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A ROBUST BIOMARKER DISCOVERY PIPELINE FOR HIGH-PERFORMANCE MASS SPECTROMETRY DATA

机译:强大的生物标记物发现管线,可提供高性能的质谱数据

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摘要

A high-throughput software pipeline for analyzing high-performance mass spectral data sets has been developed to facilitate rapid and accurate biomarker determination. The software exploits the mass precision and resolution of high-performance instrumentation, bypasses peak-finding steps, and instead uses discrete m/z data points to identify putative biomarkers. The technique is insensitive to peak shape, and works on overlapping and non-Gaussian peaks which can confound peak-finding algorithms. Methods are presented to assess data set quality and the suitability of groups of m/z values that map to peaks as potential biomarkers. The algorithm is demonstrated with serum mass spectra from patients with and without ovarian cancer. Biomarker candidates are identified and ranked by their ability to discriminate between cancer and noncancer conditions. Their discriminating power is tested by classifying unknowns using a simple distance calculation, and a sensitivity of 95.6% and a specificity of 97.1% are obtained. In contrast, the sensitivity of the ovarian cancer blood marker CA125 is ~50% for stage I/II and ~80% for stage III/IV cancers. While the generalizability of these markers is currently unknown, we have demonstrated the ability of our analytical package to extract biomarker candidates from high-performance mass spectral data.
机译:已经开发了用于分析高性能质谱数据集的高通量软件管道,以促进快速,准确地确定生物标志物。该软件利用了高性能仪器的质量精度和分辨率,绕过了寻找峰的步骤,而是使用离散的m / z数据点来识别假定的生物标记。该技术对峰的形状不敏感,并且适用于重叠峰和非高斯峰,这会混淆峰发现算法。提出了评估数据集质量和映射到峰作为潜在生物标志物的m / z值组的适用性的方法。该算法通过有和没有卵巢癌患者的血清质谱得到证明。生物标志物候选物根据其区分癌症和非癌性疾病的能力进行鉴定和排名。通过使用简单的距离计算对未知数进行分类,测试了它们的区分能力,并获得了95.6%的灵敏度和97.1%的特异性。相反,卵巢癌血液标志物CA125的敏感性在I / II期约为50%,在III / IV期癌症约为80%。虽然目前尚不清楚这些标记的通用性,但我们已经证明了我们的分析软件包能够从高性能质谱数据中提取候选生物标记。

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