Improving antibody language models with native pairing

IF 6.7 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Patterns Pub Date : 2024-04-04 DOI:10.1016/j.patter.2024.100967
Sarah M. Burbach, Bryan Briney
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引用次数: 0

Abstract

Existing antibody language models are limited by their use of unpaired antibody sequence data. A recently published dataset of ∼1.6 × 106 natively paired human antibody sequences offers a unique opportunity to evaluate how antibody language models are improved by training with native pairs. We trained three baseline antibody language models (BALM), using natively paired (BALM-paired), randomly-paired (BALM-shuffled), or unpaired (BALM-unpaired) sequences from this dataset. To address the paucity of paired sequences, we additionally fine-tuned ESM (evolutionary scale modeling)-2 with natively paired antibody sequences (ft-ESM). We provide evidence that training with native pairs allows the model to learn immunologically relevant features that span the light and heavy chains, which cannot be simulated by training with random pairs. We additionally show that training with native pairs improves model performance on a variety of metrics, including the ability of the model to classify antibodies by pathogen specificity.

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利用母语配对改进抗体语言模型
现有的抗体语言模型由于使用未配对的抗体序列数据而受到限制。最近发表的 1.6 × 106 ∼原生配对人类抗体序列数据集提供了一个独特的机会来评估抗体语言模型如何通过使用原生配对进行训练而得到改进。我们使用该数据集中的原生配对(BALM-paired)、随机配对(BALM-shuffled)或未配对(BALM-unpaired)序列训练了三种基线抗体语言模型(BALM)。为了解决配对序列不足的问题,我们还利用原生配对抗体序列(ft-ESM)对ESM(进化尺度建模)-2进行了微调。我们提供的证据表明,使用原生配对序列进行训练可使模型学习到跨越轻链和重链的免疫学相关特征,而使用随机配对序列进行训练则无法模拟这些特征。此外,我们还证明了用原生配对进行训练能提高模型在各种指标上的性能,包括模型按病原体特异性对抗体进行分类的能力。
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来源期刊
Patterns
Patterns Decision Sciences-Decision Sciences (all)
CiteScore
10.60
自引率
4.60%
发文量
153
审稿时长
19 weeks
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