Estimating Coarse Gene Network Structure from Large-Scale Gene Perturbation Data
Open Access
- 1 February 2002
- journal article
- Published by Cold Spring Harbor Laboratory in Genome Research
- Vol. 12 (2) , 309-315
- https://doi.org/10.1101/gr.193902
Abstract
Large scale gene perturbation experiments generate information about the number of genes whose activity is directly or indirectly affected by a gene perturbation. From this information, one can numerically estimate coarse structural network features such as the total number of direct regulatory interactions and the number of isolated subnetworks in a transcriptional regulation network. Applied to the results of a large-scale gene knockout experiment in the yeast Saccharomyces cerevisiae, the results suggest that the yeast transcriptional regulatory network is very sparse, containing no more direct regulatory interactions than genes. The network comprises >100 independent subnetworks.Keywords
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