Biochemical Characterization of Disease-Associated Variants of Human Ornithine Transcarbamylase.

IF 3.5 2区 生物学 Q2 BIOCHEMISTRY & MOLECULAR BIOLOGY
Emily Micheloni, Samantha S Watson, Penny J Beuning, Mary Jo Ondrechen
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引用次数: 0

Abstract

Human ornithine transcarbamylase deficiency (OTCD) is the most common ureagenesis disorder in the world. OTCD is an X-linked genetic deficiency in which patients experience hyperammonemia to varying degrees depending on the severity of the genetic mutation. More than two-thirds of the known mutations are caused by single nucleotide substitutions. In this paper, partial order optimum likelihood (POOL), a machine learning method, is used to analyze single nucleotide substitutions in OTC with varying disease phenotypes and predicted catalytic efficiencies. Specifically, we used a computed metric, μ4, a measure of the degree of coupling between an ionizable residue and its neighbors, calculated for the catalytic residues, to identify which protein variants were most likely to have impacted catalytic activities. From this analysis, 17 disease-associated variants were selected plus one additional variant, representing a range of μ4 values and POOL ranks. Then μ4 predictions were compared with established bioinformatics tools, SIFT, PolyPhen-2, Provean, FATHMM, MutPred2, and MutationTaster2. The bioinformatics tools predicted that most of these mutations are deleterious. The variants were biochemically characterized using kinetics assays, size exclusion chromatography, and differential scanning fluorimetry. POOL combined with μ4 analysis was able to predict correctly which variants were catalytically hindered in vitro for 17 out of 18 variants. Then by expressing a subset of these proteins in cell culture, mechanisms for disease were proposed. Analysis using μ4 is a complementary method to the sequence-based bioinformatics tools for predicting the effects of mutation on catalytic function.

人鸟氨酸转氨基甲酰基酶疾病相关变异的生化特征。
人鸟氨酸转氨基甲酰基酶缺乏症(OTCD)是世界上最常见的尿源性疾病。OTCD是一种x连锁的遗传缺陷,根据基因突变的严重程度,患者会经历不同程度的高氨血症。超过三分之二的已知突变是由单核苷酸取代引起的。在本文中,偏序最优似然(POOL),一种机器学习方法,用于分析单核苷酸取代的OTC与不同的疾病表型和预测催化效率。具体来说,我们使用计算度量μ4来确定哪些蛋白质变体最有可能影响催化活性。μ4是为催化残基计算的可电离残基与其相邻残基之间耦合程度的度量。从这个分析中,选择了17个疾病相关变异加上一个额外的变异,代表μ4值和POOL等级的范围。然后比较已建立的生物信息学工具SIFT、polyphen2、provan、FATHMM、MutPred2和MutationTaster2对μ4的预测结果。生物信息学工具预测,大多数这些突变是有害的。使用动力学分析、尺寸排除色谱法和差示扫描荧光法对变异进行了生物化学表征。POOL结合μ4分析对18个变异中的17个能准确预测出体外催化受阻的变异。然后,通过在细胞培养中表达这些蛋白质的一个子集,提出了疾病的机制。μ4分析是基于序列的生物信息学工具预测突变对催化功能影响的补充方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
ACS Chemical Biology
ACS Chemical Biology 生物-生化与分子生物学
CiteScore
7.50
自引率
5.00%
发文量
353
审稿时长
3.3 months
期刊介绍: ACS Chemical Biology provides an international forum for the rapid communication of research that broadly embraces the interface between chemistry and biology. The journal also serves as a forum to facilitate the communication between biologists and chemists that will translate into new research opportunities and discoveries. Results will be published in which molecular reasoning has been used to probe questions through in vitro investigations, cell biological methods, or organismic studies. We welcome mechanistic studies on proteins, nucleic acids, sugars, lipids, and nonbiological polymers. The journal serves a large scientific community, exploring cellular function from both chemical and biological perspectives. It is understood that submitted work is based upon original results and has not been published previously.
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