February 15, Thursday
12:00 – 14:00
Finding Informative Regulatory Elements
Computer Science seminar
Lecturer : Mr. Noam Slonim
Lecturer homepage : http://www.princeton.edu/~nslonim/
Affiliation : Department of Physics at Princeton University
Location : 202/37
Host : Dr. Michael Elkin
I will present a rigorous computational methodology for ab-initio motif discovery from expression data, that utilizes the concept of mutual information, and have the following characteristics:
- directly applicable to any type of expression data, thus conceptually unifying existing motif discovery techniques,
- model-independence,i.e.,model-related assumptions commonly made by other methods are not required,
- simultaneously finds DNA motifs in upstream regions and RNA motifs in 3'UTRs and highlights their functional relations,
- scales well to metazoan genomes,
- yields very few false positive predictions if any,
- incorporates systematic analysis of the functional coherence of the predicted motifs, their conservation, positional and orientation biases, cooperativity, and co-localization with other motifs,
- displays predictions via a novel user-friendly graphical interface.
I will present results for a variety of data types, measured for different organisms, including yeast, worm, fly, mouse, human, and the Plasmodium parasite responsible for malaria. I will further discuss in detail surprising observations regarding gene expression regulation that were overlook by previous studies and naturally arise from our analysis. As a shorthand for our methodology we use the acronym FIRE, standing for Finding Informative Regulatory Elements.
Based on joint work with Olivier Elemento and Saeed Tavazoie.