2024
DOI: 10.1093/bib/bbae420
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BertTCR: a Bert-based deep learning framework for predicting cancer-related immune status based on T cell receptor repertoire

Min Zhang,
Qi Cheng,
Zhenyu Wei
et al.

Abstract: The T cell receptor (TCR) repertoire is pivotal to the human immune system, and understanding its nuances can significantly enhance our ability to forecast cancer-related immune responses. However, existing methods often overlook the intra- and inter-sequence interactions of T cell receptors (TCRs), limiting the development of sequence-based cancer-related immune status predictions. To address this challenge, we propose BertTCR, an innovative deep learning framework designed to predict cancer-related immune st… Show more

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