M. Katzer,
F. Kummert, and G. Sagerer:
Robust Automatic Microarray
Image Analysis.
In Proceedings of the International
Conference on Bioinformatics:North-South Networking, Bangkok,
2002.
Parallel expression analysis of many genes by microarray hybridisation
is one of the most promising techniques in functional genomics.
The method has been successfully applied many times in medical
and biological research. Our work is about automatic methods
for the first stages of a microarray data analysis pipeline.
Expression analysis by microarray hybridisation is a high throughput
technique. While interactive, semi-automatic software is still
frequently used for the analysis of scanned array images, it
is highly desirable to have automatic procedures which yield
better repeatability and constant quality of the expression
data for later cluster analyses. Automatic methods must handle
noise and the frequently occurring contaminations on microarrays.
In large scale microarray experiments, automatic image analysis
can save substantial amounts of work. We describe robust image
processing methods that find the printed grids of spots in the
scanned microarray images without the requirement of special
guide spots or specially calibrated equipment. Processing of
many slides from the same print batch helps to minimize the
need for human intervention. We derive our method of spot intensity
ratio computation from the biochemical model of differential
gene expression experiments and finally discuss how different
ratio computation methods can be compared. We compare results
of our method to results of manual analyses using the well-known
Scanalyze (M. Eisen, LBNL Berkeley) as well as recently published
methods (Brown et al. (2001), PNAS 92, 8944-8949). Our automatic
method yields comparable or even more accurate results than
standard methods under poor hybridisation and scan quality conditions.