A Nonlinear Mixed-Effects Model for Estimating Calibration Intervals for Unknown Concentrations in Two-Color Microarray Data with Spike-Ins

In this study, we propose a calibration method for preprocessing spiked-in microarray experiments based on nonlinear mixed-effects models. This method uses a spike-in calibration curve to estimate normalized absolute expression values. Moreover, using the asymptotic properties of the calibration estimate, 100(1-α)% confidence intervals for the estimated expression values can be constructed. Simulations are used to show that the approximations on which the construction of the confidence intervals are based are sufficiently accurate to reach the desired coverage probabilities. We illustrate applicability of our method, by estimating the normalized absolute expression values together with the corresponding confidence intervals for two publicly available cDNA microarray experiments (Hilson et al., 2004; Smets et al., 2008). This method can easily be adapted to preprocess one-color oligonucleotide microarray data with a slight adjustment to the mixed model.

[1]  David M. Rocke,et al.  A Model for Measurement Error for Gene Expression Arrays , 2001, J. Comput. Biol..

[2]  Kristof Engelen Normalizing Microarray Data: Estimating Absolute Expression Levels (Normalisatie van microroostermetingen: schatten van absolute expressiewaarden) , 2005 .

[3]  David M. Rocke,et al.  Estimation of Transformation Parameters for Microarray Data , 2003, Bioinform..

[4]  Douglas M. Hawkins,et al.  A variance-stabilizing transformation for gene-expression microarray data , 2002, ISMB.

[5]  Marie Davidian,et al.  Nonlinear Models for Repeated Measurement Data , 1995 .

[6]  Hans Geir Eiken,et al.  Evaluation of five different cDNA labeling methods for microarrays using spike controls , 2003, BMC biotechnology.

[7]  Gary A. Churchill,et al.  Analysis of Variance for Gene Expression Microarray Data , 2000, J. Comput. Biol..

[8]  Harm van Bakel,et al.  In control: systematic assessment of microarray performance , 2004, EMBO reports.

[9]  L. K. Buehler,et al.  Normalizing DNA microarray data. , 2002, Current issues in molecular biology.

[10]  D. Ruppert,et al.  Transformation and Weighting in Regression , 1988 .

[11]  David M. Rocke,et al.  A Two-Component Model for Measurement Error in Analytical Chemistry , 1995 .

[12]  Kathleen Marchal,et al.  A calibration method for estimating absolute expression levels from microarray data , 2006, Bioinform..

[13]  Thomas Altmann,et al.  Versatile gene-specific sequence tags for Arabidopsis functional genomics: transcript profiling and reverse genetics applications. , 2004, Genome research.

[14]  John Aach,et al.  Measuring absolute expression with microarrays with a calibrated reference sample and an extended signal intensity range , 2002, Proceedings of the National Academy of Sciences of the United States of America.

[15]  Pierre R. Bushel,et al.  Assessing Gene Significance from cDNA Microarray Expression Data via Mixed Models , 2001, J. Comput. Biol..

[16]  Lutz Edler,et al.  Heteroscedastic Nonlinear Regression Models with Random Effects and Their Application to Enzyme Kinetic Data , 1999 .

[17]  T. Speed,et al.  Design issues for cDNA microarray experiments , 2002, Nature Reviews Genetics.

[18]  G. Molenberghs,et al.  Models for Discrete Longitudinal Data , 2005 .

[19]  Tao Han,et al.  Microarray scanner calibration curves: characteristics and implications , 2005, BMC Bioinformatics.

[20]  David M. Rocke,et al.  Variance-stabilizing transformations for two-color microarrays , 2004, Bioinform..

[21]  Sorin Drăghici,et al.  Data Analysis Tools for DNA Microarrays , 2003 .

[22]  D. Cavalieri,et al.  Fundamentals of cDNA microarray data analysis. , 2003, Trends in genetics : TIG.

[23]  Kathleen Marchal,et al.  Genome-wide expression analysis reveals TORC1-dependent and -independent functions of Sch9. , 2008, FEMS yeast research.

[24]  R. Serfling Approximation Theorems of Mathematical Statistics , 1980 .

[25]  G. Churchill Fundamentals of experimental design for cDNA microarrays , 2002, Nature Genetics.

[26]  John Quackenbush Microarray data normalization and transformation , 2002, Nature Genetics.