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Graph-pMHC: graph neural network approach to MHC class II peptide presentation and antibody immunogenicity.


ABSTRACT: Antigen presentation on MHC class II (pMHCII presentation) plays an essential role in the adaptive immune response to extracellular pathogens and cancerous cells. But it can also reduce the efficacy of large-molecule drugs by triggering an anti-drug response. Significant progress has been made in pMHCII presentation modeling due to the collection of large-scale pMHC mass spectrometry datasets (ligandomes) and advances in machine learning. Here, we develop graph-pMHC, a graph neural network approach to predict pMHCII presentation. We derive adjacency matrices for pMHCII using Alphafold2-multimer and address the peptide-MHC binding groove alignment problem with a simple graph enumeration strategy. We demonstrate that graph-pMHC dramatically outperforms methods with suboptimal inductive biases, such as the multilayer-perceptron-based NetMHCIIpan-4.0 (+20.17% absolute average precision). Finally, we create an antibody drug immunogenicity dataset from clinical trial data and develop a method for measuring anti-antibody immunogenicity risk using pMHCII presentation models. Our model increases receiver operating characteristic curve (ROC)-area under the ROC curve (AUC) by 2.57% compared to just filtering peptides by hits in OASis alone for predicting antibody drug immunogenicity.

SUBMITTER: Thrift WJ 

PROVIDER: S-EPMC10981672 | biostudies-literature | 2024 Mar

REPOSITORIES: biostudies-literature

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Graph-pMHC: graph neural network approach to MHC class II peptide presentation and antibody immunogenicity.

Thrift William John WJ   Perera Jason J   Cohen Sivan S   Lounsbury Nicolas W NW   Gurung Hem R HR   Rose Christopher M CM   Chen Jieming J   Jhunjhunwala Suchit S   Liu Kai K  

Briefings in bioinformatics 20240301 3


Antigen presentation on MHC class II (pMHCII presentation) plays an essential role in the adaptive immune response to extracellular pathogens and cancerous cells. But it can also reduce the efficacy of large-molecule drugs by triggering an anti-drug response. Significant progress has been made in pMHCII presentation modeling due to the collection of large-scale pMHC mass spectrometry datasets (ligandomes) and advances in machine learning. Here, we develop graph-pMHC, a graph neural network appro  ...[more]

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