4.7 Article

Neopepsee: accurate genome-level prediction of neoantigens by harnessing sequence and amino acid immunogenicity information

Journal

ANNALS OF ONCOLOGY
Volume 29, Issue 4, Pages 1030-1036

Publisher

ELSEVIER
DOI: 10.1093/annonc/mdy022

Keywords

cancer; classification; immunoinformatics; neoantigen; next-generation sequencing

Categories

Funding

  1. Basic Science Research Program through the National Research Foundation of Korea (NRF) - Ministry of Science, ICT AMP
  2. Future Planning [2015R1C1A1A01053638]
  3. National Research Foundation, the Ministry of Science, ICT AMP
  4. Future Planning [2013R1A3A2042197]
  5. Korea Health Technology RAMP
  6. D Projects through the Korea Health Industry Development Institute (KHIDI) - Ministry of Health AMP
  7. Welfare, Republic of Korea [HI14C1324]
  8. Yonsei University College of Medicine [6-2016-0081]
  9. Korea Health Promotion Institute [HR14C0005020018] Funding Source: Korea Institute of Science & Technology Information (KISTI), National Science & Technology Information Service (NTIS)
  10. National Research Foundation of Korea [2015R1C1A1A01053638] Funding Source: Korea Institute of Science & Technology Information (KISTI), National Science & Technology Information Service (NTIS)

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Background: Tumor-specific mutations form novel immunogenic peptides called neoantigens. Neoantigens can be used as a biomarker predicting patient response to cancer immunotherapy. Although a predicted binding affinity (IC50) between peptide and major histocompatibility complex class I is currently used for neoantigen prediction, large number of false-positives exist. Materials and methods: We developed Neopepsee, a machine-learning-based neoantigen prediction program for next-generation sequencing data. With raw RNA-seq data and a list of somatic mutations, Neopepsee automatically extracts mutated peptide sequences and gene expression levels. We tested 14 immunogenicity features to construct a machine-learning classifier and compared with the conventional methods based on IC50 regarding sensitivity and specificity. We tested Neopepsee on independent datasets from melanoma, leukemia, and stomach cancer. Results: Nine of the 14 immunogenicity features that are informative and inter-independent were used to construct the machine-learning classifiers. Neopepsee provides a rich annotation of candidate peptides with 8/ immunogenicity-related values, including IC50, expression levels of neopeptides and immune regulatory genes (e.g. PD1, PD-L1), matched epitope sequences, and a three-level (high, medium, and low) call for neoantigen probability. Compared with the conventional methods, the performance was improved in sensitivity and especially two-to threefold in the specificity. Tests with validated datasets and independently proven neoantigens confirmed the improved performance in melanoma and chronic lymphocytic leukemia. Additionally, we found sequence similarity in proteins to known pathogenic epitopes to be a novel feature in classification. Application of Neopepsee to 224 public stomach adenocarcinoma datasets predicted similar to/ neoantigens per patient, the burden of which was correlated with patient prognosis. Conclusions: Neopepsee can detect neoantigen candidates with less false positives and be used to determine the prognosis of the patient. We expect that retrieval of neoantigen sequences with Neopepsee will help advance research on next-generation cancer immunotherapies, predictive biomarkers, and personalized cancer vaccines.

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