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The Glycolyzer: Automated Glycan Annotation Software for High Performance Mass Spectrometry and Its Application to Ovarian Cancer Glycan Biomarker Discovery

机译:甘草盒:用于高性能质谱的自动化聚糖注释软件及其在卵巢癌甘草生物标志物发现中的应用

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摘要

Human serum glycomics is a promising method for finding cancer biomarkers but often lacks the tools for streamlined data analysis. The Glycolyzer software incorporates a suite of analytic tools capable of identifying informative glycan peaks out of raw mass spectrometry data. As a demonstration of its utility, the program was used to identify putative biomarkers for epithelial ovarian cancer from a human serum sample set. A randomized, blocked and blinded experimental design was used on a discovery set consisting of 46 cases and 48 controls. Retrosynthetic glycan libraries were used for data analysis and several significant candidate glycan biomarkers were discovered via hypothesis testing. The significant glycans were attributed to a glycan family based on glycan composition relationships and incorporated into a linear classifier motif test. The motif test was then applied to the discovery set to evaluate the disease state discrimination performance. The test provided strongly predictive results based on receiver operator characteristic curve analysis. The area under the receiver operator characteristic curve was 0.93. Using the Glycolyzer software, we were able to identify a set of glycan biomarkers that highly discriminate between cases and controls, and are ready to be formally validated in subsequent studies.
机译:人血清糖组学是寻找癌症生物标志物的一种有前途的方法,但通常缺乏用于简化数据分析的工具。 Glycolyzer软件整合了一套分析工具,能够从原始质谱数据中识别出丰富的聚糖峰。为了证明其实用性,该程序被用于从人血清样本集中鉴定出上皮性卵巢癌的假定生物标记。在由46个病例和48个对照组成的发现集上使用了随机,封闭和盲目的实验设计。使用逆合成聚糖文库进行数据分析,并通过假设检验发现了几种重要的候选聚糖生物标记。基于聚糖组成关系,显着的聚糖归因于聚糖家族,并结合到线性分类器基序测试中。然后将基序测试应用于发现集,以评估疾病状态的辨别性能。该测试基于接收器操作员特征曲线分析提供了强有力的预测结果。接收机操作员特征曲线下的面积为0.93。使用Glycolyzer软件,我们能够鉴定出一组能够高度区分病例和对照的聚糖生物标志物,并准备在随后的研究中进行正式验证。

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