作者
J Luo, M Schumacher, Andreas Scherer, Despoina Sanoudou, D Megherbi, T Davison, T Shi, Weida Tong, Leming Shi, Huixiao Hong, C Zhao, F Elloumi, W Shi, R Thomas, S Lin, G Tillinghast, G Liu, Y Zhou, D Herman, Y Li, Y Deng, H Fang, Pierre Bushel, M Woods, J Zhang
发表日期
2010/8
期刊
The pharmacogenomics journal
卷号
10
期号
4
页码范围
278-291
出版商
Nature Publishing Group
简介
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 the development 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 selection of 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 …
引用总数
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