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Poster: Characterization of distinguishing regions for Renal Cell Carcinoma discrimination

机译:海报:区分肾细胞癌的区别区域

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摘要

Summary form only given: Mass Spectrometry (MS)-based technologies represent a promising area of research in clinical analysis. They are primarily concerned with measuring the relative intensity (i.e., signals) of many protein/peptide molecules associated with their mass-to-charge ratios. These measurements provide a huge amount of information which requires adequate tools to be interpreted. Following the methodology for testing hypotheses, we investigate the proteomic signals of the most common type of Renal Cell Carcinoma, the Clear Cell variant (ccRCC). By using mutual information, we detect changes in dependence values between signals from control to case groups (ccRCC or non-ccRCC). To this end, we sample and represent each population group through graphs, thus providing the observed dependence structures (many real domains are best described by relational models). This way, graphs establish abstract frames of reference in our analysis giving the opportunity to test hypotheses over their properties. In other words, changes are detected by testing graph property modifications from group to group. We report the mass-to-charge values which identify bounded regions where changes have been detected. The main interest in handling such regions is to perceive which signal ranges are associated with some specific factors of interest (e.g., studying differentially expressed peaks between cases and controls) and thus, to suggest potential biomarkers for future analysis. This study has been applied to samples collected at the “Ospedale Maggiore Policlinico” Foundation (Milano, Italy) using a standardized protocol. All samples were analyzed using an UltraFlex II MALDI-TOF/TOF MS instrument and mass spectra were acquired in the m=z range of 1000-12000. The samples cohort consists of 85 control subjects and 102 Renal Cell Carcinoma patients. It was possible to classify pathological group in patients affected by clear cell (ccRCC) and other different histologi- al subtypes (respectively 79 ccRCC and 23 non-ccRCC). Table I reports the selected rejection regions (i.e., tests reject the null) at the 5% significance level. Testing hypotheses suggested by the data may induce statistical bias. For this reason, we evaluate the results to independent samples. We investigate whether test decisions are statistically independent from the region''s property (i.e., distinguishing (DR) or non-distinguishing (ND) regions) when new samples are given. In other words, we want to know whether the property of a region can be statistically associated to test decisions when new samples are available. After that a new sample is provided, we verify test decisions over both the detected distinguishing regions and these regions out of the m=z bounding values previously detected. Table II summarizes the (Fisher''s exact test) results confirming a significant association (α = 0.05 level) between decisions and region''s property for both the class of tests. This work was supported by grants from the Italian Ministry of University and Research (PRIN n. 69373, FIRB n. RBRN07BMCT 011, FAR 2006-2011), EuroKUP COST Action (BM0702) and the NEDD project (“Regione Lombardia”).
机译:仅提供摘要形式:基于质谱(MS)的技术代表了临床分析中一个有前途的研究领域。他们主要关注测量与它们的质荷比相关的许多蛋白质/肽分子的相对强度(即信号)。这些测量提供了大量信息,需要充分的工具进行解释。遵循测试假设的方法,我们研究了最常见类型的肾细胞癌,透明细胞变体(ccRCC)的蛋白质组学信号。通过使用互信息,我们可以检测从控件到案例组(ccRCC或非ccRCC)的信号之间的依赖值变化。为此,我们通过图表采样并表示每个群体,从而提供了观察到的依存关系结构(许多真实域最好由关系模型来描述)。这样,图形就可以在我们的分析中建立抽象的参考框架,从而有机会检验关于其属性的假设。换句话说,可以通过测试各组之间的图形属性修改来检测更改。我们报告质荷比值,该值标识已检测到变化的有界区域。处理此类区域的主要兴趣是感知哪些信号范围与某些特定的关注因素相关(例如,研究病例与对照之间差异表达的峰),从而为将来的分析提供潜在的生物标记。这项研究已应用标准化协议在“ Ospedale Maggiore Policlinico”基金会(意大利米兰)获得的样品中进行了应用。使用UltraFlex II MALDI-TOF / TOF MS仪器分析所有样品,并在m = z范围1000-12000范围内获得质谱。样本队列由85位对照受试者和102位肾细胞癌患者组成。有可能对受透明细胞(ccRCC)和其他不同组织学亚型(分别为79 ccRCC和23个非ccRCC)影响的患者进行病理学分类。表I报告了在5%显着性水平下选择的拒绝区域(即测试拒绝了null)。测试数据提出的假设可能会引起统计偏差。因此,我们将结果评估为独立样本。当提供新样本时,我们调查测试决策是否在统计上独立于该区域的属性(即区分(DR)或无区别(ND)区域)。换句话说,我们想知道当新样本可用时,区域的属性是否可以统计地关联到测试决策。在提供新样本之后,我们将在先前检测到的m = z边界值中,在检测到的区别区域和这些区域上验证测试决策。表II总结了(费舍尔精确检验)的结果,确认了两种检验类别的决策与区域特性之间的显着关联(α= 0.05)。这项工作得到了意大利大学和研究部(PRIN编号69373,FIRB编号RBRN07BMCT 011,FAR 2006-2011),EuroKUP成本行动(BM0702)和NEDD项目(“ Regione Lombardia”)的资助。

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