Department of Chemistry & Biochemistry, South Dakota State University, Brookings, South Dakota, USA.
National Magnetic Resonance Facility at Madison (NMRFAM), University of Wisconsin-Madison, Madison, Wisconsin, USA.
Protein Sci. 2024 Jul;33(7):e5065. doi: 10.1002/pro.5065.
Although in silico folding based on coevolving residue constraints in the deep-learning era has transformed protein structure prediction, the contributions of coevolving residues to protein folding, stability, and other functions in physical contexts remain to be clarified and experimentally validated. Herein, the PHD finger module, a well-known histone reader with distinct subtypes containing subtype-specific coevolving residues, was used as a model to experimentally assess the contributions of coevolving residues and to clarify their specific roles. The results of the assessment, including proteolysis and thermal unfolding of wildtype and mutant proteins, suggested that coevolving residues have varying contributions, despite their large in silico constraints. Residue positions with large constraints were found to contribute to stability in one subtype but not others. Computational sequence design and generative model-based energy estimates of individual structures were also implemented to complement the experimental assessment. Sequence design and energy estimates distinguish coevolving residues that contribute to folding from those that do not. The results of proteolytic analysis of mutations at positions contributing to folding were consistent with those suggested by sequence design and energy estimation. Thus, we report a comprehensive assessment of the contributions of coevolving residues, as well as a strategy based on a combination of approaches that should enable detailed understanding of the residue contributions in other large protein families.
虽然基于深度学习中共同进化残基的计算机折叠已经改变了蛋白质结构预测,但共同进化残基对蛋白质折叠、稳定性和其他物理环境功能的贡献仍有待阐明和实验验证。在这里,PHD 指状结构域模块被用作模型,该模块是一种众所周知的组蛋白阅读器,具有包含特定亚型的共同进化残基的不同亚型,用于实验评估共同进化残基的贡献,并阐明其具体作用。评估结果,包括野生型和突变蛋白的蛋白水解和热变性,表明尽管存在大量的计算机约束,但共同进化残基的贡献是不同的。具有较大约束的残基位置被发现对一个亚基的稳定性有贡献,但对其他亚基没有贡献。还实施了计算序列设计和基于生成模型的单个结构能量估计,以补充实验评估。序列设计和能量估计区分了对折叠有贡献的共同进化残基和没有贡献的共同进化残基。对折叠贡献位置突变的蛋白水解分析结果与序列设计和能量估计的结果一致。因此,我们报告了对共同进化残基贡献的全面评估,以及一种基于多种方法结合的策略,这应该能够使我们详细了解其他大型蛋白质家族中残基的贡献。