| Literature DB >> 30556813 |
Brendan Bulik-Sullivan1, Jennifer Busby1, Christine D Palmer1, Matthew J Davis1, Tyler Murphy1, Andrew Clark1, Michele Busby1, Fujiko Duke1, Aaron Yang1, Lauren Young1, Noelle C Ojo1, Kamilah Caldwell1, Jesse Abhyankar1, Thomas Boucher1, Meghan G Hart1, Vladimir Makarov2, Vincent Thomas De Montpreville3, Olaf Mercier3, Timothy A Chan2, Giorgio Scagliotti4, Paolo Bironzo4, Silvia Novello4, Niki Karachaliou5, Rafael Rosell6, Ian Anderson7, Nashat Gabrail8, John Hrom9, Chainarong Limvarapuss10, Karin Choquette11, Alexander Spira11, Raphael Rousseau1, Cynthia Voong1, Naiyer A Rizvi12, Elie Fadel3, Mark Frattini12, Karin Jooss1, Mojca Skoberne1, Joshua Francis1, Roman Yelensky1.
Abstract
Neoantigens, which are expressed on tumor cells, are one of the main targets of an effective antitumor T-cell response. Cancer immunotherapies to target neoantigens are of growing interest and are in early human trials, but methods to identify neoantigens either require invasive or difficult-to-obtain clinical specimens, require the screening of hundreds to thousands of synthetic peptides or tandem minigenes, or are only relevant to specific human leukocyte antigen (HLA) alleles. We apply deep learning to a large (N = 74 patients) HLA peptide and genomic dataset from various human tumors to create a computational model of antigen presentation for neoantigen prediction. We show that our model, named EDGE, increases the positive predictive value of HLA antigen prediction by up to ninefold. We apply EDGE to enable identification of neoantigens and neoantigen-reactive T cells using routine clinical specimens and small numbers of synthetic peptides for most common HLA alleles. EDGE could enable an improved ability to develop neoantigen-targeted immunotherapies for cancer patients.Entities:
Year: 2018 PMID: 30556813 DOI: 10.1038/nbt.4313
Source DB: PubMed Journal: Nat Biotechnol ISSN: 1087-0156 Impact factor: 54.908