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A large, consistent plasma proteomics data set from prospectively collected breast cancer patient and healthy volunteer samples

机译:来自预期收集的乳腺癌患者和健康志愿者样本的大量一致的血浆蛋白质组学数据集

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Background Variability of plasma sample collection and of proteomics technology platforms has been detrimental to generation of large proteomic profile datasets from human biospecimens. Methods We carried out a clinical trial-like protocol to standardize collection of plasma from 204 healthy and 216 breast cancer patient volunteers. The breast cancer patients provided follow up samples at 3 month intervals. We generated proteomics profiles from these samples with a stable and reproducible platform for differential proteomics that employs a highly consistent nanofabricated ChipCube? chromatography system for peptide detection and quantification with fast, single dimension mass spectrometry (LC-MS). Protein identification is achieved with subsequent LC-MS/MS analysis employing the same ChipCube? chromatography system. Results With this consistent platform, over 800 LC-MS plasma proteomic profiles from prospectively collected samples of 420 individuals were obtained. Using a web-based data analysis pipeline for LC-MS profiling data, analyses of all peptide peaks from these plasma LC-MS profiles reveals an average coefficient of variability of less than 15%. Protein identification of peptide peaks of interest has been achieved with subsequent LC-MS/MS analyses and by referring to a spectral library created from about 150 discrete LC-MS/MS runs. Verification of peptide quantity and identity is demonstrated with several Multiple Reaction Monitoring analyses. These plasma proteomic profiles are publicly available through ProteomeCommons. Conclusion From a large prospective cohort of healthy and breast cancer patient volunteers and using a nano-fabricated chromatography system, a consistent LC-MS proteomics dataset has been generated that includes more than 800 discrete human plasma profiles. This large proteomics dataset provides an important resource in support of breast cancer biomarker discovery and validation efforts.
机译:背景技术血浆样品收集和蛋白质组学技术平台的可变性已经不利于从人类生物标本生成大型蛋白质组学概况数据集。方法我们进行了类似临床试验的方案,以标准化204位健康和216位乳腺癌患者志愿者的血浆收集。乳腺癌患者每三个月提供一次随访样本。我们使用稳定且可重现的差分蛋白质组学平台从这些样品中生成蛋白质组学概况,该平台采用高度一致的纳米级ChipCube?色谱系统,用于快速单维质谱(LC-MS)进行肽检测和定量。通过使用相同ChipCube的后续LC-MS / MS分析可实现蛋白质鉴定。色谱系统。结果在这个一致的平台上,从420个个体的预期样本中获得了800多个LC-MS血浆蛋白质组学谱。使用基于Web的数据分析管道获取LC-MS分析数据,对这些血浆LC-MS谱图中所有肽峰的分析显示出平均变异系数小于15%。通过后续的LC-MS / MS分析,并参考了大约150个离散LC-MS / MS运行创建的光谱库,可以实现目标肽峰的蛋白质鉴定。肽的数量和同一性的验证通过数个多反应监测分析得到证实。这些血浆蛋白质组学概况可通过ProteomeCommons公开获得。结论从大量的健康和乳腺癌患者志愿者的前瞻性队列中,使用纳米加工色谱系统,已经生成了一致的LC-MS蛋白质组学数据集,其中包括800多个离散的人类血浆谱。这个庞大的蛋白质组学数据集为支持乳腺癌生物标志物的发现和验证工作提供了重要的资源。

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