MARS an improved de novo peptide candidate selection method for non-canonical antigen target discovery in cancer

Author:

Liao Hanqing,Barra CarolinaORCID,Zhou ZhichengORCID,Peng Xu,Woodhouse IsaacORCID,Tailor ArunORCID,Parker Robert,Carré AlexiaORCID,Borrow PersephoneORCID,Hogan Michael J.ORCID,Paes WayneORCID,Eisenlohr Laurence C.ORCID,Mallone RobertoORCID,Nielsen MortenORCID,Ternette NicolaORCID

Abstract

AbstractUnderstanding the nature and extent of non-canonical human leukocyte antigen (HLA) presentation in tumour cells is a priority for target antigen discovery for the development of next generation immunotherapies in cancer. We here employ a de novo mass spectrometric sequencing approach with a refined, MHC-centric analysis strategy to detect non-canonical MHC-associated peptides specific to cancer without any prior knowledge of the target sequence from genomic or RNA sequencing data. Our strategy integrates MHC binding rank, Average local confidence scores, and peptide Retention time prediction for improved de novo candidate Selection; culminating in the machine learning model MARS. We benchmark our model on a large synthetic peptide library dataset and reanalysis of a published dataset of high-quality non-canonical MHC-associated peptide identifications in human cancer. We achieve almost 2-fold improvement for high quality spectral assignments in comparison to de novo sequencing alone with an estimated accuracy of above 85.7% when integrated with a stepwise peptide sequence mapping strategy. Finally, we utilize MARS to detect and validate lncRNA-derived peptides in human cervical tumour resections, demonstrating its suitability to discover novel, immunogenic, non-canonical peptide sequences in primary tumour tissue.

Funder

Leona M. and Harry B. Helmsley Charitable Trust

European Association for the Study of Diabetes

Cancer Research UK

Wellcome Trust

RCUK | MRC | Medical Research Foundation

DH | National Institute for Health Research

Publisher

Springer Science and Business Media LLC

Subject

General Physics and Astronomy,General Biochemistry, Genetics and Molecular Biology,General Chemistry,Multidisciplinary

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