-encoder learns class labels in a pruned latent space. This strategy has eliminated the need to separately develop classifier and the feature selection model, allowing the standalone model to effectively harness discriminating feature space and perform improved predictions. A thorough analytical study has been presented alongwith the PCA/tSNE visualization and PCA-GCNR scores to show the discriminating power of the proposed method. The proposed method showed a high MCC value of 0.43 and a balanced accuracy of 76.2%, which is superior to the existing models. The model has been evaluated on an independent dataset during which it outperformed the contemporary methods by correctly identifying the novel proteins with an accuracy of 95%.
Keywords:antioxidation  deep auto-encoder  composition of k-spaced amino acid pair (CKSAAP)  latent space learning  neural network  classification
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