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Harnessing Diversity towards the Reconstructing of Large Scale Gene Regulatory Networks

Overview of attention for article published in PLoS Computational Biology, November 2013
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Title
Harnessing Diversity towards the Reconstructing of Large Scale Gene Regulatory Networks
Published in
PLoS Computational Biology, November 2013
DOI 10.1371/journal.pcbi.1003361
Pubmed ID
Authors

Takeshi Hase, Samik Ghosh, Ryota Yamanaka, Hiroaki Kitano

Abstract

Elucidating gene regulatory network (GRN) from large scale experimental data remains a central challenge in systems biology. Recently, numerous techniques, particularly consensus driven approaches combining different algorithms, have become a potentially promising strategy to infer accurate GRNs. Here, we develop a novel consensus inference algorithm, TopkNet that can integrate multiple algorithms to infer GRNs. Comprehensive performance benchmarking on a cloud computing framework demonstrated that (i) a simple strategy to combine many algorithms does not always lead to performance improvement compared to the cost of consensus and (ii) TopkNet integrating only high-performance algorithms provide significant performance improvement compared to the best individual algorithms and community prediction. These results suggest that a priori determination of high-performance algorithms is a key to reconstruct an unknown regulatory network. Similarity among gene-expression datasets can be useful to determine potential optimal algorithms for reconstruction of unknown regulatory networks, i.e., if expression-data associated with known regulatory network is similar to that with unknown regulatory network, optimal algorithms determined for the known regulatory network can be repurposed to infer the unknown regulatory network. Based on this observation, we developed a quantitative measure of similarity among gene-expression datasets and demonstrated that, if similarity between the two expression datasets is high, TopkNet integrating algorithms that are optimal for known dataset perform well on the unknown dataset. The consensus framework, TopkNet, together with the similarity measure proposed in this study provides a powerful strategy towards harnessing the wisdom of the crowds in reconstruction of unknown regulatory networks.

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Geographical breakdown

Country Count As %
United States 4 4%
United Kingdom 1 1%
India 1 1%
Unknown 84 93%

Demographic breakdown

Readers by professional status Count As %
Student > Ph. D. Student 27 30%
Researcher 19 21%
Professor 11 12%
Professor > Associate Professor 8 9%
Student > Master 7 8%
Other 12 13%
Unknown 6 7%
Readers by discipline Count As %
Agricultural and Biological Sciences 34 38%
Biochemistry, Genetics and Molecular Biology 14 16%
Computer Science 14 16%
Engineering 9 10%
Physics and Astronomy 3 3%
Other 7 8%
Unknown 9 10%