The Accurate Prediction of Antibody Deamidations by Combining High-Throughput Automated Peptide Mapping and Protein Language Model-Based Deep Learning.

IF 3 Q3 IMMUNOLOGY
Antibodies Pub Date : 2024-09-10 DOI:10.3390/antib13030074
Ben Niu, Benjamin Lee, Lili Wang, Wen Chen, Jeffrey Johnson
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引用次数: 0

Abstract

Therapeutic antibodies such as monoclonal antibodies (mAbs), bispecific and multispecific antibodies are pivotal in therapeutic protein development and have transformed disease treatments across various therapeutic areas. The integrity of therapeutic antibodies, however, is compromised by sequence liabilities, notably deamidation, where asparagine (N) and glutamine (Q) residues undergo chemical degradations. Deamidation negatively impacts the efficacy, stability, and safety of diverse classes of antibodies, thus necessitating the critical need for the early and accurate identification of vulnerable sites. In this article, a comprehensive antibody deamidation-specific dataset (n = 2285) of varied modalities was created by using high-throughput automated peptide mapping followed by supervised machine learning to predict the deamidation propensities, as well as the extents, throughout the entire antibody sequences. We propose a novel chimeric deep learning model, integrating protein language model (pLM)-derived embeddings with local sequence information for enhanced deamidation predictions. Remarkably, this model requires only sequence inputs, eliminating the need for laborious feature engineering. Our approach demonstrates state-of-the-art performance, offering a streamlined workflow for high-throughput automated peptide mapping and deamidation prediction, with the potential of broader applicability to other antibody sequence liabilities.

结合高通量自动多肽图谱和基于蛋白质语言模型的深度学习,准确预测抗体脱酰胺。
治疗性抗体,如单克隆抗体(mAbs)、双特异性抗体和多特异性抗体,是治疗性蛋白质开发的关键,改变了各个治疗领域的疾病治疗方法。然而,治疗性抗体的完整性受到序列缺陷的影响,特别是脱酰胺作用,即天冬酰胺(N)和谷氨酰胺(Q)残基发生化学降解。脱酰胺作用会对各类抗体的疗效、稳定性和安全性产生负面影响,因此亟需尽早准确地识别易受影响的位点。在本文中,我们利用高通量自动肽图法创建了一个全面的抗体脱酰胺特异性数据集(n = 2285),该数据集包含各种不同的模式,然后利用监督机器学习预测整个抗体序列的脱酰胺倾向和程度。我们提出了一种新型嵌合深度学习模型,将蛋白质语言模型(pLM)生成的嵌入与局部序列信息整合在一起,以增强去酰胺化预测。值得注意的是,该模型只需要序列输入,无需进行费力的特征工程。我们的方法展示了最先进的性能,为高通量自动肽图和去酰胺化预测提供了简化的工作流程,并有可能更广泛地适用于其他抗体序列责任。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Antibodies
Antibodies IMMUNOLOGY-
CiteScore
7.10
自引率
6.40%
发文量
68
审稿时长
11 weeks
期刊介绍: Antibodies (ISSN 2073-4468), an international, peer-reviewed open access journal which provides an advanced forum for studies related to antibodies and antigens. It publishes reviews, research articles, communications and short notes. Our aim is to encourage scientists to publish their experimental and theoretical results in as much detail as possible. There is no restriction on the length of the papers. Full experimental and/or methodical details must be provided. Electronic files or software regarding the full details of the calculation and experimental procedure - if unable to be published in a normal way - can be deposited as supplementary material. This journal covers all topics related to antibodies and antigens, topics of interest include (but are not limited to): antibody-producing cells (including B cells), antibody structure and function, antibody-antigen interactions, Fc receptors, antibody manufacturing antibody engineering, antibody therapy, immunoassays, antibody diagnosis, tissue antigens, exogenous antigens, endogenous antigens, autoantigens, monoclonal antibodies, natural antibodies, humoral immune responses, immunoregulatory molecules.
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