To Pool or Not to Pool: A Question of Microarray Experimental Design

Christina Kendziorski, Department of Biostatistics and Medical Informatics, University of Wisconsin-Madison
Rafael A. Irizarry, Johns Hopkins Bloomberg School of Public Health
K. Chen, McArdle Laboratory for Cancer Research, University of Wisconsin-Madison
J.D. Haag, McArdle Laboratory for Cancer Research, University of Wisconsin-Madison
M.N. Gould, McArdle Laboratory for Cancer Research, University of Wisconsin-Madison

Paper published. Can be accessed by going to http://www.pnas.org/cgi/content/full/102/12/4252

Abstract

Over 10% of the data sets catalogued in the Gene Expression Omnibus Database involve messenger RNA samples that have been pooled prior to hybridization. Pooling affects data quality and inference, but the exact effects are not yet known as pooling has not been systematically studied in the context of microarray experiments. Here we report on the results of an experiment designed to evaluate the utility of pooling and the impact on identifying differentially expressed genes. We find that inference for most genes is not adversely affected by pooling and we recommend that pooling be done when fewer than three arrays are used in each condition. For larger designs, pooling does not significantly improve inferences if few subjects are pooled. The realized benefits in this case do not outweigh the price paid for loss of individual specific information. Pooling is beneficial when many subjects are pooled, provided independent samples contribute to multiple pools.