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Deep generative models for T cell receptor protein sequences.


ABSTRACT: Probabilistic models of adaptive immune repertoire sequence distributions can be used to infer the expansion of immune cells in response to stimulus, differentiate genetic from environmental factors that determine repertoire sharing, and evaluate the suitability of various target immune sequences for stimulation via vaccination. Classically, these models are defined in terms of a probabilistic V(D)J recombination model which is sometimes combined with a selection model. In this paper we take a different approach, fitting variational autoencoder (VAE) models parameterized by deep neural networks to T cell receptor (TCR) repertoires. We show that simple VAE models can perform accurate cohort frequency estimation, learn the rules of VDJ recombination, and generalize well to unseen sequences. Further, we demonstrate that VAE-like models can distinguish between real sequences and sequences generated according to a recombination-selection model, and that many characteristics of VAE-generated sequences are similar to those of real sequences.

SUBMITTER: Davidsen K 

PROVIDER: S-EPMC6728137 | biostudies-literature | 2019 Sep

REPOSITORIES: biostudies-literature

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Deep generative models for T cell receptor protein sequences.

Davidsen Kristian K   Olson Branden J BJ   DeWitt William S WS   Feng Jean J   Harkins Elias E   Bradley Philip P   Matsen Frederick A FA  

eLife 20190905


Probabilistic models of adaptive immune repertoire sequence distributions can be used to infer the expansion of immune cells in response to stimulus, differentiate genetic from environmental factors that determine repertoire sharing, and evaluate the suitability of various target immune sequences for stimulation via vaccination. Classically, these models are defined in terms of a probabilistic V(D)J recombination model which is sometimes combined with a selection model. In this paper we take a d  ...[more]

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