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On Pre-trained Language Models for Antibody

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arxiv 2301.12112 v2 pith:LOXEPCSZ submitted 2023-01-28 cs.CL q-bio.BM

On Pre-trained Language Models for Antibody

classification cs.CL q-bio.BM
keywords antibodypre-trainedlanguagemodelstasksansweratuebenchmark
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Antibodies are vital proteins offering robust protection for the human body from pathogens. The development of general protein and antibody-specific pre-trained language models both facilitate antibody prediction tasks. However, there have been limited studies that comprehensively explore the representation capability of distinct pre-trained language models on different antibody tasks. To investigate the problem, we aim to answer several key questions in this paper, such as how pre-trained language models perform in antibody tasks with different specificity and how introducing specific biological mechanisms to the pre-training process can benefit the model. Additionally, we evaluate if the learned antibody pre-trained representations can be applied to real-world antibody problems, like drug discovery and immune process understanding. Previously, no benchmark available largely hindered the study to answer these questions. To aid in our investigation, we provide an AnTibody Understanding Evaluation (ATUE) benchmark. We comprehensively evaluate the performance of protein pre-trained language models by empirical study along with conclusions and new insights. Our ATUE and code are released at https://github.com/dqwang122/EATLM.

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