DSHMM: Difference between revisions
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* [http://www.jstacs.de/downloads/supplementary_data.zip Supplementary data]: Containing the breast cancer gene expression data set and the breast cancer gene copy number data set (Pollack et al. (2002)) analyzed in the manuscript, and the predictions and scores of the compared methods. | * [http://www.jstacs.de/downloads/supplementary_data.zip Supplementary data]: Containing the breast cancer gene expression data set and the breast cancer gene copy number data set (Pollack et al. (2002)) analyzed in the manuscript, and the predictions and scores of the compared methods. | ||
* [http://www.jstacs.de/downloads/ModelTrainer.zip Model trainer]: JAR file for analyzing a data set by Gaussian mixture models, HMMs, SHMMs, and DSHMMs. | * [http://www.jstacs.de/downloads/ModelTrainer.zip Model trainer]: JAR file for analyzing a data set by Gaussian mixture models, HMMs, SHMMs, and DSHMMs. |
Revision as of 11:47, 4 May 2011
by Michael Seifert, Marc Strickert, Alexander Schliep, and Ivo Grosse
Description
Motivation
Changes in gene expression levels play a central role in tumors. Additional information about the distribution of gene expression levels and distances between adjacent genes on chromosomes should be integrated into the analysis of tumor expression profiles.
Results
We use a Hidden Markov Model with distance-scaled transition matrices (DSHMM) to incorporate chromosomal distances of adjacent genes on chromosomes into the identification of differentially expressed genes in breast cancer. We train the DSHMM by integrating prior knowledge about potential distributions of expression levels of differentially expressed and unchanged genes in tumor. We find that especially the combination of this data and to a lesser extent the modeling of distances between adjacent genes contribute to a substantial improvement of the identification of differentially expressed genes in comparison to other existing methods. This performance benefit is also supported by the identification of genes well-known to be associated with breast cancer. That suggests applications of DSHMMs for screening of other tumor expression profiles.
Paper
The paper Exploiting prior knowledge and gene distances in the analysis of tumor expression profiles with extended Hidden Markov Models has been submitted to Bioinformatics.
Download
- Supplementary data: Containing the breast cancer gene expression data set and the breast cancer gene copy number data set (Pollack et al. (2002)) analyzed in the manuscript, and the predictions and scores of the compared methods.
- Model trainer: JAR file for analyzing a data set by Gaussian mixture models, HMMs, SHMMs, and DSHMMs.