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ANALYSIS OF CORRELATION STRUCTURES IN RENAL CELL CARCINOMA PATIENT DATA

机译:肾细胞癌患者数据中相关结构分析

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Mass Spectrometry (MS)-based technologies represent a promising area of research in clinical analysis. They are primarily concerned with measuring the relative intensity (abundance) of many protein/peptide molecules associated with their mass-to-charge ratios over a particular range of molecular masses. These measurements (generally referred as proteomic signals or spectra) constitute a huge amount of information which requires adequate tools to be investigated and 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). Specifically, the aim of our investigation is to detect changes of the signal correlations from control to case group (ccRCC or non-ccRCC). To this end, we sample and represent each population group through a graph providing, as it will be defined below, the observed signal correlation structure. This way, graphs establish abstract frames of reference in our analysis giving the opportunity to test hypotheses over their properties. In other terms, changes are detected by testing graph property modifications from group to group. We show the results by reporting the mass-to-charge values which identify bounded regions where changes have been detected. The main interest in handling these regions is to perceive which signal ranges are associated with some specific factors of interest (e.g., studying differentially expressed peaks between case and control groups) and thus, to suggest potential biomarkers for future analysis or for clinical monitoring. Data were collected, from patients and healthy volunteers at the Ospedale Maggiore Policlinico Foundation (Milano, Italy).
机译:基于质谱(MS)基础技术代表了临床分析中的有希望的研究领域。它们主要涉及测量与其与其质量对脂肪率相关的许多蛋白质/肽分子的相对强度(丰度)在特定的分子量范围内。这些测量(通常称为蛋白质组态信号或光谱)构成了大量信息,这需要进行调查和解释适当的工具。在测试假设的方法之后,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。具体而言,我们的调查的目的是检测从控制到案例组(CCRCC或非CCRCC)的信号相关的变化。为此,我们通过提供的图表来对每个人群组进行采样,并且在下面将定义,观察到的信号相关结构。通过这种方式,图表在我们的分析中建立了抽象的参考框架,使得机会在其属性上测试假设。在其他术语中,通过从组到组的图形属性修改检测到更改。我们通过报告识别已检测到更改的界限区域的质量到充电值来显示结果。处理这些区域的主要兴趣是感知哪个信号范围与感兴趣的一些特定因素相关(例如,研究病例和对照组之间的差异表达峰),因此建议潜在的生物标志物用于将来的分析或临床监测。从Ospeale Maggiore Policlinico Foundation(意大利Milano)的患者和健康志愿者收集数据。

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