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Sampling bias in microarray data analysis: A demonstration in the field of reproductive biology

机译:微阵列数据分析中的抽样偏见:生殖生物学领域的示范

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The actual benefit from high-throughput microarray experiments strongly relies on elimination of all possible sources of biases during both the experimental procedure and data analysis process. Within the context of reproductive biology, microarray based transcriptomic analysis of oocyte and surrounding cumulus/granulosa cells poses significant challenges due to limited amount of samples and/or potential contaminations from adjacent cells. In this study, we investigated the effect of sampling bias on consistency of the microarray differential expression analysis in the field of reproduction. Experiments were conducted on five datasets obtained from publicly available microarray repositories. For each dataset, probe level expression values were extracted and background adjustment, inter-array quantile normalization and probe set summarization were performed according to the Robust Multi-Chip Average algorithm. Genes with a false discovery rate-corrected p value of <0.05 and [Fold Change] > 2 were considered as differentially expressed. Results demonstrate that both number of replicates and including different subsets of available samples in the analysis alter the number of differentially expressed genes. We suggest that assessment of inter-sample variance prior to differential expression analysis is an important step in microarray experiments and proper handling of that variance may require alternative normalization and/or statistical test methods.
机译:高通量微阵列实验的实际益处强烈依赖于在实验程序和数据分析过程中消除所有可能的偏差源。在生殖生物学的背景下,由于来自相邻细胞的有限量和/或潜在污染,卵母细胞和周围的卵母细胞的基于微阵列的转录组分析造成显着的挑战。在这项研究中,我们研究了采样偏差对繁殖领域微阵列差异表达分析的一致性的影响。在由公开的微阵列储存库获得的五个数据集上进行实验。对于每个数据集,提取探测级别表达值,并根据稳健的多芯片平均算法进行背景调整,阵列间定量标准化和探测器概述。具有误发现率校正P值的基因<0.05和[折叠变化]> 2被认为是差异表达的。结果表明,分析中,在分析中的可用样品的不同亚群改变了差异表达基因的数量。我们建议在差异表达分析之前对样本间差异的评估是微阵列实验的重要步骤,并且对该方差的正确处理可能需要替代标准化和/或统计测试方法。

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