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期刊论文
Ab-initio Membrane Protein Amphipathic Helix Structure Prediction Using Deep Neural Networks
IEEE/ACM Transactions on Computational Biology and Bioinformatics ( Early Access ),2020,():1 - 1 | 2020年10月07日 | 10.1109/TCBB.2020.3029274
Amphipathic helix (AH) features the segregation of polar and nonpolar residues and plays important roles in many membrane-associated biological processes through interacting with both the lipid and the soluble phases. Although the AH structure has been discovered for a long time, few ab initio machine learning-based prediction models have been reported, due to the limited amount of training data. In this study, we report a new deep learning-based prediction model, which is composed of a residual neural network and the uneven-thresholds decision algorithm. It is constructed on 121 membrane proteins, in total 51640 residue samples, which are curated from an up-to-date membrane protein structure database. Through a rigid 10-fold nested cross-validation experiment, we demonstrate that our model has exceeded the state-of-the-art approaches in this field. This presents a new avenue for accurately predicting AHs. Analysis on the contribution of the input residues and some cases further reveals the high interpretability and the generalization of our model.
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