Microarray-based classifiers and associated signature genes generated from various platforms are abundantly reported in the literature; however, the utility of the classifiers and signature genes in cross-platform prediction applications remains largely uncertain. As part of the MicroArray Quality Control Phase II (MAQC-II) project, we show in this study 80-90% cross-platform prediction consistency using a large toxicogenomics data set by illustrating that: (1) the signature genes of a classifier generated from one platform can be directly applied to another platform to develop a predictive classifier; (2) a classifier developed using data generated from one platform can accurately predict samples that were profiled using a different platform. The results suggest the potential utility of using published signature genes in cross-platform applications and the possible adoption of the published classifiers for a variety of applications. The study reveals an opportunity for possible translation of biomarkers identified using microarrays to clinically validated non-array gene expression assays. © 2010 Macmillan Publishers Limited. All rights reserved.
CITATION STYLE
Fan, X., Lobenhofer, E. K., Chen, M., Shi, W., Huang, J., Luo, J., … Tong, W. (2010). Consistency of predictive signature genes and classifiers generated using different microarray platforms. Pharmacogenomics Journal, 10(4), 247–257. https://doi.org/10.1038/tpj.2010.34
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