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Reproducible quantitative proteotype data matrices for systems biology

机译:用于系统生物学的可重现的定量蛋白原型数据矩阵

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Historically, many mass spectrometry-based proteomic studies have aimed at compiling an inventory of protein compounds present in a biological sample, with the long-term objective of creating a proteome map of a species. However, to answer fundamental questions about the behavior of biological systems at the protein level, accurate and unbiased quantitative data are required in addition to a list of all protein components. Fueled by advances in mass spectrometry, the proteomics field has thus recently shifted focus toward the reproducible quantification of proteins across a large number of biological samples. This provides the foundation to move away from pure enumeration of identified proteins toward quantitative matrices of many proteins measured across multiple samples. It is argued here that data matrices consisting of highly reproducible, quantitative, and unbiased proteomic measurements across a high number of conditions, referred to here as quantitative proteotype maps, will become the fundamental currency in the field and provide the starting point for downstream biological analysis. Such proteotype data matrices, for example, are generated by the measurement of large patient cohorts, time series, or multiple experimental perturbations. They are expected to have a large effect on systems biology and personalized medicine approaches that investigate the dynamic behavior of biological systems across multiple perturbations, time points, and individuals.
机译:从历史上看,许多基于质谱的蛋白质组学研究的目的是编制生物样品中存在的蛋白质化合物的清单,其长期目标是创建物种的蛋白质组图。但是,要回答有关蛋白质水平上生物系统行为的基本问题,除了所有蛋白质成分的清单之外,还需要准确无偏的定量数据。在质谱技术发展的推动下,蛋白质组学领域近来已将重点转移到可重复定量的大量生物样品中的蛋白质上。这为从鉴定蛋白质的纯枚举转向跨多个样品测量的许多蛋白质的定量矩阵提供了基础。本文认为,由大量条件下的高度可重复,定量和无偏见的蛋白质组学测量组成的数据矩阵(在此称为定量蛋白图谱)将成为该领域的基础货币,并为下游生物学分析提供起点。例如,通过对大型患者队列,时间序列或多个实验扰动的测量来生成此类蛋白质型数据矩阵。预计它们将对系统生物学和个性化医学方法产生重大影响,这些方法研究跨多个扰动,时间点和个体的生物系统的动态行为。

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