Litcius/Paper detail

ConvNeXt-MHC: improving MHC–peptide affinity prediction by structure-derived degenerate coding and the ConvNeXt model

Le Zhang, Wenkai Song, Tinghao Zhu, Yang Liu, Wei Chen, Yang Cao

2024Briefings in Bioinformatics18 citationsDOIOpen Access PDF

Abstract

Peptide binding to major histocompatibility complex (MHC) proteins plays a critical role in T-cell recognition and the specificity of the immune response. Experimental validation such peptides is extremely resource-intensive. As a result, accurate computational prediction of binding peptides is highly important, particularly in the context of cancer immunotherapy applications, such as the identification of neoantigens. In recent years, there is a significant need to continually improve the existing prediction methods to meet the demands of this field. We developed ConvNeXt-MHC, a method for predicting MHC-I-peptide binding affinity. It introduces a degenerate encoding approach to enhance well-established panspecific methods and integrates transfer learning and semi-supervised learning methods into the cutting-edge deep learning framework ConvNeXt. Comprehensive benchmark results demonstrate that ConvNeXt-MHC outperforms state-of-the-art methods in terms of accuracy. We expect that ConvNeXt-MHC will help us foster new discoveries in the field of immunoinformatics in the distant future. We constructed a user-friendly website at http://www.combio-lezhang.online/predict/, where users can access our data and application.

Topics & Concepts

Major histocompatibility complexCoding (social sciences)Computational biologyComputer scienceDegenerate energy levelsArtificial intelligenceBiologyAntigenGeneticsMathematicsPhysicsStatisticsQuantum mechanicsvaccines and immunoinformatics approachesT-cell and B-cell ImmunologyImmunotherapy and Immune Responses