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- A Bayesian hierarchical model for spot fluorescence in microarrays
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- Abstract:
- Microarray experiments are characterized by the presence
of many sources of experimental bias and a remarkably
large technical variability.
The assessment of differential expression
for genes transcribed into a small number of mRNA copies heavily
depends on the proper quantification of background
fluorescence within spot.
The rough model
`observed = hybridization plus background' fluorescence
is at first reformulated
at spot level, then it is embedded into a Bayesian
hierarchical model suited for fitting control spots.
The novelties of the approach include the background
correction performed on the latent mean of replicated spots,
and an explicit model for outlying observations at low fluorescence values in which
the probability of occurrence and their magnitude depend on the
background fluorescence intensity.
The analysis of unpublished data from
a maize ear tissues experiment confirms the feasibility
of MCMC inferences as regard the computational burden.
- Subject Area:
- Microarrays
- Suggested Citation:
- Federico Mattia Stefanini,
"A Bayesian hierarchical model for spot fluorescence in microarrays"
(March 2007).
COBRA Preprint Series.
Article 18.
http://biostats.bepress.com/cobra/ps/art18