Literature DB >> 31871119

High-Throughput Prediction of MHC Class I and II Neoantigens with MHCnuggets.

Xiaoshan M Shao1,2, Rohit Bhattacharya1,3, Justin Huang1,3, I K Ashok Sivakumar1,3,4, Collin Tokheim1,2, Lily Zheng1,5, Dylan Hirsch1,2, Benjamin Kaminow1,6, Ashton Omdahl1,2, Maria Bonsack7,8,9, Angelika B Riemer7,8, Victor E Velculescu1,5,10, Valsamo Anagnostou10, Kymberleigh A Pagel1,2, Rachel Karchin11,2,10.   

Abstract

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 mass spectrometry, MHCnuggets yields a 4-fold increase in positive predictive value on independent HLAp data. We applied MHCnuggets to 26 cancer types in The Cancer Genome Atlas, processing 26.3 million allele-peptide comparisons in under 2.3 hours, yielding 101,326 unique predicted immunogenic missense mutations (IMM). Predicted IMM hotspots occurred in 38 genes, including 24 driver genes. Predicted IMM load was significantly associated with increased immune cell infiltration (P < 2 × 10-16), including CD8+ T cells. Only 0.16% of predicted IMMs were observed in more than 2 patients, with 61.7% of these derived from driver mutations. Thus, we describe a method for neoantigen prediction and its performance characteristics and demonstrate its utility in data sets representing multiple human cancers. ©2019 American Association for Cancer Research.

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Year:  2019        PMID: 31871119      PMCID: PMC7056596          DOI: 10.1158/2326-6066.CIR-19-0464

Source DB:  PubMed          Journal:  Cancer Immunol Res        ISSN: 2326-6066            Impact factor:   12.020


  58 in total

1.  Reliable prediction of T-cell epitopes using neural networks with novel sequence representations.

Authors:  Morten Nielsen; Claus Lundegaard; Peder Worning; Sanne Lise Lauemøller; Kasper Lamberth; Søren Buus; Søren Brunak; Ole Lund
Journal:  Protein Sci       Date:  2003-05       Impact factor: 6.725

2.  Automated benchmarking of peptide-MHC class I binding predictions.

Authors:  Thomas Trolle; Imir G Metushi; Jason A Greenbaum; Yohan Kim; John Sidney; Ole Lund; Alessandro Sette; Bjoern Peters; Morten Nielsen
Journal:  Bioinformatics       Date:  2015-02-25       Impact factor: 6.937

3.  Neoantigen screening identifies broad TP53 mutant immunogenicity in patients with epithelial cancers.

Authors:  Parisa Malekzadeh; Anna Pasetto; Paul F Robbins; Maria R Parkhurst; Biman C Paria; Li Jia; Jared J Gartner; Victoria Hill; Zhiya Yu; Nicholas P Restifo; Abraham Sachs; Eric Tran; Winifred Lo; Robert Pt Somerville; Steven A Rosenberg; Drew C Deniger
Journal:  J Clin Invest       Date:  2019-02-04       Impact factor: 14.808

4.  Immunogenicity of somatic mutations in human gastrointestinal cancers.

Authors:  Eric Tran; Mojgan Ahmadzadeh; Yong-Chen Lu; Alena Gros; Simon Turcotte; Paul F Robbins; Jared J Gartner; Zhili Zheng; Yong F Li; Satyajit Ray; John R Wunderlich; Robert P Somerville; Steven A Rosenberg
Journal:  Science       Date:  2015-10-29       Impact factor: 47.728

5.  Functional classification of class II human leukocyte antigen (HLA) molecules reveals seven different supertypes and a surprising degree of repertoire sharing across supertypes.

Authors:  Jason Greenbaum; John Sidney; Jolan Chung; Christian Brander; Bjoern Peters; Alessandro Sette
Journal:  Immunogenetics       Date:  2011-02-09       Impact factor: 2.846

6.  Antibody-based targeting of FGFR3 in bladder carcinoma and t(4;14)-positive multiple myeloma in mice.

Authors:  Jing Qing; Xiangnan Du; Yongmei Chen; Pamela Chan; Hao Li; Ping Wu; Scot Marsters; Scott Stawicki; Janet Tien; Klara Totpal; Sarajane Ross; Susanna Stinson; David Dornan; Dorothy French; Qian-Rena Wang; Jean-Philippe Stephan; Yan Wu; Christian Wiesmann; Avi Ashkenazi
Journal:  J Clin Invest       Date:  2009-04-20       Impact factor: 14.808

7.  Profiling Tumor Infiltrating Immune Cells with CIBERSORT.

Authors:  Binbin Chen; Michael S Khodadoust; Chih Long Liu; Aaron M Newman; Ash A Alizadeh
Journal:  Methods Mol Biol       Date:  2018

8.  NetMHCpan, a method for MHC class I binding prediction beyond humans.

Authors:  Ilka Hoof; Bjoern Peters; John Sidney; Lasse Eggers Pedersen; Alessandro Sette; Ole Lund; Søren Buus; Morten Nielsen
Journal:  Immunogenetics       Date:  2008-11-12       Impact factor: 2.846

9.  Deciphering HLA-I motifs across HLA peptidomes improves neo-antigen predictions and identifies allostery regulating HLA specificity.

Authors:  Michal Bassani-Sternberg; Chloé Chong; Philippe Guillaume; Marthe Solleder; HuiSong Pak; Philippe O Gannon; Lana E Kandalaft; George Coukos; David Gfeller
Journal:  PLoS Comput Biol       Date:  2017-08-23       Impact factor: 4.475

10.  pVAC-Seq: A genome-guided in silico approach to identifying tumor neoantigens.

Authors:  Jasreet Hundal; Beatriz M Carreno; Allegra A Petti; Gerald P Linette; Obi L Griffith; Elaine R Mardis; Malachi Griffith
Journal:  Genome Med       Date:  2016-01-29       Impact factor: 11.117

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  24 in total

Review 1.  Targeting public neoantigens for cancer immunotherapy.

Authors:  Alexander H Pearlman; Michael S Hwang; Maximilian F Konig; Emily Han-Chung Hsiue; Jacqueline Douglass; Sarah R DiNapoli; Brian J Mog; Chetan Bettegowda; Drew M Pardoll; Sandra B Gabelli; Nicholas Papadopoulos; Kenneth W Kinzler; Bert Vogelstein; Shibin Zhou
Journal:  Nat Cancer       Date:  2021-05-17

Review 2.  Artificial Intelligence-Based Data-Driven Strategy to Accelerate Research, Development, and Clinical Trials of COVID Vaccine.

Authors:  Ashwani Sharma; Tarun Virmani; Vipluv Pathak; Anjali Sharma; Kamla Pathak; Girish Kumar; Devender Pathak
Journal:  Biomed Res Int       Date:  2022-07-06       Impact factor: 3.246

Review 3.  Computational cancer neoantigen prediction: current status and recent advances.

Authors:  G Fotakis; Z Trajanoski; D Rieder
Journal:  Immunooncol Technol       Date:  2021-11-20

4.  pVACtools: A Computational Toolkit to Identify and Visualize Cancer Neoantigens.

Authors:  Jasreet Hundal; Susanna Kiwala; Joshua McMichael; Christopher A Miller; Huiming Xia; Alexander T Wollam; Connor J Liu; Sidi Zhao; Yang-Yang Feng; Aaron P Graubert; Amber Z Wollam; Jonas Neichin; Megan Neveau; Jason Walker; William E Gillanders; Elaine R Mardis; Obi L Griffith; Malachi Griffith
Journal:  Cancer Immunol Res       Date:  2020-01-06       Impact factor: 11.151

Review 5.  Optimizing Radiation Therapy to Boost Systemic Immune Responses in Breast Cancer: A Critical Review for Breast Radiation Oncologists.

Authors:  Alice Y Ho; Jean L Wright; Rachel C Blitzblau; Robert W Mutter; Dan G Duda; Larry Norton; Aditya Bardia; Laura Spring; Steven J Isakoff; Jonathan H Chen; Clemens Grassberger; Jennifer R Bellon; Sushil Beriwal; Atif J Khan; Corey Speers; Samantha A Dunn; Alastair Thompson; Cesar A Santa-Maria; Ian E Krop; Elizabeth Mittendorf; Tari A King; Gaorav P Gupta
Journal:  Int J Radiat Oncol Biol Phys       Date:  2020-05-14       Impact factor: 7.038

6.  The Genetic Evolution of Treatment-Resistant Cutaneous, Acral, and Uveal Melanomas.

Authors:  Alvin P Makohon-Moore; Evan J Lipson; Jody E Hooper; Amanda Zucker; Jungeui Hong; Craig M Bielski; Akimasa Hayashi; Collin Tokheim; Priscilla Baez; Rajya Kappagantula; Zachary Kohutek; Vladimir Makarov; Nadeem Riaz; Michael A Postow; Paul B Chapman; Rachel Karchin; Nicholas D Socci; David B Solit; Timothy A Chan; Barry S Taylor; Suzanne L Topalian; Christine A Iacobuzio-Donahue
Journal:  Clin Cancer Res       Date:  2020-12-15       Impact factor: 13.801

7.  NetMHCpan-4.1 and NetMHCIIpan-4.0: improved predictions of MHC antigen presentation by concurrent motif deconvolution and integration of MS MHC eluted ligand data.

Authors:  Birkir Reynisson; Bruno Alvarez; Sinu Paul; Bjoern Peters; Morten Nielsen
Journal:  Nucleic Acids Res       Date:  2020-07-02       Impact factor: 16.971

8.  Human Leukocyte Antigen Susceptibility Map for Severe Acute Respiratory Syndrome Coronavirus 2.

Authors:  Austin Nguyen; Julianne K David; Sean K Maden; Mary A Wood; Benjamin R Weeder; Abhinav Nellore; Reid F Thompson
Journal:  J Virol       Date:  2020-06-16       Impact factor: 5.103

9.  Unbiased Characterization of Peptide-HLA Class II Interactions Based on Large-Scale Peptide Microarrays; Assessment of the Impact on HLA Class II Ligand and Epitope Prediction.

Authors:  Mareike Wendorff; Heli M Garcia Alvarez; Thomas Østerbye; Hesham ElAbd; Elisa Rosati; Frauke Degenhardt; Søren Buus; Andre Franke; Morten Nielsen
Journal:  Front Immunol       Date:  2020-08-05       Impact factor: 7.561

10.  Integrative Tumor and Immune Cell Multi-omic Analyses Predict Response to Immune Checkpoint Blockade in Melanoma.

Authors:  Valsamo Anagnostou; Daniel C Bruhm; Noushin Niknafs; James R White; Xiaoshan M Shao; John William Sidhom; Julie Stein; Hua-Ling Tsai; Hao Wang; Zineb Belcaid; Joseph Murray; Archana Balan; Leonardo Ferreira; Petra Ross-Macdonald; Megan Wind-Rotolo; Alexander S Baras; Janis Taube; Rachel Karchin; Robert B Scharpf; Catherine Grasso; Antoni Ribas; Drew M Pardoll; Suzanne L Topalian; Victor E Velculescu
Journal:  Cell Rep Med       Date:  2020-11-17
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