Computational Prediction of Single-Domain Immunoglobulin Aggregation Propensities Facilitates Discovery and Humanization of Recombinant Nanobodies.

IF 2.7 Q3 IMMUNOLOGY
Antibodies Pub Date : 2025-08-28 DOI:10.3390/antib14030073
Felix Klaus Geyer, Julian Borbeck, Wiktoria Palka, Xueyuan Zhou, Jeffrey Takimoto, Brian Rabinovich, Bernd Reifenhäuser, Karlheinz Friedrich, Harald Kolmar
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引用次数: 0

Abstract

Background/objectives: Single-domain immunoglobulins are small protein modules with specific affinities. Among them, the variable domains of heavy chains of heavy-chain-only antibodies (VHH) as the antigen-binding fragment of heavy-chain-only antibodies (also termed nanobodies) have been widely investigated for their applicability, e.g., therapeutics and immunodiagnostics. However, despite their advantageous biochemical and biophysical characteristics, protein aggregation throughout recombinant synthesis is a serious drawback in the development of nanobodies with application perspectives. Therefore, we aimed to develop a computational method to predict the aggregation propensity of VHH antibodies for the selection of promising candidates in early discovery.

Methods: We employed a deep learning-based structure prediction for VHHs and derived from it likely biophysical and biochemical properties of the framework region 2 with relevance for aggregation. A total of 106 nanobody variants were produced by recombinant expression and characterized for their aggregation behavior using size exclusion chromatography (SEC).

Results: Quantitative characteristics of framework region 2 patches were combined into a function that defines an aggregation score (AS) predicting the aggregation propensities of VHH variants. AS was evaluated for its capability to forecast recombinant VHH aggregation by experimentally studying VHH Fc-fusion proteins for their aggregation. We observed a clear correlation between the calculated aggregation score and the actual aggregation propensities of biochemically characterized VHHs Fc-fusion proteins. Moreover, we implemented an easily accessible pipeline of software modules to design nanobodies with desired solubility properties.

Conclusions: AI-based prediction of VHH structures, followed by analysis of framework region 2 properties, can be used to predict the aggregation propensities of VHHs, providing a convenient and efficient tool for selecting stable recombinant nanobodies.

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单域免疫球蛋白聚集倾向的计算预测有助于重组纳米体的发现和人源化。
背景/目的:单域免疫球蛋白是具有特定亲和力的小蛋白模块。其中,仅重链抗体(VHH)的可变结构域作为仅重链抗体(也称为纳米体)的抗原结合片段,因其在治疗学和免疫诊断等方面的适用性而受到广泛研究。然而,尽管纳米体具有良好的生物化学和生物物理特性,但在重组合成过程中蛋白质聚集是纳米体发展的一个严重缺陷。因此,我们旨在开发一种计算方法来预测VHH抗体的聚集倾向,以便在早期发现时选择有希望的候选抗体。方法:我们采用基于深度学习的vhs结构预测,并从中得出与聚集相关的框架区域2的生物物理和生化特性。通过重组表达共产生106个纳米体变体,并利用大小排斥色谱(SEC)对其聚集行为进行了表征。结果:框架区域2斑块的数量特征被合并成一个函数,该函数定义了一个预测VHH变异聚集倾向的聚集评分(AS)。通过实验研究VHH fc融合蛋白的聚集情况,对AS预测重组VHH聚集的能力进行了评估。我们观察到计算的聚集得分与生物化学表征的vhs fc融合蛋白的实际聚集倾向之间存在明显的相关性。此外,我们实现了一个易于访问的软件模块管道,以设计具有所需溶解度特性的纳米体。结论:基于人工智能的VHH结构预测和框架区2性质分析可用于预测VHH的聚集倾向,为选择稳定的重组纳米体提供了方便和高效的工具。
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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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