[HTML][HTML] Correlating measurements across samples improves accuracy of large-scale expression profile experiments

MJ Alvarez, P Sumazin, P Rajbhandari, A Califano - Genome biology, 2009 - Springer
Genome biology, 2009Springer
Gene expression profiling technologies suffer from poor reproducibility across replicate
experiments. However, when analyzing large datasets, probe-level expression profile
correlation can help identify flawed probes and lead to the construction of truer probe sets
with improved reproducibility. We describe methods to eliminate uninformative and flawed
probes, account for dependence between probes, and address variability due to transcript-
isoform mixtures. We test and validate our approach on Affymetrix microarrays and outline …
Abstract
Gene expression profiling technologies suffer from poor reproducibility across replicate experiments. However, when analyzing large datasets, probe-level expression profile correlation can help identify flawed probes and lead to the construction of truer probe sets with improved reproducibility. We describe methods to eliminate uninformative and flawed probes, account for dependence between probes, and address variability due to transcript-isoform mixtures. We test and validate our approach on Affymetrix microarrays and outline their future adaptation to other technologies.
Springer