Sequence-developability mapping of affibody and fibronectin paratopes via library-scale variant characterization.

IF 2.6 4区 生物学 Q3 BIOCHEMISTRY & MOLECULAR BIOLOGY Protein Engineering Design & Selection Pub Date : 2024-01-29 DOI:10.1093/protein/gzae010
Gregory H Nielsen, Zachary D Schmitz, Benjamin J Hackel
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引用次数: 0

Abstract

Protein developability is requisite for use in therapeutic, diagnostic, or industrial applications. Many developability assays are low throughput, which limits their utility to the later stages of protein discovery and evolution. Recent approaches enable experimental or computational assessment of many more variants, yet the breadth of applicability across protein families and developability metrics is uncertain. Here, three library-scale assays-on-yeast protease, split green fluorescent protein (GFP), and non-specific binding-were evaluated for their ability to predict two key developability outcomes (thermal stability and recombinant expression) for the small protein scaffolds affibody and fibronectin. The assays' predictive capabilities were assessed via both linear correlation and machine learning models trained on the library-scale assay data. The on-yeast protease assay is highly predictive of thermal stability for both scaffolds, and the split-GFP assay is informative of affibody thermal stability and expression. The library-scale data was used to map sequence-developability landscapes for affibody and fibronectin binding paratopes, which guides future design of variants and libraries.

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通过文库规模的变体特征描述,绘制亲和素和纤连蛋白旁位点的序列-可发展性图谱。
蛋白质显影性是用于治疗、诊断或工业应用的必要条件。许多可开发性测定的通量都很低,这就限制了它们在蛋白质发现和进化后期阶段的应用。最近的方法可以对更多的变体进行实验或计算评估,但对不同蛋白质家族和可开发性指标的适用范围还不确定。在这里,我们评估了三种库规模的检测方法--酵母蛋白酶、分裂绿色荧光蛋白(GFP)和非特异性结合--预测小型蛋白质支架 affibody 和纤维连接蛋白的两个关键可开发性结果(热稳定性和重组表达)的能力。这些检测方法的预测能力是通过线性相关模型和在库规模检测数据上训练的机器学习模型进行评估的。酵母上蛋白酶检测对两种支架的热稳定性都有很高的预测性,而分裂-GFP 检测则能提供 affibody 热稳定性和表达的信息。文库规模数据被用于绘制亲和体和纤连蛋白结合旁位体的序列可发展性图谱,为未来的变体和文库设计提供指导。
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来源期刊
Protein Engineering Design & Selection
Protein Engineering Design & Selection 生物-生化与分子生物学
CiteScore
3.30
自引率
4.20%
发文量
14
审稿时长
6-12 weeks
期刊介绍: Protein Engineering, Design and Selection (PEDS) publishes high-quality research papers and review articles relevant to the engineering, design and selection of proteins for use in biotechnology and therapy, and for understanding the fundamental link between protein sequence, structure, dynamics, function, and evolution.
期刊最新文献
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