Abstract
A truly functional Bayesian method for detecting temporally differentially expressed genes
between two experimental conditions is presented. The method distinguishes between
two biologically different set ups, one in which the two samples are interchangeable, and
one in which the second sample is a modification of the first, i.e. the two samples are
non-interchangeable. This distinction leads to two different Bayesian models, which allow
more flexibility in modeling gene expression profiles. The method allows one to identify
differentially expressed genes, to rank them and to estimate their expression profiles. The
proposed procedure successfully deals with various technical difficulties which arise in
microarray time-course experiments, such as small number of observations, non-uniform
sampling intervals and presence of missing data or repeated measurements. The procedure
allows one to account for various types of error, thus offering a good compromise between
nonparametric and normality assumption based techniques. In addition, all evaluations
are carried out using analytic expressions, hence the entire procedure requires very little
computational effort. The performance of the procedure is studied using simulated and real
data.
Anno
2009
Autori IAC
Tipo pubblicazione
Altri Autori
Angelini C.; De Canditiis D.; Pensky M.
Editore
Elsevier Science
Rivista
Computational statistics & data analysis (Print)