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Analyzing the basic principles of tissue microarray data measuring the cooperative phenomena of marker proteins in invasive breast cancer

机译:分析组织微阵列数据的基本原理,测量浸润性乳腺癌中标志物蛋白的协同现象

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Background: The analysis of a protein-expression pattern from tissue microarray (TMA) data will not immediately give an answer on synergistic or antagonistic effects between the observed proteins. But contrary to apparent first impression, it is possible to reveal those cooperative phenomena from TMA data. The data is (1) preserving a lot of the original physiological information content and (2) because of minor variances between the tumor samples, contains several related slightly different biological states. We present here a largely assumption-free combinatorial analysis, related to correlation networks but with much less arbitrary constraints. A strong focus was put on the analysis of the basic data to analyze how the cooperative phenomena might be imprinted in the TMA data structure.Results: The study design was based on two independent panels of 589 and 366 invasive breast cancer cases from different institutions, assembled on tissue microarrays. The combinatorial analysis generates an optimal rank ordering of protein-expression coherence. The outcome of the analysis corresponds to all the single observations scattered over several publications and integrates them in one context. This means all these scattered observations can also be deduced from one TMA experiment. A comprehensive statistical meta-analysis of the TMA data suggests the existence of a superposition of three basic coherence situations, and offers the opportunity to analyze these data properties with additional real-world data and synthetic data in more detail.Conclusion: The presented algorithm gives molecular pathologists a tool to extract dependency information from TMA data. Beyond this practical benefit, some light was shed on how dependency aspects might be imprinted into expression data. This will certainly foster the refinement of algorithms to reconstruct dependency networks. The implementation of the algorithm is at the moment not end-user suitable, but available on request.
机译:背景:从组织微阵列(TMA)数据分析蛋白质表达模式不会立即给出观察到的蛋白质之间的协同或拮抗作用的答案。但是,与明显的第一印象相反,可以从TMA数据中揭示那些合作现象。数据是(1)保留了大量原始生理信息,(2)由于肿瘤样本之间的细微差异,包含一些相关的略有不同的生物学状态。在这里,我们介绍了一个与假设网络相关的,基本上没有假设的组合分析,但是具有较少的任意约束。结果:本研究设计基于两个独立的小组,分别来自不同机构的589和366例浸润性乳腺癌病例,研究重点是基础数据分析,以分析合作现象如何在TMA数据结构中留下印记。组装在组织微阵列上。组合分析生成蛋白质表达连贯性的最佳等级排序。分析的结果对应于散布在多个出版物上的所有单个观测值,并将它们整合到一个上下文中。这意味着所有这些分散的观察结果也可以从一个TMA实验中推导出来。对TMA数据进行全面的统计荟萃分析表明,存在三种基本相干情况的叠加,并提供了机会,可以使用更多的实际数据和合成数据来更详细地分析这些数据属性。分子病理学家是一种从TMA数据中提取依赖性信息的工具。除了这种实际好处之外,还阐明了如何将依赖关系方面的内容印记到表达数据中。这肯定会促进算法的改进,以重建依赖网络。目前,该算法的实现不适用于最终用户,但可应要求提供。

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