Editorials |
From The Center for Cardiovascular Bioinformatics and Modeling and The Whitaker Biomedical Engineering Institute, Johns Hopkins University School of Medicine and Whiting School of Engineering, Baltimore, MD.
Correspondence to Raimond L. Winslow, Rm 201B Clark Hall, The Johns Hopkins University, 3400 N. Charles St., Baltimore MD 21218. E-mail rwinslow@bme.jhu.edu
See related article, pages 617625
Key Words: microarrays gene expression
An extract of the first 250 words of the full text is provided, because this article has no abstract. |
One of the most exciting new experimental technologies to emerge in recent years has been methods for obtaining genome-wide mRNA expression data using oligonucleotide1 and cDNA microarrays2 (for review, see Cook and Rosenzweig3). Application of gene expression profiling was limited initially by cost, which in turn imposed severe constraints on the number of hybridizations that could be performed and thus the statistical significance of experimental results. This barrier has been reduced as array fabrication techniques have advanced and it is now common for studies to investigate differential gene expression at relatively large sample numbers, see for example, Singh et al4 and Margulis et al5. Improved statistical methods for inferring regulated genes6 as well as for grouping genes on the basis of related expression patterns7 have also been developed and refined.
Application of these methods to analysis of differential gene expression in cardiovascular disease typically reveals large numbers of genes with altered expression. These numbers can range from hundreds8 to thousands5 and they pose a new challengehow best do we sift through these lists to identify those genes having relevance to disease development and progression (referred to as "candidate genes")? The most common approach is to perform a manual or semi-automated9 search of publicly available databases to evaluate gene function on the basis of annotation, and to then select as candidate genes those with function deemed most relevant to the disease process. While useful, such approaches are subjective and limited by the availability and accuracy of functional annotations. The
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Circ. Res. 2005 96: 617-625.
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