Quality assessment of microarrays: Visualization of spatial artifacts
and quantitation of regional biases
Mark Reimers and John N Weinstein
BMC Bioinformatics. 2005 Jul 1;6(1):166 [Epub ahead of print]
Abstract:
Background
Quality-control is an important issues in the analysis of gene expression microarrays. One
type of problem is regional bias, in which one region of a chip shows artifactually high or low intensities
(or ratios in a two-channel array) relative to the majority of the chip. Current practice in quality assessment
for microarrays does not address regional biases.
Methods
We present methods implemented in R for visualizing regional biases and other spatial artifacts
on spotted microarrays and Affymetrix chips. We also propose a statistical index to quantify regional bias and
investigate its typical distribution on spotted and Affymetrix arrays.
Results
We demonstrate that notable regional biases occur on both Affymetrix and spotted arrays and that
they can make a significant difference in the case of spotted microarray results. Although strong biases are also
seen at the level of individual probes on Affymetrix chips, the gene expression measures are less affected,
especially when the RMA method is used to summarize intensities for the probe sets. A web application program for
visualization and quantitation of regional bias is provided at http://www.discover.nci.nih.gov/affytools.
Conclusions
Researchers should visualize and measure the regional biases and should estimate their impact on
gene expression measurements obtained. Here, we (i) introduce pictorial visualizations of the spatial biases; (ii)
present for Affymetrix chips a useful resolution of the biases into two components, one related to background,
the other to intensity scale factor; (iii) introduce a single parameter to reflect the global bias present across
an array. We also examine the pattern distribution of such biases and conclude that algorithms based on smoothing
are unlikely to compensate adequately for them.
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