Seminar on Biological Networks
Year | Semester | Date | Period | Language | In charge |
---|---|---|---|---|---|
2014 | spring | 13.01-25.04. | 3-4 | English | Teemu Kivioja |
Lectures
Time | Room | Lecturer | Date |
---|---|---|---|
Tue 10-12 | C220 | Teemu Kivioja | 13.01.2014-24.01.2014 |
Tue 10-12 | C220 | Teemu Kivioja | 18.03.2014-18.03.2014 |
Tue 10-12 | C220 | Teemu Kivioja | 25.03.2014-25.03.2014 |
Tue 10-12 | C220 | Teemu Kivioja | 01.04.2014-01.04.2014 |
Tue 10-12 | C220 | Teemu Kivioja | 08.04.2014-08.04.2014 |
General
The schedule for the rest of the seminar is as follows.
- March 14: Written report deadline. Send it to me by email.
Presentations (note, the order of the two first presentations changed, March 6)
- March 18: Network motif discovery by color coding
- March 25: Identifying conserved pathways by network alignment
- April 1: Network deconvolution
- April 8: Linking genes and diseases via network propagation
Introductory slides including topic proposals can be found here.
A network (a weighted graph) is often used as a high-level abstraction of pairwise interactions or dependencies between biological entities such as genes, proteins, or metabolites. These networks are growing rapidly as high-throughput technologies now enable measuring large numbers of interactions in parallel. However, extracting biologically meaningful knowledge from such networks is far from easy. Formalizing biological problems as graph problems can be challenging. Also, experimental noise may introduce large numbers of spurious and missing edges to the network or the experimental technique may not distinguish between direct and indirect effects making the interpretation of the network difficult. In this seminar we will explore how networks are used to analyze large biological data sets.
- construction
- alignment
- querying
- motif discovery
- clustering
- deconvolution
Completing the course
The first meeting on Tuesday, January 14, at 10:15 in C220 is mandatory. The rest of the schedule will be discussed in the first meeting.
Each participant will study in detail 2-3 research or review articles that cover both biological and computational aspects of one topic (article suggestions will be provided). The aim will be to understand both modeling a biological problem as network or graph problem and its computational solution. Course evaluation will be based on the oral presentation and written report on the topic and active participation in the seminar.