| Literature DB >> 20590333 |
Marcin Imielinski1, Calin Belta.
Abstract
We extend and apply a method that we have developed for deriving high-order epistatic relationships in large biochemical networks to a published genome-scale model of human metabolism. In our analysis we compute 33,328 reaction sets whose knockout synergistically disables one or more of 43 important metabolic functions. We also design minimal knockouts that remove flux through fumarase, an enzyme that has previously been shown to play an important role in human cancer. Most of these knockout sets employ more than eight mutually buffering reactions, spanning multiple cellular compartments and metabolic subsystems. These reaction sets suggest that human metabolic pathways possess a striking degree of parallelism, inducing "deep" epistasis between diversely annotated genes. Our results prompt specific chemical and genetic perturbation follow-up experiments that could be used to query in vivo pathway redundancy. They also suggest directions for future statistical studies of epistasis in genetic variation data sets. (c) 2010 American Institute of Physics.Entities:
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Year: 2010 PMID: 20590333 PMCID: PMC2909311 DOI: 10.1063/1.3456056
Source DB: PubMed Journal: Chaos ISSN: 1054-1500 Impact factor: 3.642