Title :
Estimating Gene Signals From Noisy Microarray Images
Author :
Sarder, Pinaki ; Nehorai, Arye ; Davis, Paul H. ; Stanley, Samuel L., Jr.
Author_Institution :
Dept. of Electr. & Syst. Eng., Washington Univ. in St. Louis, St. Louis, MO
fDate :
6/1/2008 12:00:00 AM
Abstract :
In oligonucleotide microarray experiments, noise is a challenging problem, as biologists now are studying their organisms not in isolation but in the context of a natural environment. In low photomultiplier tube (PMT) voltage images, weak gene signals and their interactions with the background fluorescence noise are most problematic. In addition, nonspecific sequences bind to array spots intermittently causing inaccurate measurements. Conventional techniques cannot precisely separate the foreground and the background signals. In this paper, we propose analytically based estimation technique. We assume a priori spot-shape information using a circular outer periphery with an elliptical center hole. We assume Gaussian statistics for modeling both the foreground and background signals. The mean of the foreground signal quantifies the weak gene signal corresponding to the spot, and the variance gives the measure of the undesired binding that causes fluctuation in the measurement. We propose a foreground-signal and shape-estimation algorithm using the Gibbs sampling method. We compare our developed algorithm with the existing Mann-Whitney (MW)- and expectation maximization (EM)/iterated conditional modes (ICM)-based methods. Our method outperforms the existing methods with considerably smaller mean-square error (MSE) for all signal-to-noise ratios (SNRs) in computer-generated images and gives better qualitative results in low-SNR real-data images. Our method is computationally relatively slow because of its inherent sampling operation and hence only applicable to very noisy-spot images. In a realistic example using our method, we show that the gene-signal fluctuations on the estimated foreground are better observed for the input noisy images with relatively higher undesired bindings.
Keywords :
DNA; Gaussian distribution; cellular biophysics; expectation-maximisation algorithm; fluctuations; fluorescence; genetics; image sampling; mean square error methods; molecular biophysics; Gaussian statistics; Gibbs sampling; Mann-Whitney method; background fluorescence noise; background signal; cDNA microarray; computer-generated images; expectation maximization method; foreground signal; gene signals; gene-signal fluctuations; iterated conditional modes; mean-square error; microarray images; noisy-spot images; oligonucleotide microarray; photomultiplier tube; shape-estimation algorithm; signal-to-noise ratio; spot-shape information; voltage images; Background noise; Fluctuations; Fluorescence; Organisms; Photomultipliers; Sampling methods; Signal to noise ratio; Statistics; Voltage; Working environment noise; Gibbs sampling; cDNA microarray; low PMT voltage image; spot segmentation; Algorithms; Artifacts; Gene Expression Profiling; Image Enhancement; Microscopy, Fluorescence; Oligonucleotide Array Sequence Analysis; Reproducibility of Results; Sensitivity and Specificity;
Journal_Title :
NanoBioscience, IEEE Transactions on
DOI :
10.1109/TNB.2008.2000745