EvoNB: A protein language model-based workflow for nanobody mutation prediction and optimization.

Journal of pharmaceutical analysis Pub Date : 2025-06-01 Epub Date: 2025-03-10 DOI:10.1016/j.jpha.2025.101260
Danyang Xiong, Yongfan Ming, Yuting Li, Shuhan Li, Kexin Chen, Jinfeng Liu, Lili Duan, Honglin Li, Min Li, Xiao He
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Abstract

The identification and optimization of mutations in nanobodies are crucial for enhancing their therapeutic potential in disease prevention and control. However, this process is often complex and time-consuming, which limit its widespread application in practice. In this study, we developed a workflow, named Evolutionary-Nanobody (EvoNB), to predict key mutation sites of nanobodies by combining protein language models (PLMs) and molecular dynamic (MD) simulations. By fine-tuning the ESM2 model on a large-scale nanobody dataset, the ability of EvoNB to capture specific sequence features of nanobodies was significantly enhanced. The fine-tuned EvoNB model demonstrated higher predictive accuracy in the conserved framework and highly variable complementarity-determining regions of nanobodies. Additionally, we selected four widely representative nanobody-antigen complexes to verify the predicted effects of mutations. MD simulations analyzed the energy changes caused by these mutations to predict their impact on binding affinity to the targets. The results showed that multiple mutations screened by EvoNB significantly enhanced the binding affinity between nanobody and its target, further validating the potential of this workflow for designing and optimizing nanobody mutations. Additionally, sequence-based predictions are generally less dependent on structural absence, allowing them to be more easily integrated with tools for structural predictions, such as AlphaFold 3. Through mutation prediction and systematic analysis of key sites, we can quickly predict the most promising variants for experimental validation without relying on traditional evolutionary or selection processes. The EvoNB workflow provides an effective tool for the rapid optimization of nanobodies and facilitates the application of PLMs in the biomedical field.

EvoNB:基于蛋白质语言模型的纳米体突变预测和优化工作流程。
纳米体突变的鉴定和优化对于提高其在疾病预防和控制中的治疗潜力至关重要。然而,这一过程往往复杂且耗时,限制了其在实践中的广泛应用。在这项研究中,我们开发了一个名为evolution - nanobody (EvoNB)的工作流程,通过结合蛋白质语言模型(PLMs)和分子动力学(MD)模拟来预测纳米体的关键突变位点。通过在大规模纳米体数据集上对ESM2模型进行微调,EvoNB捕获纳米体特定序列特征的能力显著增强。经过微调的EvoNB模型在纳米体的保守框架和高度可变的互补性决定区域显示出更高的预测精度。此外,我们选择了四种具有广泛代表性的纳米体抗原复合物来验证突变的预测效应。MD模拟分析了这些突变引起的能量变化,以预测它们对靶标结合亲和力的影响。结果表明,EvoNB筛选的多个突变显著增强了纳米体与其靶点之间的结合亲和力,进一步验证了该工作流程在设计和优化纳米体突变方面的潜力。此外,基于序列的预测通常较少依赖于结构缺失,这使得它们更容易与用于结构预测的工具集成,例如AlphaFold 3。通过突变预测和关键位点的系统分析,我们可以快速预测最有希望进行实验验证的变异,而不依赖于传统的进化或选择过程。EvoNB工作流为纳米体的快速优化提供了有效的工具,促进了PLMs在生物医学领域的应用。
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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