Array Comparative Genomic
Hybridization (CGH) has been widely used for detecting genomic copy number
variations (CNVs). The central goal of array CGH data analysis is to accurately
detect homogeneous regions of log intensity ratios which represent relative
changes in DNA copy number. Various methods have been proposed in recent years.
Most methods, however, do not consider correlations of neighboring probe
measurements, and are usually designed for analysis at single sample level
rather than detecting common or recurrent CNVs among multiple samples. We
propose a Bayesian segment-based approach for efficient analysis of array CGH
data. The proposed method is based on simple assumptions but is general enough
to accommodate various spatial correlations among probe measurements.
It also
allows for multiple samples with recurrent CNVs, therefore is able to borrow
strength across samples. In contrast to another probe-based approach developed
in the same Bayesian framework, the segment-based approach parameterizes the
mean log intensity ratios in a more appropriate way, which leads to a posterior
sampling scheme based on reversible-jump Markov chain Monte Carlo. Want To Read More....
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