Reverse engineering cellular networks

被引:0
|
作者
Adam A Margolin
Kai Wang
Wei Keat Lim
Manjunath Kustagi
Ilya Nemenman
Andrea Califano
机构
[1] Columbia University,Department of Biomedical Informatics
[2] Joint Centers for Systems Biology,undefined
[3] Columbia University,undefined
[4] Los Alamos National Laboratory,undefined
来源
Nature Protocols | 2006年 / 1卷
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摘要
We describe a computational protocol for the ARACNE algorithm, an information-theoretic method for identifying transcriptional interactions between gene products using microarray expression profile data. Similar to other algorithms, ARACNE predicts potential functional associations among genes, or novel functions for uncharacterized genes, by identifying statistical dependencies between gene products. However, based on biochemical validation, literature searches and DNA binding site enrichment analysis, ARACNE has also proven effective in identifying bona fide transcriptional targets, even in complex mammalian networks. Thus we envision that predictions made by ARACNE, especially when supplemented with prior knowledge or additional data sources, can provide appropriate hypotheses for the further investigation of cellular networks. While the examples in this protocol use only gene expression profile data, the algorithm's theoretical basis readily extends to a variety of other high-throughput measurements, such as pathway-specific or genome-wide proteomics, microRNA and metabolomics data. As these data become readily available, we expect that ARACNE might prove increasingly useful in elucidating the underlying interaction models. For a microarray data set containing ∼10,000 probes, reconstructing the network around a single probe completes in several minutes using a desktop computer with a Pentium 4 processor. Reconstructing a genome-wide network generally requires a computational cluster, especially if the recommended bootstrapping procedure is used.
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页码:662 / 671
页数:9
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