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Proteomic patterns analysis with multivariate calculations as a promising tool for prompt differentiation of early stage lung tissue with cancer and unchanged tissue material

机译:蛋白质组学模式分析与多变量计算是一种有前途的工具,可以迅速区分早期肺癌组织和癌变组织物质

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Background Lung cancer diagnosis in tissue material with commonly used histological techniques is sometimes inconvenient and in a number of cases leads to ambiguous conclusions. Frequently advanced immunostaining techniques have to be employed, yet they are both time consuming and limited. In this study a proteomic approach is presented which may help provide unambiguous pathologic diagnosis of tissue material. Methods Lung tissue material found to be pathologically changed was prepared to isolate proteome with fast and non selective procedure. Isolated peptides and proteins in ranging from 3.5 to 20 kDa were analysed directly using high resolution mass spectrometer (MALDI-TOF/TOF) with sinapic acid as a matrix. Recorded complex spectra of a single run were then analyzed with multivariate statistical analysis algorithms (principle component analysis, classification methods). In the applied protocol we focused on obtaining the spectra richest in protein signals constituting a pattern of change within the sample containing detailed information about its protein composition. Advanced statistical methods were to indicate differences between examined groups. Results Obtained results indicate changes in proteome profiles of changed tissues in comparison to physiologically unchanged material (control group) which were reflected in the result of principle component analysis (PCA). Points representing spectra of control group were located in different areas of multidimensional space and were less diffused in comparison to cancer tissues. Three different classification algorithms showed recognition capability of 100% regarding classification of examined material into an appropriate group. Conclusion The application of the presented protocol and method enabled finding pathological changes in tissue material regardless of localization and size of abnormalities in the sample volume. Proteomic profile as a complex, rich in signals spectrum of proteins can be expressed as a single point in multidimensional space and than analysed using advanced statistical methods. This approach seems to provide more precise information about a pathology and may be considered in futer evaluation of biomarkers for clinical applications in different pathology. Multiparameter statistical methods may be helpful in elucidation of newly expressed sensitive biomarkers defined as many factors "in one point".
机译:背景技术利用常用的组织学技术对组织材料中的肺癌进行诊断有时会很不方便,并且在许多情况下会导致结论不明确。通常必须使用先进的免疫染色技术,但是它们既费时又受限制。在这项研究中提出了一种蛋白质组学方法,可以帮助提供组织材料的明确病理诊断。方法制备经病理改变的肺组织材料,以快速,非选择性的方法分离蛋白质组。使用高分辨率的质谱仪(MALDI-TOF / TOF)以芥子酸为基质,直接分析了3.5至20 kDa范围内的分离肽和蛋白质。然后使用多元统计分析算法(原理成分分析,分类方法)分析单次运行的已记录复杂光谱。在所应用的方案中,我们专注于获得蛋白质信号中最丰富的光谱,该光谱构成了样本内包含有关其蛋白质组成的详细信息的变化模式。先进的统计方法是要指出被检查组之间的差异。结果获得的结果表明,与生理上不变的材料(对照组)相比,组织改变后的蛋白质组图谱发生了变化,这反映在主成分分析(PCA)的结果中。代表对照组光谱的点位于多维空间的不同区域,与癌症组织相比,扩散程度较小。三种不同的分类算法显示出将被检材料分类为适当组的识别能力为100%。结论所提出的方案和方法的应用使得能够发现组织材料中的病理变化,而与样本量中异常的位置和大小无关。蛋白质组学概况是一个复杂的,富含蛋白质信号频谱的蛋白质,可以表示为多维空间中的单个点,然后可以使用高级统计方法进行分析。该方法似乎提供了有关病理学的更精确信息,可以在对生物标志物进行进一步评估以用于不同病理学的临床应用中考虑。多参数统计方法可能有助于阐明新表达的敏感生物标志物,这些标志物被定义为“一站式”的许多因素。

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