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Learning Gene Networks under SNP Perturbations Using eQTL Datasets

Overview of attention for article published in PLoS Computational Biology, February 2014
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Title
Learning Gene Networks under SNP Perturbations Using eQTL Datasets
Published in
PLoS Computational Biology, February 2014
DOI 10.1371/journal.pcbi.1003420
Pubmed ID
Authors

Lingxue Zhang, Seyoung Kim

Abstract

The standard approach for identifying gene networks is based on experimental perturbations of gene regulatory systems such as gene knock-out experiments, followed by a genome-wide profiling of differential gene expressions. However, this approach is significantly limited in that it is not possible to perturb more than one or two genes simultaneously to discover complex gene interactions or to distinguish between direct and indirect downstream regulations of the differentially-expressed genes. As an alternative, genetical genomics study has been proposed to treat naturally-occurring genetic variants as potential perturbants of gene regulatory system and to recover gene networks via analysis of population gene-expression and genotype data. Despite many advantages of genetical genomics data analysis, the computational challenge that the effects of multifactorial genetic perturbations should be decoded simultaneously from data has prevented a widespread application of genetical genomics analysis. In this article, we propose a statistical framework for learning gene networks that overcomes the limitations of experimental perturbation methods and addresses the challenges of genetical genomics analysis. We introduce a new statistical model, called a sparse conditional Gaussian graphical model, and describe an efficient learning algorithm that simultaneously decodes the perturbations of gene regulatory system by a large number of SNPs to identify a gene network along with expression quantitative trait loci (eQTLs) that perturb this network. While our statistical model captures direct genetic perturbations of gene network, by performing inference on the probabilistic graphical model, we obtain detailed characterizations of how the direct SNP perturbation effects propagate through the gene network to perturb other genes indirectly. We demonstrate our statistical method using HapMap-simulated and yeast eQTL datasets. In particular, the yeast gene network identified computationally by our method under SNP perturbations is well supported by the results from experimental perturbation studies related to DNA replication stress response.

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Mendeley readers

Mendeley readers

The data shown below were compiled from readership statistics for 106 Mendeley readers of this research output. Click here to see the associated Mendeley record.

Geographical breakdown

Country Count As %
United States 4 4%
United Kingdom 1 <1%
Germany 1 <1%
Japan 1 <1%
Spain 1 <1%
Unknown 98 92%

Demographic breakdown

Readers by professional status Count As %
Researcher 28 26%
Student > Ph. D. Student 25 24%
Student > Master 11 10%
Professor > Associate Professor 8 8%
Professor 6 6%
Other 14 13%
Unknown 14 13%
Readers by discipline Count As %
Agricultural and Biological Sciences 39 37%
Biochemistry, Genetics and Molecular Biology 15 14%
Computer Science 15 14%
Mathematics 5 5%
Medicine and Dentistry 5 5%
Other 9 8%
Unknown 18 17%
Attention Score in Context

Attention Score in Context

This research output has an Altmetric Attention Score of 4. This is our high-level measure of the quality and quantity of online attention that it has received. This Attention Score, as well as the ranking and number of research outputs shown below, was calculated when the research output was last mentioned on 05 March 2014.
All research outputs
#7,792,096
of 25,584,565 outputs
Outputs from PLoS Computational Biology
#5,156
of 9,004 outputs
Outputs of similar age
#69,781
of 236,286 outputs
Outputs of similar age from PLoS Computational Biology
#69
of 135 outputs
Altmetric has tracked 25,584,565 research outputs across all sources so far. This one has received more attention than most of these and is in the 69th percentile.
So far Altmetric has tracked 9,004 research outputs from this source. They typically receive a lot more attention than average, with a mean Attention Score of 20.4. This one is in the 42nd percentile – i.e., 42% of its peers scored the same or lower than it.
Older research outputs will score higher simply because they've had more time to accumulate mentions. To account for age we can compare this Altmetric Attention Score to the 236,286 tracked outputs that were published within six weeks on either side of this one in any source. This one has gotten more attention than average, scoring higher than 70% of its contemporaries.
We're also able to compare this research output to 135 others from the same source and published within six weeks on either side of this one. This one is in the 48th percentile – i.e., 48% of its contemporaries scored the same or lower than it.