Phenotype characterisation using integrated gene transcript, protein and metabolite profiling.

Matej Oresic, Clary B Clish, Eugene J Davidov, Elwin Verheij, Jack Vogels, Louis M Havekes, Eric Neumann, Aram Adourian, Stephen Naylor, Jan van der Greef, Thomas Plasterer
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引用次数: 69

Abstract

Multifactorial diseases present a significant challenge for functional genomics. Owing to their multiple compartmental effects and complex biomolecular activities, such diseases cannot be adequately characterised by changes in single components, nor can pathophysiological changes be understood by observing gene transcripts alone. Instead, a pattern of subtle changes is observed in multifactorial diseases across multiple tissues and organs with complex associations between corresponding gene, protein and metabolite levels. This article presents methods for exploratory and integrative analysis of pathophysiological changes at the biomolecular level. In particular, novel approaches are introduced for the following challenges: (i) data processing and analysis methods for proteomic and metabolomic data obtained by electrospray ionisation (ESI) liquid chromatography-tandem mass spectrometry (LC/MS); (ii) association analysis of integrated gene, protein and metabolite patterns that are most descriptive of pathophysiological changes; and (iii) interpretation of results obtained from association analyses in the context of known biological processes. These novel approaches are illustrated with the apolipoprotein E3-Leiden transgenic mouse model, a commonly used model of atherosclerosis. We seek to gain insight into the early responses of disease onset and progression by determining and identifying--well in advance of pathogenic manifestations of disease--the sets of gene transcripts, proteins and metabolites, along with their putative relationships in the transgenic model and associated wild-type cohort. Our results corroborate previous findings and extend predictions for three processes in atherosclerosis: aberrant lipid metabolism, inflammation, and tissue development and maintenance.

使用综合基因转录,蛋白质和代谢物分析表型特征。
多因子疾病对功能基因组学提出了重大挑战。由于这些疾病具有多重区室效应和复杂的生物分子活动,因此不能通过单一组分的变化来充分表征这些疾病,也不能通过单独观察基因转录物来了解病理生理变化。相反,在多个组织和器官的多因素疾病中观察到一种微妙的变化模式,相应的基因、蛋白质和代谢物水平之间存在复杂的关联。本文介绍了在生物分子水平上探索和综合分析病理生理变化的方法。特别是,针对以下挑战引入了新的方法:(i)通过电喷雾电离(ESI)液相色谱-串联质谱(LC/MS)获得的蛋白质组学和代谢组学数据的数据处理和分析方法;(ii)最能描述病理生理变化的综合基因、蛋白质和代谢物模式的关联分析;(iii)在已知生物过程背景下对关联分析结果的解释。这些新方法用载脂蛋白E3-Leiden转基因小鼠模型(一种常用的动脉粥样硬化模型)来说明。我们试图通过确定和识别(在疾病的致病表现之前)基因转录物、蛋白质和代谢物,以及它们在转基因模型和相关野生型队列中的假定关系,来深入了解疾病发生和进展的早期反应。我们的研究结果证实了先前的发现,并扩展了对动脉粥样硬化三个过程的预测:异常脂质代谢、炎症和组织发育和维持。
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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