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首页> 外文期刊>Cytometry, Part A: the journal of the International Society for Analytical Cytology >An automated analysis of highly complex flow cytometry-based proteomic data
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An automated analysis of highly complex flow cytometry-based proteomic data

机译:基于高度复杂的流式细胞仪的蛋白质组学数据的自动化分析

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The combination of color-coded microspheres as carriers and flow cytometry as a detection platform provides new opportunities for multiplexed measurement of biomolecules. Here, we developed a software tool capable of automated gating of color-coded microspheres, automatic extraction of statistics from all subsets and validation, normalization, and cross-sample analysis. The approach presented in this article enabled us to harness the power of high-content cellular proteomics. In size exclusion chromatography-resolved microsphere-based affinity proteomics (Size-MAP), antibody-coupled microspheres are used to measure biotinylated proteins that have been separated by size exclusion chromatography. The captured proteins are labeled with streptavidin phycoerythrin and detected by multicolor flow cytometry. When the results from multiple size exclusion chromatography fractions are combined, binding is detected as discrete reactivity peaks (entities). The information obtained might be approximated to a multiplexed western blot. We used a microsphere set with >1,000 subsets, presenting an approach to extract biologically relevant information. The R-project environment was used to sequentially recognize subsets in two-dimensional space and gate them. The aim was to extract the median streptavidin phycoerythrin fluorescence intensity for all 1,000+ microsphere subsets from a series of 96 measured samples. The resulting text files were subjected to algorithms that identified entities across the 24 fractions. Thus, the original 24 data points for each antibody were compressed to 1-4 integrated values representing the areas of individual antibody reactivity peaks. Finally, we provide experimental data on cellular protein changes induced by treatment of leukemia cells with imatinib mesylate. The approach presented here exemplifies how large-scale flow cytometry data analysis can be efficiently processed to employ flow cytometry as a high-content proteomics method.
机译:颜色编码的微球作为载体和流式细胞仪作为检测平台的结合为生物分子的多重测量提供了新的机会。在这里,我们开发了一种软件工具,该工具能够自动对颜色编码的微球进行选通,从所有子集中自动提取统计数据并进行验证,归一化和跨样本分析。本文介绍的方法使我们能够利用高含量细胞蛋白质组学的力量。在尺寸排阻色谱解析的基于微球的亲和蛋白质组学(Size-MAP)中,抗体偶联的微球用于测量已通过尺寸排阻色谱分离的生物素化蛋白。捕获的蛋白用链霉亲和素藻红蛋白标记,并通过多色流式细胞仪检测。将多个尺寸排阻色谱馏分的结果合并后,结合被检测为离散的反应峰(实体)。获得的信息可能近似于多重蛋白质印迹。我们使用了包含> 1,000个子集的微球集,提出了一种提取生物学相关信息的方法。 R-project环境用于顺序识别二维空间中的子集并对其进行门控。目的是从一系列96个测量样品中提取所有1,000+个微球子集的中值链霉亲和素藻红蛋白荧光强度。生成的文本文件要经过识别24个部分中的实体的算法。因此,每种抗体的原始24个数据点被压缩到1-4个积分值,代表各个抗体反应性峰的面积。最后,我们提供了用甲磺酸伊马替尼治疗白血病细胞诱导的细胞蛋白质变化的实验数据。本文介绍的方法举例说明了如何有效地处理大规模流式细胞术数据分析,以将流式细胞术用作高含量蛋白质组学方法。

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