Unfolded HLA class I α chains and their use in an assay of HLA class-I-peptide binding

1993 ◽  
Vol 36 (2) ◽  
pp. 119-127 ◽  
Author(s):  
Nobuyuki Tanigaki ◽  
Doriana Fruci ◽  
Alberto Chersi ◽  
Richard H. Butler
Keyword(s):  
2020 ◽  
Vol 21 (4) ◽  
pp. 1119-1135 ◽  
Author(s):  
Shutao Mei ◽  
Fuyi Li ◽  
André Leier ◽  
Tatiana T Marquez-Lago ◽  
Kailin Giam ◽  
...  

Abstract Human leukocyte antigen class I (HLA-I) molecules are encoded by major histocompatibility complex (MHC) class I loci in humans. The binding and interaction between HLA-I molecules and intracellular peptides derived from a variety of proteolytic mechanisms play a crucial role in subsequent T-cell recognition of target cells and the specificity of the immune response. In this context, tools that predict the likelihood for a peptide to bind to specific HLA class I allotypes are important for selecting the most promising antigenic targets for immunotherapy. In this article, we comprehensively review a variety of currently available tools for predicting the binding of peptides to a selection of HLA-I allomorphs. Specifically, we compare their calculation methods for the prediction score, employed algorithms, evaluation strategies and software functionalities. In addition, we have evaluated the prediction performance of the reviewed tools based on an independent validation data set, containing 21 101 experimentally verified ligands across 19 HLA-I allotypes. The benchmarking results show that MixMHCpred 2.0.1 achieves the best performance for predicting peptides binding to most of the HLA-I allomorphs studied, while NetMHCpan 4.0 and NetMHCcons 1.1 outperform the other machine learning-based and consensus-based tools, respectively. Importantly, it should be noted that a peptide predicted with a higher binding score for a specific HLA allotype does not necessarily imply it will be immunogenic. That said, peptide-binding predictors are still very useful in that they can help to significantly reduce the large number of epitope candidates that need to be experimentally verified. Several other factors, including susceptibility to proteasome cleavage, peptide transport into the endoplasmic reticulum and T-cell receptor repertoire, also contribute to the immunogenicity of peptide antigens, and some of them can be considered by some predictors. Therefore, integrating features derived from these additional factors together with HLA-binding properties by using machine-learning algorithms may increase the prediction accuracy of immunogenic peptides. As such, we anticipate that this review and benchmarking survey will assist researchers in selecting appropriate prediction tools that best suit their purposes and provide useful guidelines for the development of improved antigen predictors in the future.


2004 ◽  
Vol 61 (1) ◽  
Author(s):  
Jan H. Kessler ◽  
Willemien E. Benckhuijsen ◽  
Tuna Mutis ◽  
Cornelis J.M. Melief ◽  
Sjoerd H. Burg ◽  
...  

2016 ◽  
Vol 68 (3) ◽  
pp. 231-236 ◽  
Author(s):  
John Sidney ◽  
Jennifer Schloss ◽  
Carrie Moore ◽  
Mikaela Lindvall ◽  
Amanda Wriston ◽  
...  

1995 ◽  
Vol 44 (4) ◽  
pp. 189-198 ◽  
Author(s):  
S.H. van der Burg ◽  
E. Ras ◽  
J.W. Drijfhout ◽  
W.E. Benckhuijsen ◽  
A.J.A. Bremers ◽  
...  

2016 ◽  
Vol 68 (6-7) ◽  
pp. 401-416 ◽  
Author(s):  
Stéphane Buhler ◽  
José Manuel Nunes ◽  
Alicia Sanchez-Mazas

2017 ◽  
Author(s):  
Yeeleng S. Vang ◽  
Xiaohui Xie

AbstractMany biological processes are governed by protein-ligand interactions. One such example is the recognition of self and non-self cells by the immune system. This immune response process is regulated by the major histocompatibility complex (MHC) protein which is encoded by the human leukocyte antigen (HLA) complex. Understanding the binding potential between MHC and peptides can lead to the design of more potent, peptide-based vaccines and immunotherapies for infectious autoimmune diseases.We apply machine learning techniques from the natural language processing (NLP) domain to address the task of MHC-peptide binding prediction. More specifically, we introduce a new distributed representation of amino acids, name HLA-Vec, that can be used for a variety of downstream proteomic machine learning tasks. We then propose a deep convolutional neural network architecture, name HLA-CNN, for the task of HLA class I-peptide binding prediction. Experimental results show combining the new distributed representation with our HLA-CNN architecture acheives state-of-the-art results in the majority of the latest two Immune Epitope Database (IEDB) weekly automated benchmark datasets. We further apply our model to predict binding on the human genome and identify 15 genes with potential for self binding. Codes are available at https://github.com/uci-cbcl/HLA-bind.


Author(s):  
Andrea T. Nguyen ◽  
Christopher Szeto ◽  
Stephanie Gras

Human leukocyte antigens (HLA) are cell-surface proteins that present peptides to T cells. These peptides are bound within the peptide binding cleft of HLA, and together as a complex, are recognised by T cells using their specialised T cell receptors. Within the cleft, the peptide residue side chains bind into distinct pockets. These pockets ultimately determine the specificity of peptide binding. As HLAs are the most polymorphic molecules in humans, amino acid variants in each binding pocket influences the peptide repertoire that can be presented on the cell surface. Here, we review each of the 6 HLA binding pockets of HLA class I (HLA-I) molecules. The binding specificity of pockets B and F are strong determinants of peptide binding and have been used to classify HLA into supertypes, a useful tool to predict peptide binding to a given HLA. Over the years, peptide binding prediction has also become more reliable by using binding affinity and mass spectrometry data. Crystal structures of peptide-bound HLA molecules provide a means to interrogate the interactions between binding pockets and peptide residue side chains. We find that most of the bound peptides from these structures conform to binding motifs determined from prediction software and examine outliers to learn how these HLAs are stabilised from a structural perspective.


2011 ◽  
Vol 374 (1-2) ◽  
pp. 47-52 ◽  
Author(s):  
Xihao Hu ◽  
Hiroshi Mamitsuka ◽  
Shanfeng Zhu

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