作者
Xiaoshan M Shao, Rohit Bhattacharya, Justin Huang, IK Ashok Sivakumar, Collin Tokheim, Lily Zheng, Dylan Hirsch, Benjamin Kaminow, Ashton Omdahl, Maria Bonsack, Angelika B Riemer, Victor E Velculescu, Valsamo Anagnostou, Kymberleigh A Pagel, Rachel Karchin
发表日期
2020/3/1
期刊
Cancer immunology research
卷号
8
期号
3
页码范围
396-408
出版商
American Association for Cancer Research
简介
Computational prediction of binding between neoantigen peptides and major histocompatibility complex (MHC) proteins can be used to predict patient response to cancer immunotherapy. Current neoantigen predictors focus on in silico estimation of MHC binding affinity and are limited by low predictive value for actual peptide presentation, inadequate support for rare MHC alleles, and poor scalability to high-throughput data sets. To address these limitations, we developed MHCnuggets, a deep neural network method that predicts peptide–MHC binding. MHCnuggets can predict binding for common or rare alleles of MHC class I or II with a single neural network architecture. Using a long short-term memory network (LSTM), MHCnuggets accepts peptides of variable length and is faster than other methods. When compared with methods that integrate binding affinity and MHC-bound peptide (HLAp) data from …
引用总数
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XM Shao, R Bhattacharya, J Huang, IKA Sivakumar… - Cancer immunology research, 2020