TTCA:Transcript Time Course Analysis
The analysis of microarray time series promises a deeper insight into the dynamics of the cellular response following
stimulation. A common observation in this type of data is that
some genes respond with quick, transient dynamics, while other
genes change their expression slowly over time. The existing
methods for detecting significant expression dynamics often
fail when the expression dynamics show a large heterogeneity.
Moreover, these methods often cannot cope with irregular and
sparse measurements. The method proposed here is specifically
designed for the analysis of perturbation responses. It
combines different scores to capture fast and transient
dynamics as well as slow expression changes, and performs well
in the presence of low replicate numbers and irregular sampling
times. The results are given in the form of tables including
links to figures showing the expression dynamics of the
respective transcript. These allow to quickly recognise the
relevance of detection, to identify possible false positives
and to discriminate early and late changes in gene expression.
An extension of the method allows the analysis of the
expression dynamics of functional groups of genes, providing a
quick overview of the cellular response. The performance of
this package was tested on microarray data derived from lung
cancer cells stimulated with epidermal growth factor (EGF).
Paper: Albrecht, Marco, et al.
(2017)<DOI:10.1186/s12859-016-1440-8>.