Efficiency of Functional Regression Estimators for Combining Multiple Laser Scans of cDNA Microarrays |
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Authors: | C. A. Glasbey M. R. Khondoker |
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Affiliation: | 1. Biomathematics and Statistics Scotland, King's Buildings, Edinburgh, EH9 3JZ, Scotland;2. Division of Pathway Medicine, University of Edinburgh Medical School, Chancellor's Building, 49 Little France Crescent, Edinburgh EH16 4SB, Scotland |
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Abstract: | The first stage in the analysis of cDNA microarray data is estimation of the level of expression of each gene, from laser scans of hybridised microarrays. Typically, data are used from a single scan, although, if multiple scans are available, there is the opportunity to reduce sampling error by using all of them. Combining multiple laser scans can be formulated as multivariate functional regression through the origin. Maximum likelihood estimation fails, but many alternative estimators exist, one of which is to maximise the likelihood of a Gaussian structural regression model. We show by simulation that, surprisingly, this estimator is efficient for our problem, even though the distribution of gene expression values is far from Gaussian. Further, it performs well if errors have a heavier tailed distribution or the model includes intercept terms, but not necessarily in other regions of parameter space. Finally, we show that by combining multiple laser scans we increase the power to detect differential expression of genes. (© 2009 WILEY‐VCH Verlag GmbH & Co. KGaA, Weinheim) |
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Keywords: | Factor analysis Measurement error Mixture distribution Moment estimator Structural regression |
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