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首页> 外文期刊>Journal of proteome research >Quality Assessments of Long-Term Quantitative Proteomic Analysis of Breast Cancer Xenograft Tissues
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Quality Assessments of Long-Term Quantitative Proteomic Analysis of Breast Cancer Xenograft Tissues

机译:乳腺癌异种移植组织长期定量蛋白质组学分析的质量评估

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摘要

Clinical proteomics requires large-scale analysis of human specimens to achieve statistical significance. We evaluated the long-term reproducibility of an iTRAQ (isobaric tags for relative and absolute quantification)-based quantitative proteomics strategy using one channel for reference across all samples in different iTRAQ sets. A total of 148 liquid chromatography tandem mass spectrometric (LC-MS/MS) analyses were completed, generating six 2D LC-MS/MS data sets for human-in-mouse breast cancer xenograft tissues representative of basal and luminal subtypes. Such large-scale studies require the implementation of robust metrics to assess the contributions of technical and biological variability in the qualitative and quantitative data. Accordingly, we derived a quantification confidence score based on the quality of each peptide-spectrum match to remove quantification outliers from each analysis. After combining confidence score filtering and statistical analysis, reproducible protein identification and quantitative results were achieved from LC-MS/MS data sets collected over a 7-month period. This study provides the first quality assessment on long-term stability and technical considerations for study design of a large-scale clinical proteomics project.
机译:临床蛋白质组学需要大规模分析人类标本,实现统计学意义。我们评估了ITRAQ(用于亲属和绝对量化的等因素标签)的长期可重复性 - 基于一个频道的数量蛋白质组学策略,用于参考不同ITRAQ集合的所有样本。完成总共148个液相色谱串联质谱(LC-MS / MS)分析,用于代表基础和腔亚型的小鼠乳腺癌异种移植组织的六个2DLC-MS / MS数据集。这种大规模研究需要实施强大的指标,以评估质量和定量数据中的技术和生物变异性的贡献。因此,我们基于每个肽谱匹配的质量来衍生定量置信度评分,以从每个分析中移除量化异常值。在组合置信度滤波和统计分析后,从7个月内收集的LC-MS / MS数据集实现可重复的蛋白质鉴定和定量结果。本研究为大规模临床蛋白质组学项目研究设计的长期稳定性和技术考虑提供了第一种质量评估。

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