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首页> 外文期刊>Nature biotechnology >A comparison of batch effect removal methods for enhancement of prediction performance using MAQC-II microarray gene expression data
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A comparison of batch effect removal methods for enhancement of prediction performance using MAQC-II microarray gene expression data

机译:MAQC-II基因芯片基因表达数据用于提高预测性能的分批效应去除方法的比较

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摘要

Batch effects are the systematic non-biological differences between batches (groups) of samples in microarray experiments due to various causes such as differences in sample preparation and hybridization protocols. Previous work focused mainly on thedevelopment of methods for effective batch effects removal. However, their impact on cross-batch prediction performance, which is one of the most important goals in microarray-based applications, has not been addressed. This paper uses a broad selectionof data sets from the Microarray Quality Control Phase II (MAQC-II) effort, generated on three microarray platforms with different causes of batch effects to assess the efficacy of their removal. Two data sets from cross-tissue and cross-platform experiments are also included. Of the 120 cases studied using Support vector machines (SVM) and K nearest neighbors (KNN) as classifiers and Matthews correlation coefficient (MCC) as performance metric, we find that Ratio-G, Ratio-A, EJLR, mean-centering and standardization methods perform better or equivalent to no batch effect removal in 89, 85, 83, 79 and 75% of the cases, respectively, suggesting that the application of these methods is generally advisable and ratio-based methods are preferred.
机译:批次效应是由于各种原因(例如样品制备和杂交方案的差异)而导致的微阵列实验中样品的批次(组)之间系统的非生物差异。先前的工作主要集中在有效去除批效应的方法上。但是,它们对跨批次预测性能的影响(这是基于微阵列的应用程序中最重要的目标之一)尚未得到解决。本文使用了来自微阵列质量控制第二阶段(MAQC-II)的大量数据集,这些数据是在具有不同批次效应原因的三个微阵列平台上生成的,以评估其去除效果。还包括来自跨组织和跨平台实验的两个数据集。在使用支持向量机(SVM)和K最近邻(KNN)作为分类器并以Matthews相关系数(MCC)作为性能指标进行研究的120个案例中,我们发现Ratio-G,Ratio-A,EJLR,均值中心化和标准化分别在89%,85%,83%,79%和75%的情况下,这些方法的效果更好或相当于没有批量效果消除,这表明通常建议使用这些方法,并且优选基于比率的方法。

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