GeneMANIA: a real-time multiple association network integration algorithm for predicting gene function
University of New Brunswick · University of Toronto · +1 more institution
Abstract
Most successful computational approaches for protein function prediction integrate multiple genomics and proteomics data sources to make inferences about the function of unknown proteins. The most accurate of these algorithms have long running times, making them unsuitable for real-time protein function prediction in large genomes. As a result, the predictions of these algorithms are stored in static databases that can easily become outdated. We propose a new algorithm, GeneMANIA, that is as accurate as the leading methods, while capable of predicting protein function in real-time.
We use a fast heuristic algorithm, derived from ridge regression, to integrate multiple functional association networks and predict gene function from a single process-specific network using label propagation. Our algorithm is efficient enough to be deployed on a modern webserver and is as accurate as, or more so than, the leading methods on the MouseFunc I benchmark and a new yeast function prediction benchmark; it is robust to redundant and irrelevant data and requires, on average, less than ten seconds of computation time on tasks from these benchmarks.
Citation impact
- FWCI
- 7.30
- Percentile
- 100%
- References
- 39
Authors
5- SMSara MostafaviCorresponding
University of New Brunswick, University of Toronto
- DRDebajyoti Ray
Oxford Centre for Computational Neuroscience
- DWDavid Warde-Farley
University of New Brunswick, University of Toronto
- CGChris Grouios
University of New Brunswick, University of Toronto
- QMQuaid Morris
University of New Brunswick, University of Toronto
Topics & keywords
- Biology
- Computational biology
- Function (biology)
- Gene regulatory network
- Human genetics
- Association (psychology)
- Genome Biology
- Evolutionary biology