Oxford Protein Informatics Group, Department of Statistics, University of Oxford, Oxford, United Kingdom.
Front Immunol. 2024 May 15;15:1399438. doi: 10.3389/fimmu.2024.1399438. eCollection 2024.
To be viable therapeutics, antibodies must be tolerated by the human immune system. Rational approaches to reduce the risk of unwanted immunogenicity involve maximizing the 'humanness' of the candidate drug. However, despite the emergence of new discovery technologies, many of which start from entirely human gene fragments, most antibody therapeutics continue to be derived from non-human sources with concomitant humanization to increase their human compatibility. Early experimental humanization strategies that focus on CDR loop grafting onto human frameworks have been critical to the dominance of this discovery route but do not consider the context of each antibody sequence, impacting their success rate. Other challenges include the simultaneous optimization of other drug-like properties alongside humanness and the humanization of fundamentally non-human modalities such as nanobodies. Significant efforts have been made to develop methodologies able to address these issues, most recently incorporating machine learning techniques. Here, we outline these recent advancements in antibody and nanobody humanization, focusing on computational strategies that make use of the increasing volume of sequence and structural data available and the validation of these tools. We highlight that structural distinctions between antibodies and nanobodies make the application of antibody-focused tools to nanobody humanization non-trivial. Furthermore, we discuss the effects of humanizing mutations on other essential drug-like properties such as binding affinity and developability, and methods that aim to tackle this multi-parameter optimization problem.
为了成为可行的治疗方法,抗体必须被人体免疫系统耐受。降低不必要免疫原性风险的合理方法包括最大限度地提高候选药物的“人源化程度”。然而,尽管出现了许多新的发现技术,其中许多技术都是从完全人类基因片段开始的,但大多数抗体疗法仍然来自非人类来源,并进行人源化以增加其人类相容性。早期专注于 CDR 环移植到人类框架上的实验性人源化策略对于这条发现途径的主导地位至关重要,但没有考虑到每个抗体序列的背景,这影响了它们的成功率。其他挑战包括同时优化其他类药性与人类相容性,以及将根本上非人类的模式(如纳米抗体)人源化。为了解决这些问题,已经做出了重大努力来开发方法,最近最新的方法是结合机器学习技术。在这里,我们概述了抗体和纳米抗体人源化的这些最新进展,重点介绍了利用不断增加的序列和结构数据量以及这些工具的验证的计算策略。我们强调了抗体和纳米抗体之间的结构差异使得将针对抗体的工具应用于纳米抗体人源化变得非平凡。此外,我们讨论了人源化突变对其他重要类药性的影响,如结合亲和力和可开发性,以及旨在解决这个多参数优化问题的方法。