Murali Hemma, Wang Peng, Liao Eric C, Wang Kai
Graduate Program in Biochemistry and Molecular Biophysics, University of Pennsylvania, Philadelphia, PA 19104, United States.
Center for Cellular and Molecular Therapeutics, Children's Hospital of Philadelphia, Philadelphia, PA 19104, United States.
Comput Struct Biotechnol J. 2024 Feb 3;23:892-904. doi: 10.1016/j.csbj.2024.01.019. eCollection 2024 Dec.
Next-generation genome sequencing has revolutionized genetic testing, identifying numerous rare disease-associated gene variants. However, to impute pathogenicity, computational approaches remain inadequate and functional testing of gene variant is required to provide the highest level of evidence. The emergence of AlphaFold2 has transformed the field of protein structure determination, and here we outline a strategy that leverages predicted protein structure to enhance genetic variant classification. We used the gene as a case study due to its clinical relevance, its critical role in cleft lip/palate malformation, and the availability of experimental data on the pathogenicity of gene variants through phenotype rescue experiments in zebrafish. We compared results from over 30 pathogenicity prediction tools on 37 missense variants. lacks an experimentally derived structure, so we used predicted structures to explore associations between mutational clustering and pathogenicity. We found that among these variants, 19 of 37 were unanimously predicted as deleterious by computational tools. Comparing predictions with experimental findings, 12 variants predicted as pathogenic were experimentally determined as benign. Even with the recently published AlphaMissense model, 15/18 (83%) of the predicted pathogenic variants were experimentally determined as benign. In comparison, mapping variants to the protein revealed deleterious mutation clusters around the protein binding domain, whereas N-terminal variants tend to be benign, suggesting the importance of structural information in determining pathogenicity of mutations in this gene. In conclusion, incorporating gene-specific structural features of known pathogenic/benign mutations may provide meaningful insights into pathogenicity predictions in a gene-specific manner and facilitate the interpretation of variant pathogenicity.
下一代基因组测序彻底改变了基因检测,识别出众多与罕见疾病相关的基因变异。然而,为了推断致病性,计算方法仍然不足,需要对基因变异进行功能测试以提供最高水平的证据。AlphaFold2的出现改变了蛋白质结构测定领域,在此我们概述了一种利用预测的蛋白质结构来加强基因变异分类的策略。由于其临床相关性、在唇腭裂畸形中的关键作用以及通过斑马鱼的表型拯救实验可获得有关该基因变异致病性的实验数据,我们以该基因为案例进行研究。我们比较了30多种致病性预测工具对37个错义变异的结果。该基因缺乏实验推导的结构,因此我们使用预测结构来探索突变聚类与致病性之间的关联。我们发现,在这些变异中,计算工具一致预测37个变异中有19个是有害的。将预测结果与实验结果进行比较,12个预测为致病性的变异在实验中被确定为良性。即使使用最近发布的AlphaMissense模型,18个预测为致病性的变异中有15个(83%)在实验中被确定为良性。相比之下,将变异映射到蛋白质上显示蛋白质结合域周围存在有害突变簇,而N端变异往往是良性的,这表明结构信息在确定该基因突变致病性方面的重要性。总之,纳入已知致病性/良性突变的基因特异性结构特征可能以基因特异性方式为致病性预测提供有意义的见解,并有助于解释变异的致病性。