4.7 Article Proceedings Paper

DeepMHCII: a novel binding core-aware deep interaction model for accurate MHC-II peptide binding affinity prediction

期刊

BIOINFORMATICS
卷 38, 期 SUPPL 1, 页码 220-228

出版社

OXFORD UNIV PRESS
DOI: 10.1093/bioinformatics/btac225

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资金

  1. National Natural Science Foundation of China [61872094]
  2. Shanghai Municipal Science and Technology Major Project [2018SHZDZX01, 2017SHZDZX01]
  3. Shanghai Center for Brain Science and Brain-Inspired Technology
  4. 111 Project [B18015]
  5. Information Technology Facility, CAS-MPG Partner Institute for Computational Biology, Shanghai Institute for Biological Sciences, Chinese Academy of Sciences
  6. MEXT KAKENHI [19H04169, 20F20809, 21H05027, 22H03645]
  7. AIPSE program of the Academy of Finland
  8. ZJ Lab

向作者/读者索取更多资源

This study proposes a deep learning model, DeepMHCII, based on peptide binding cores and introduces a binding interaction convolution layer to better model the biological interactions between peptides and MHC II molecules. Extensive experiments demonstrate that DeepMHCII outperforms existing methods in terms of performance and can effectively predict binding cores.
Motivation: Computationally predicting major histocompatibility complex (MHC)-peptide binding affinity is an important problem in immunological bioinformatics. Recent cutting-edge deep learning-based methods for this problem are unable to achieve satisfactory performance for MHC class II molecules. This is because such methods generate the input by simply concatenating the two given sequences: (the estimated binding core of) a peptide and (the pseudo sequence of) an MHC class II molecule, ignoring biological knowledge behind the interactions of the two molecules. We thus propose a binding core-aware deep learning-based model, DeepMHCII, with a binding interaction convolution layer, which allows to integrate all potential binding cores (in a given peptide) with the MHC pseudo (binding) sequence, through modeling the interaction with multiple convolutional kernels. Results: Extensive empirical experiments with four large-scale datasets demonstrate that DeepMHCII significantly outperformed four state-of-the-art methods under numerous settings, such as 5-fold cross-validation, leave one molecule out, validation with independent testing sets and binding core prediction. All these results and visualization of the predicted binding cores indicate the effectiveness of our model, DeepMHCII, and the importance of properly modeling biological facts in deep learning for high predictive performance and efficient knowledge discovery.

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