SCIENTIFIC PAPER

Methods behind neoantigen prediction for personalized anticancer vaccines

Godazandeh et al. – Methods in Cell Biology, 2023

Review of computational methods for neoantigen prediction in personalized anticancer vaccine development, covering MHC binding, presentation, and immunogenicity.

Abstract

Next to conventional cancer therapies, immunotherapies such as immune checkpoint inhibitors have broadened the cancer treatment landscape over the past decades. Recent advances in next generation sequencing and bioinformatics technologies have made it possible to identify a patient's own immunogenic neoantigens. These cancer neoantigens serve as important targets for personalized immunotherapy which has the benefit of being more active and effective in targeting cancer cells. This paper is a step-by-step guide discussing the different analyses and challenges encountered during in-silico neoantigen prediction. The protocol describes all the tools and steps required for the identification of immunogenic neoantigens.

DOI: 10.1016/bs.mcb.2023.05.002

neoantigen predictionpersonalized cancer vaccinesMHC bindingimmunogenicitycomputational immunologyHLA typingpeptide processingantigen discoverybioinformatics

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