To estimate gene regulatory networks, it is important that we know the number of connections, or sparseness of the networks. It can be expected that the robustness to perturbations is one of the factors determining the sparseness. We reconstruct a semi-quantitative model of gene networks from gene expression data in embryonic development and detect the optimal sparseness against perturbations. The dense networks are robust to connection-removal perturbation, whereas the sparse networks are robust to misexpression perturbation. We show that there is an optimal sparseness that serves as a trade-off between these perturbations, in agreement with the optimal result of validation for testing data. These results suggest that the robustness to the...
BackgroundReverse engineering gene networks and identifying regulatory interactions are integral to ...
Background Sparse Gaussian graphical models are popular for inferring biological networks, such as g...
Abstract We introduce a new model selection criterion for sparse complex gene network modeling where...
<div><p>To estimate gene regulatory networks, it is important that we know the number of connections...
To understand how the components of a complex system like the biological cell interact and regulate ...
<div><p>Integrating genetic perturbations with gene expression data not only improves accuracy of re...
One methodology that has met success to infer gene networks from gene expression data is based upon ...
One methodology that has met success to infer gene networks from gene expression data is based upon ...
One methodology that has met success to infer gene networks from gene expression data is based upon ...
BackgroundWe consider the problem of reconstructing a gene regulatory network structure from limited...
Biological networks have arisen as an attractive paradigm of genomic science ever since the introduc...
Background\ud Reverse engineering gene networks and identifying regulatory interactions are integral...
Identifying gene regulatory networks (GRNs) which consist of a large number of interacting units has...
Abstract Background Biological networks are constantly subjected to random perturbations, and effici...
Abstract Background ...
BackgroundReverse engineering gene networks and identifying regulatory interactions are integral to ...
Background Sparse Gaussian graphical models are popular for inferring biological networks, such as g...
Abstract We introduce a new model selection criterion for sparse complex gene network modeling where...
<div><p>To estimate gene regulatory networks, it is important that we know the number of connections...
To understand how the components of a complex system like the biological cell interact and regulate ...
<div><p>Integrating genetic perturbations with gene expression data not only improves accuracy of re...
One methodology that has met success to infer gene networks from gene expression data is based upon ...
One methodology that has met success to infer gene networks from gene expression data is based upon ...
One methodology that has met success to infer gene networks from gene expression data is based upon ...
BackgroundWe consider the problem of reconstructing a gene regulatory network structure from limited...
Biological networks have arisen as an attractive paradigm of genomic science ever since the introduc...
Background\ud Reverse engineering gene networks and identifying regulatory interactions are integral...
Identifying gene regulatory networks (GRNs) which consist of a large number of interacting units has...
Abstract Background Biological networks are constantly subjected to random perturbations, and effici...
Abstract Background ...
BackgroundReverse engineering gene networks and identifying regulatory interactions are integral to ...
Background Sparse Gaussian graphical models are popular for inferring biological networks, such as g...
Abstract We introduce a new model selection criterion for sparse complex gene network modeling where...