Sharmin Nazlee, Yuan Jerald, Chow Ava K
Mike Petryk School of Dentistry, Faculty of Medicine and Dentistry, College of Health Sciences, University of Alberta, Edmonton, Alberta, Canada.
PLoS One. 2025 Jun 26;20(6):e0326679. doi: 10.1371/journal.pone.0326679. eCollection 2025.
Amelogenesis Imperfecta (AI) is a disorder of tooth development caused by mutations in genes involved in several stages of tooth enamel formation. Few proteins involved in tooth development or developmental anomalies are explored in detail. Knowledge of 3D protein structure is essential to studying protein function. However, crystallized complete protein structures related to teeth and oral development are rare in the Protein Data Bank. Computational approaches for automated protein structure prediction have become a popular alternative for generating protein 3D structures. In this study, we aimed to explore the potential of using computer-generated protein models to analyze mutations linked to AI. We took a systematic approach to identify, screen, and analyze AI-linked protein variants. Proteins with AI-linked mutations were identified from the NCBI and OMIM databases, followed by screening of sequences for intrinsically disordered regions (IDRs). The iterative threading assembly refinement (I-TASSER) server was used to generate homology models for the wildtype and mutant proteins. PyMOL was used to analyze and compare the 3D structures of the proteins. Nineteen human genes with AI-associated mutations were identified from NCBI and OMIM. We identified multiple AI-associated protein variants with structural differences compared to their wildtype form. The current evidence aligns with several of the structural alterations identified in our study. Our findings suggest the potential of utilizing computer-generated protein models to investigate disease-associated mutations. However, careful consideration of models, templates, and alignments over the regions of interest is necessary to predict any potential structural impact of a disease-causing protein variant.
牙釉质发育不全(AI)是一种牙齿发育障碍,由参与牙釉质形成多个阶段的基因突变引起。很少有参与牙齿发育或发育异常的蛋白质得到详细研究。蛋白质三维结构的知识对于研究蛋白质功能至关重要。然而,在蛋白质数据库中,与牙齿和口腔发育相关的结晶完整蛋白质结构很少见。自动蛋白质结构预测的计算方法已成为生成蛋白质三维结构的一种流行替代方法。在本研究中,我们旨在探索使用计算机生成的蛋白质模型来分析与AI相关的突变的潜力。我们采用系统方法来识别、筛选和分析与AI相关的蛋白质变体。从NCBI和OMIM数据库中识别出具有与AI相关突变的蛋白质,随后筛选序列中的内在无序区域(IDR)。使用迭代穿线装配优化(I-TASSER)服务器为野生型和突变型蛋白质生成同源模型。使用PyMOL分析和比较蛋白质的三维结构。从NCBI和OMIM中识别出19个人类与AI相关的突变基因。我们鉴定出多个与AI相关的蛋白质变体,其结构与野生型形式存在差异。目前的证据与我们研究中确定的几种结构改变一致。我们的研究结果表明利用计算机生成的蛋白质模型来研究疾病相关突变的潜力。然而,为了预测致病蛋白质变体的任何潜在结构影响,需要仔细考虑模型、模板以及感兴趣区域的比对情况。