Guevara-Coto Jose, Schwartz Charles E, Wang Liangjiang
BMC Genomics. 2014;15 Suppl 11(Suppl 11):S4. doi: 10.1186/1471-2164-15-S11-S4. Epub 2014 Dec 16.
The importance of mutations in disease phenotype has been studied, with information available in databases such as OMIM. However, it remains a research challenge for the possibility of clustering amino acid residues based on an underlying interaction, such as co-evolution, to understand how mutations in these related sites can lead to different disease phenotypes.
This paper presents an integrative approach to identify groups of co-evolving residues, known as protein sectors. By studying a protein family using multiple sequence alignments and statistical coupling analysis, we attempted to determine if it is possible that these groups of residues could be related to disease phenotypes. After the protein sectors were identified, disease-associated residues within these groups of amino acids were mapped to a structure representing the protein family. In this study, we used the proposed pipeline to analyze two test cases of spermine synthase and Rab GDP dissociation inhibitor.
The results suggest that there is a possible link between certain groups of co-evolving residues and different disease phenotypes. The pipeline described in this work could also be used to study other protein families associated with human diseases.
疾病表型中突变的重要性已得到研究,诸如在线人类孟德尔遗传数据库(OMIM)等数据库中有相关信息。然而,基于潜在相互作用(如协同进化)对氨基酸残基进行聚类,以了解这些相关位点的突变如何导致不同疾病表型,仍然是一项研究挑战。
本文提出了一种综合方法来识别协同进化残基组,即蛋白质扇区。通过使用多序列比对和统计耦合分析来研究一个蛋白质家族,我们试图确定这些残基组是否可能与疾病表型相关。在识别出蛋白质扇区后,将这些氨基酸组内与疾病相关的残基映射到代表该蛋白质家族的结构上。在本研究中,我们使用所提出的流程来分析精胺合酶和Rab GDP解离抑制剂这两个测试案例。
结果表明,某些协同进化残基组与不同疾病表型之间可能存在联系。这项工作中描述的流程也可用于研究与人类疾病相关的其他蛋白质家族。