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首页> 外文期刊>Journal of Pathology: Journal of the Pathological Society of Great Britain and Ireland >Molecular classification of fatty liver by high-throughput profiling of protein post-translational modifications
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Molecular classification of fatty liver by high-throughput profiling of protein post-translational modifications

机译:通过蛋白质翻译后修饰的高通量分析对脂肪肝进行分子分类

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摘要

We describe an alternative approach to classifying fatty liver by profiling protein post-translational modifications (PTMs) with high-throughput capillary isoelectric focusing (cIEF) immunoassays. Four strains of mice were studied, with fatty livers induced by different causes, such as ageing, genetic mutation, acute drug usage, and high-fat diet. Nutrient-sensitive PTMs of a panel of 12 liver metabolic and signalling proteins were simultaneously evaluated with cIEF immunoassays, using nanograms of total cellular protein per assay. Changes to liver protein acetylation, phosphorylation, and O-N-acetylglucosamine glycosylation were quantified and compared between normal and diseased states. Fatty liver tissues could be distinguished from one another by distinctive protein PTM profiles. Fatty liver is currently classified by morphological assessment of lipid droplets, without identifying the underlying molecular causes. In contrast, high-throughput profiling of protein PTMs has the potential to provide molecular classification of fatty liver. Copyright (c) 2016 Pathological Society of Great Britain and Ireland. Published by John Wiley & Sons, Ltd.
机译:我们描述了通过高通量毛细管等电聚焦(cIEF)免疫分析对蛋白质翻译后修饰(PTM)进行分析来对脂肪肝进行分类的另一种方法。研究了四种小鼠品系,它们的脂肪肝是由不同原因引起的,这些原因包括衰老,基因突变,急性用药和高脂饮食。使用cIEF免疫测定法同时评估一组12种肝脏代谢和信号蛋白的营养敏感PTM,每次测定使用纳克总细胞蛋白。定量和比较正常状态和患病状态下肝蛋白乙酰化,磷酸化和O-N-乙酰氨基葡萄糖糖基化的变化。脂肪肝组织可以通过独特的蛋白质PTM谱图彼此区分开。目前,通过脂滴的形态学评估对脂肪肝进行分类,但未确定潜在的分子原因。相反,蛋白质PTM的高通量分析具有提供脂肪肝分子分类的潜力。版权所有(c)2016英国和爱尔兰病理学会。由John Wiley&Sons,Ltd.出版

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