Ratio statistics of gene expression levels and applications to microarray data analysis

Expression-based analysis for large families of genes has recently become possible owing to the development of cDNA microarrays, which allow simultaneous measurement of transcript levels for thousands of genes. For each spot on a microarray, signals in two channels must be extracted from their backg...

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Veröffentlicht in:Bioinformatics (Oxford, England) England), 2002-09, Vol.18 (9), p.1207-1215
Hauptverfasser: YIDONG CHEN, KAMAT, Vishnu, DOUGHERTY, Edward R, BITTNER, Michael L, MELTZER, Paul S, TRENT, Jeffery M
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container_issue 9
container_start_page 1207
container_title Bioinformatics (Oxford, England)
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creator YIDONG CHEN
KAMAT, Vishnu
DOUGHERTY, Edward R
BITTNER, Michael L
MELTZER, Paul S
TRENT, Jeffery M
description Expression-based analysis for large families of genes has recently become possible owing to the development of cDNA microarrays, which allow simultaneous measurement of transcript levels for thousands of genes. For each spot on a microarray, signals in two channels must be extracted from their backgrounds. This requires algorithms to extract signals arising from tagged mRNA hybridized to arrayed cDNA locations and algorithms to determine the significance of signal ratios. This paper focuses on estimation of signal ratios from the two channels, and the significance of those ratios. The key issue is the determination of whether a ratio is significantly high or low in order to conclude whether the gene is upregulated or downregulated. The paper builds on an earlier study that involved a hypothesis test based on a ratio statistic under the supposition that the measured fluorescent intensities subsequent to image processing can be assumed to reflect the signal intensities. Here, a refined hypothesis test is considered in which the measured intensities forming the ratio are assumed to be combinations of signal and background. The new method involves a signal-to-noise ratio, and for a high signal-to-noise ratio the new test reduces (with close approximation) to the original test. The effect of low signal-to-noise ratio on the ratio statistics constitutes the main theme of the paper. Finally, and in this vein, a quality metric is formulated for spots. This measure can be used to decide whether or not a spot ratio should be deleted, or to adjust various measurements to reflect confidence in the quality of the measurement. e-dougherty@tamu.edu
doi_str_mv 10.1093/bioinformatics/18.9.1207
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subjects Bacteriology
Biological and medical sciences
Cell Line
Computer Simulation
Fundamental and applied biological sciences. Psychology
Gene Expression
Gene Expression Regulation
General aspects
Genetics
Image Enhancement - methods
Mathematics in biology. Statistical analysis. Models. Metrology. Data processing in biology (general aspects)
Melanoma - genetics
Microbiology
Models, Statistical
Myeloid Cells - physiology
Oligonucleotide Array Sequence Analysis - methods
Pathogenicity, virulence, toxins, bacteriocins, pyrogens, host-bacteria relations, miscellaneous strains
Pattern Recognition, Automated
Reproducibility of Results
Sensitivity and Specificity
Sequence Analysis, DNA - methods
Stochastic Processes
title Ratio statistics of gene expression levels and applications to microarray data analysis
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