Title: Overview
1Overview
- Introduction
- Biological network data
- Text mining
- Gene Ontology
- Expression data basics
- Expression, text mining, and GO
- Modules and complexes
- Domains and conclusion
2Biological Network Data (Getting external stuff)
- Lecture
- Cytoscape plugins
- Protein interactions types and measurement
- Protein association text mining and coexpression
- Public data repositories
- Hands-on
- Installing Cytoscape plugins
- Filters
- A few external data resources
3Cytoscape Plugins available for.
- Gene Ontology analysis
- Domain-level protein network analysis
- Interface to the Oracle spatial network data
model - Shortest-Path graph analysis algorithms
4(No Transcript)
5Interactions
- Protein-protein interactions
- Protein-DNA interactions
- Associations (co-expression, text mining, etc).
6Protein-protein interactions
Source http//www.biocarta.com/pathfiles/h_caspas
ePathway.asp
7Measuring protein-protein interactions
Source http//www.bioteach.ubc.ca/
8Measuring protein-protein interactions
- Co-immunoprecipitation (Co-IP)
Courtesy of Rhoded Sharan, Tel Aviv University
9Key points on protein interactions
- High false positive rate
- High false negative rate
- Currently, not much overlap between published
interaction datasets - Most confidence given to observed interactions
with other supporting evidence.
10Protein-DNA interactions
From Molecular Biology of the Cell, Alberts et
al., 2002
11Measuring Protein-DNA Interactions
From http//www.chiponchip.org/
12Key points on protein-DNA interactions
- There has not been much data historically.
- With new technology, that is changing rapidly.
- The technology is still immature, and data
interpretation should be done cautiously.
13Text mining
Courtesy of Gary Bader, Memorial Sloan Kettering
Cancer Center
14Conserved co-expression networks
From Genome Biology 2004, 5R100
15Genetic Interactions
From Nature Biotechnology 23, 561 - 566 (2005)
16Key points on association data
- An association does not imply an interaction.
- Compared to protein interaction data
- Higher false positive rate
- Often better coverage, lower false negative rate
17Always remember interactions are
context-dependent!
From de Lichtenberg et al., Science. 2005 Feb
4307(5710)724-7
18Also Metabolic pathways
19Public data repositories
- Protein-protein interaction data
- BIND, DIP, MINT, MIPS, InACT,
- Protein-DNA interaction data
- BIND, Transfac,
- Metabolic pathway data
- BioCyc, KEGG, WIT,
- Text-mining, coexpression
- Pre-BIND, Tmm,
20Pathway data exchange formats
- BioPAX (supported by Cytoscape)
- PSI-MI (supported by Cytoscape)
- Hundreds of other formats specific to each
pathway data repository (not generally supported
by Cytoscape)
21Hands-on session
- Installing Cytoscape plugins
- Getting external data
- Merging networks
- Using filters