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Threshold-Avoiding Proteomics Pipeline

机译:避免阈值蛋白质组学管线

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We present a new proteomics analysis pipeline focused on maximizing the dynamic range of detected molecules in liquid chromatography-mass spectrometry (LC-MS) data and accurately quantifying low-abundance peaks to identify those with biological relevance. Although there has been much work to improve the quality of data derived from LC-MS instruments, the goal of this study was to extend the dynamic range of analyzed compounds by making full use of the information available within each data set and across multiple related chromatograms in an experiment. Our aim was to distinguish low-abundance signal peaks from noise by noting their coherent behavior across multiple data sets, and central to this is the need to delay the culling of noise peaks until the final peak-matching stage of the pipeline, when peaks from a single sample appear in the context of all others. The application of thresholds that might discard signal peaks early is thereby avoided, hence the name TAPP: threshold-avoiding proteomics pipeline. TAPP focuses on quantitative low-level processing of raw LC-MS data and includes novel preprocessing, peak detection, time alignment, and cluster-based matching. We demonstrate the performance of TAPP on biologically relevant sample data consisting of porcine cerebrospinal fluid spiked over a wide range of concentrations with horse heart cytochrome c.
机译:我们提出了一种新的蛋白质组学分析流程,专注于最大限度地提高液相色谱-质谱 (LC-MS) 数据中检测到的分子的动态范围,并准确定量低丰度峰以鉴定具有生物学相关性的峰。尽管在提高LC-MS仪器数据质量方面已经做了很多工作,但本研究的目标是通过充分利用实验中每个数据集和多个相关色谱图中的可用信息来扩展所分析化合物的动态范围。我们的目标是通过注意低丰度信号峰在多个数据集中的相干行为来区分低丰度信号峰和噪声,其核心是需要将噪声峰的剔除延迟到管道的最终峰值匹配阶段,此时单个样本的峰出现在所有其他样本的上下文中。因此,避免了可能提前丢弃信号峰的阈值的应用,因此得名TAPP:避免阈值蛋白质组学管道。TAPP专注于原始LC-MS数据的定量低级处理,包括新颖的预处理、峰值检测、时间比对和基于簇的匹配。我们证明了 TAPP 在生物学相关样品数据上的性能,这些样品数据由猪脑脊液在很宽的浓度范围内加标马心细胞色素 c。

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