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- Detecting Pulsatile Hormone Secretion Events: A Bayesian Approach
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- Abstract:
- Many challenges arise in the analysis of pulsatile, or episodic,
hormone concentration time series data. Among these challenges is
the determination of the number and location of pulsatile events and
the discrimination of events from noise. Analyses of these data are
typically performed in two stages. In the first stage, the number
and approximate location of the pulses are determined. In the second
stage, a model (typically a deconvolution model) is fit to the data
conditional on the number of pulses. Any error made in the first
stage is carried over to the second stage. Furthermore, current
methods, except two, assume that the underlying basal concentration
is constant. We present a fully Bayesian deconvolution model that
simultaneously estimates the number of secretion episodes, as well as
their locations, and a non-constant basal concentration. This model
obviates the need to determine the number of events a priori.
Furthermore, we estimate probabilities for all ``candidate'' event
locations. We demonstrate our method on a real data set.
- Subject Area:
- General Biostatistics
- Suggested Citation:
- Tim Johnson,
"Detecting Pulsatile Hormone Secretion Events: A Bayesian Approach"
(March 2006).
The University of Michigan Department of Biostatistics Working Paper Series.
Working Paper 56.
http://www.bepress.com/umichbiostat/paper56