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Removing Batch Effects in Analysis of Expression Microarray Data: An Evaluation of Six Batch Adjustment Methods

机译:去除表达微阵列数据分析中的批次效应:六种批次调整方法的评估

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摘要

The expression microarray is a frequently used approach to study gene expression on a genome-wide scale. However, the data produced by the thousands of microarray studies published annually are confounded by “batch effects,” the systematic error introduced when samples are processed in multiple batches. Although batch effects can be reduced by careful experimental design, they cannot be eliminated unless the whole study is done in a single batch. A number of programs are now available to adjust microarray data for batch effects prior to analysis. We systematically evaluated six of these programs using multiple measures of precision, accuracy and overall performance. ComBat, an Empirical Bayes method, outperformed the other five programs by most metrics. We also showed that it is essential to standardize expression data at the probe level when testing for correlation of expression profiles, due to a sizeable probe effect in microarray data that can inflate the correlation among replicates and unrelated samples.
机译:表达微阵列是研究全基因组规模基因表达的常用方法。但是,每年发表的成千上万的微阵列研究产生的数据与“批量效应”混淆,“批量效应”是在多批次处理样品时引入的系统误差。尽管通过仔细的实验​​设计可以减少批次效应,但是除非整个研究在单个批次中完成,否则不能消除它们。现在有许多程序可用于在分析之前针对批次效应调整微阵列数据。我们使用精度,准确性和总体性能的多种度量系统地评估了其中六个程序。 ComBat是一种经验贝叶斯方法,在大多数指标上都优于其他五个程序。我们还表明,在测试表达谱的相关性时,必须在探针水平上标准化表达数据,这是由于微阵列数据中的巨大探针效应可能会放大重复样本和不相关样本之间的相关性。

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