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Computational lipidomics: a multiplexed analysis of dynamic changes in membrane lipid composition during signal transduction.

机译:计算脂质组学:信号转导过程中膜脂质成分动态变化的多重分析。

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Recent successes in defining the roles of lipids in cell signaling have stimulated greater interest in these versatile biomolecules. Until recently, analysis of these molecules at the species level has required labor-intensive techniques. The development of electrospray ionization mass spectrometry (ESI-MS) has made possible the detection and identification of thermally labile biological molecules, such as phospholipids. The "soft" ionization does not cause extensive fragmentation, is highly sensitive, accurate, and reproducible. Thus, this method is well suited for analyzing a broad range of phospholipids without elaborate chromatographic separation. Evaluating the vast amounts of data resulting from these measurements is a rate-limiting step in the assessment of phospholipid composition, requiring the development and application of computational algorithms for mass spectrometry data. Here we describe computational lipidomics, a novel analytical technique, coupling mass spectrometry with statistical algorithms to facilitate the comprehensive analysis of hundreds of lipid species from cellular extracts. As a result, lipid arrays are generated to indicate qualitative changes that occur in lipid composition between experimental or disease states, similar to proteomic and genomic analyses. This review presents a methodological strategy for using ESI-MS combined with a high-power computational analysis to profile time-dependent changes in cellular phospholipids after the addition of an agonist or to evaluate changes promoted by pathophysiological processes. As an illustration, we describe the methods and approaches used to generate lipid arrays for The Alliance for Cellular Signaling (AfCS). These arrays are contributing to a more complete understanding of the participants of cellular signaling pathways after activation of cell surface receptors.
机译:定义脂质在细胞信号传导中的作用的最新成功激发了人们对这些多功能生物分子的兴趣。直到最近,在物种水平上对这些分子的分析仍需要劳动密集型技术。电喷雾电离质谱(ESI-MS)的发展使得检测和鉴定热不稳定的生物分子(例如磷脂)成为可能。 “软”电离不会引起广泛的碎片化,具有高度的敏感性,准确性和可重复性。因此,该方法非常适合分析广泛的磷脂,而无需进行复杂的色谱分离。评估由这些测量产生的大量数据是磷脂成分评估中的限速步骤,需要开发和应用质谱数据的计算算法。在这里,我们描述了计算脂质组学,这是一种新颖的分析技术,将质谱与统计算法结合在一起可以促进对细胞提取物中数百种脂质种类的全面分析。结果,类似于蛋白质组学和基因组分析,产生脂质阵列以表明在实验或疾病状态之间脂质组成中发生的质变。这项审查提出了一种方法策略,使用ESI-MS结合高能计算分析来分析添加激动剂后细胞磷脂的时间依赖性变化或评估病理生理过程所促进的变化。作为说明,我们描述了用于为细胞信号联盟(AfCS)生成脂质阵列的方法和方法。这些阵列有助于细胞表面受体活化后对细胞信号传导途径参与者的更完整理解。

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