Abstract
Recently, network inference algorithms have grown tremendously in the field of systems biology because network identification is essential for understanding relationships between regulation mechanisms for genes, elucidating functional mechanisms underlying cellular processes, as well as identifying molecular targets for discoveries in medicines. This article provides a brief overview of different approaches used to identify biological networks and reviews recent advances in network identification.
Footnotes
This research was supported by the NIH NCI under the ICBP and PS-OC programs (5U54CA112970-08)
Copyright
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