Journal article

Microarray background correction: Maximum likelihood estimation for the normal-exponential convolution

JD Silver, ME Ritchie, GK Smyth

Biostatistics | OXFORD UNIV PRESS | Published : 2009

Abstract

Background correction is an important preprocessing step for microarray data that attempts to adjust the data for the ambient intensity surrounding each feature. The "normexp" method models the observed pixel intensities as the sum of 2 random variables, one normally distributed and the other exponentially distributed, representing background noise and signal, respectively. Using a saddle-point approximation, Ritchie and others (2007) found normexp to be the best background correction method for 2-color microarray data. This article develops the normexp method further by improving the estimation of the parameters. A complete mathematical development is given of the normexp model and the asso..

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Grants

Awarded by National Health and Medical Research Council


Funding Acknowledgements

Allan Harris memorial scholarship (J.D.S.); Isaac Newton Trust ( M. E. R.); National Health and Medical Research Council Program Grant ( 406657 to G. K. S.). Funding for open access charge: NHMRC Program Grant ( G. K. S.).