Peptide Search refers to the process of identifying and locating peptides within biological samples or databases. Peptides are short chains of amino acids, and their identification is essential in various areas of biological and medical research, including proteomics and drug discovery. Peptide search involves the use of computational tools and databases to match experimental or theoretical data with known peptides or to discover novel peptides.

Posts

Binding Peptide Generation for MHC Class I Proteins with Deep Reinforcement Learning

Binding Peptide Generation for MHC Class I Proteins with Deep Reinforcement Learning Motivation: MHC Class I protein plays an important role in immunotherapy by presenting immunogenic peptides to anti-tumor immune cells. The repertoires of peptides for various MHC Class I proteins are distinct, which can be reflected by their diverse binding motifs. To characterize binding motifs for MHC Class I proteins, in vitro experiments have been conducted to screen peptides with high binding affinities to hundreds of given MHC Class I proteins. However, considering tens of thousands of known MHC Class I proteins, conducting in vitro experiments for extensive MHC proteins is infeasible, and thus a more efficient and scalable way to characterize binding motifs is needed.Results: We presented a de novo generation framework, coined PepPPO, to characterize binding motif for any given MHC Class I proteins via generating repertoires of peptides presented by them. PepPPO leverages a reinforcement learning agent with a mutation policy to mutate random input peptides into positive presented ones. Using PepPPO, we characterized binding motifs for around 10 000 known human MHC Class I proteins with and without experimental for the rapid screening of neoantigens at a much lower time cost than previous deep-learning methods.