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Machine learning predictions of T cell antigen specificity from intracellular calcium dynamics

Sébastien This, Santiago Costantino, Heather J. Melichar

2024Science Advances12 citationsDOIOpen Access PDF

Abstract

Adoptive T cell therapies rely on the production of T cells with an antigen receptor that directs their specificity toward tumor-specific antigens. Methods for identifying relevant T cell receptor (TCR) sequences, predominantly achieved through the enrichment of antigen-specific T cells, represent a major bottleneck in the production of TCR-engineered cell therapies. Fluctuation of intracellular calcium is a proximal readout of TCR signaling and candidate marker for antigen-specific T cell identification that does not require T cell expansion; however, calcium fluctuations downstream of TCR engagement are highly variable. We propose that machine learning algorithms may allow for T cell classification from complex datasets such as polyclonal T cell signaling events. Using deep learning tools, we demonstrate accurate prediction of TCR-transgenic CD8 + T cell activation based on calcium fluctuations and test the algorithm against T cells bearing a distinct TCR as well as polyclonal T cells. This provides the foundation for an antigen-specific TCR sequence identification pipeline for adoptive T cell therapies.

Topics & Concepts

T-cell receptorAntigenCytotoxic T cellPolyclonal antibodiesT cellCell biologyBiologyCD8ImmunologyBiochemistryImmune systemIn vitroCAR-T cell therapy researchvaccines and immunoinformatics approachesT-cell and B-cell Immunology
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