通过机器学习从抗体序列数据中预测多特异性

Szabolcs Éliás, Clemens Wrzodek, Charlotte M. Deane, Alain C. Tissot, Stefan Klostermann, Francesca Ros
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引用次数: 0

摘要

抗体在自然界中的产生具有极大的多样性,从而产生了一系列分子,每种分子都经过优化,可与特定靶点结合。利用抗体的多样性和特异性,抗体在最近开发的生物药物中占了很大一部分。在治疗用途上,抗体需要满足几个标准才能安全有效。多特异性抗体除了能与主要靶点结合外,还能与结构上不相关的分子结合,这可能会导致副作用和治疗效果下降,例如降低有效药物水平。因此,我们创建了一个基于神经网络的模型,利用重链可变区序列作为输入来预测抗体的多特异性。我们设计了一种策略,从免疫活动中富集具有抗原特异性或多特异性结合特性的抗体,然后生成一个大型测序数据集,用于模型的训练和交叉验证。通过研究该模型的行为,我们确定了影响多特异性的重要物理化学特征。这项工作是一种基于机器学习的多特异性预测方法,除了增加我们对多特异性的了解,还可能有助于治疗性抗体的开发。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of polyspecificity from antibody sequence data by machine learning
Antibodies are generated with great diversity in nature resulting in a set of molecules, each optimized to bind a specific target. Taking advantage of their diversity and specificity, antibodies make up for a large part of recently developed biologic drugs. For therapeutic use antibodies need to fulfill several criteria to be safe and efficient. Polyspecific antibodies can bind structurally unrelated molecules in addition to their main target, which can lead to side effects and decreased efficacy in a therapeutic setting, for example via reduction of effective drug levels. Therefore, we created a neural-network-based model to predict polyspecificity of antibodies using the heavy chain variable region sequence as input. We devised a strategy for enriching antibodies from an immunization campaign either for antigen-specific or polyspecific binding properties, followed by generation of a large sequencing data set for training and cross-validation of the model. We identified important physico-chemical features influencing polyspecificity by investigating the behaviour of this model. This work is a machine-learning-based approach to polyspecificity prediction and, besides increasing our understanding of polyspecificity, it might contribute to therapeutic antibody development.
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