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Cross-study validation and combined analysis of gene expression microarray data

机译:基因表达微阵列数据的交叉研究验证和组合分析

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Investigations of transcript levels on a genomic scale using hybridization-based arrays have led to formidable advances in our understanding of the biology of many human illnesses. At the same time, these investigations have generated controversy because of the probabilistic nature of the conclusions and the surfacing of noticeable discrepancies between the results of studies addressing the same biological question. In this article, we present simple and effective data analysis and visualization tools for gauging the degree to which the findings of one study are reproduced by others and for integrating multiple studies in a single analysis. We describe these approaches in the context of studies of breast cancer and illustrate that it is possible to identify a substantial biologically relevant subset of the human genome within which hybridization results are reliable. The subset generally varies with the platforms used, the tissues studied, and the populations being sampled. Despite important differences, it is also possible to develop simple expression measures that allow comparison across platforms, studies, laboratories and populations. Important biological signals are often preserved or enhanced. Cross-study validation and combination of microarray results requires careful, but not overly complex, statistical thinking and can become a routine component of genomic analysis.
机译:使用基于杂交的阵列对基因组水平上的转录本水平进行研究,已经使我们对许多人类疾病的生物学认识有了长足的进步。同时,由于结论的概率性质以及解决同一生物学问题的研究结果之间明显的差异,这些研究引起了争议。在本文中,我们提供了简单有效的数据分析和可视化工具,用于衡量一项研究的结果被其他人复制的程度,以及将多项研究整合到一个分析中。我们在乳腺癌研究的背景下描述了这些方法,并说明有可能鉴定出人类基因组中生物学上相关的实质子集,在该子集中杂交结果是可靠的。该子集通常随所使用的平台,所研究的组织以及所采样的种群而变化。尽管存在重要差异,但也有可能开发出简单的表达量度,以允许在平台,研究,实验室和人群之间进行比较。重要的生物信号通常被保存或增强。交叉研究的验证和微阵列结果的组合需要仔细但并非过于复杂的统计思维,并且可以成为基因组分析的常规组成部分。

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