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Statistical and Biological Evaluation of Different Gene Set Analysis Methods

机译:不同基因组分析方法的统计和生物学评估

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Gene-set analysis (GSA) methods have been widely used in microarray data analysis. Owing to the unusual characteristics of microarray data, such as multidimension, small sample size and complicated relationship between genes, no generally accepted methods have been used to detect differentially expressed gene sets (DEGs) up to now. Our group assessed the statistical performance of some commonly used methods through Monte Carlo simulation combined with the analysis of real-world microarray data sets. Not only did we discover a few novel features of GSA methods during experiences, but also we find that some GSA methods are effective only if genes were assumed to be independent. And we also detected that model-based methods (GlobalTest and PCOT2) performed well when analyzing our simulated data sets in which the inter-gene correlation structure was incorporated into each gene set separately for more reasonable. Through analysis of real-world microarray data, we found GlobalTest is more effective. Then we concluded that GlobalTest is a more effective gene set analysis method, and recommended using it with microarray data analysis.
机译:基因组分析(GSA)方法已广泛用于微阵列数据分析中。由于微阵列数据的异常特征,例如多维,样本量小以及基因之间的复杂关系,到目前为止,尚未使用公认的方法来检测差异表达的基因集(DEG)。我们的小组通过蒙特卡洛模拟结合对现实世界中微阵列数据集的分析,评估了一些常用方法的统计性能。我们不仅在体验中发现了GSA方法的一些新颖特征,而且还发现只有假设基因是独立的,某些GSA方法才有效。而且,在分析我们的模拟数据集时,我们还发现基于模型的方法(GlobalTest和PCOT2)表现良好,其中将基因间相关性结构分别纳入每个基因集以更合理。通过分析现实世界的微阵列数据,我们发现GlobalTest更有效。然后我们得出结论,GlobalTest是一种更有效的基因集分析方法,并建议将其与微阵列数据分析一起使用。

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