December 23, Tuesday
12:00 – 14:00
- We applied a novel biclustering algorithm to identify groups of genes with statistically significant correlated behavior across diverse experiments. The discovered biclusters revealed a hierarchical organization of the yeast network and were used to predict the function of over 800 uncharacterized genes.
- We developed a statistical framework for identifying associations between sequence motifs that are involved in regulating gene activity. We applied this framework to sequence data from five yeast species to discover co-occurring motifs and their characteristic sequence patterns.
- We also performed a comparative study of the protein interaction networks of yeast and bacteria to identify conserved sub-networks. Our analysis was based on a detailed probabilistic model for the data, which was used to recast the question of finding conserved structures as a problem of searching for heavy subgraphs in an edge- and node-weighted graph. The discovered sub-networks shed light on evolutionary relationships between the two species.