Although many methods have been developed for inference of biological networks, the validation of the resulting models has largely remained an unsolved problem. Here we present a framework for quantitative assessment of inferred gene interaction networks using knock-down data from cell line experiments. Using this framework we are able to show that network inference based on integration of prior knowledge derived from the biomedical literature with genomic data significantly improves the quality of inferred networks relative to other approaches. Our results also suggest that cell line experiments can be used to quantitatively assess the quality of networks inferred from tumor samples. © 2014.SCOPUS: ar.jSCOPUS: ar.jinfo:eu-repo/semantics/pu...
The inference of gene networks from large-scale human genomic data is challenging due to the difficu...
Transcriptomic data quantifying gene expression states for single cells or cell populations at a gen...
To understand how the components of a complex system like the biological cell interact and regulate ...
When inferring networks from high-throughput genomic data, one of the main challenges is the subsequ...
Scientists today have access to an unprecedented arsenal of high-tech tools that can be used to thor...
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 ...
Biological network models have become standard tools for genome-wide analysis of both cancer disease...
Predictive Networks: a new framework for inferring robust networks from gene expression data Benjam...
In this thesis we present methods for applying techniques from complex net-work theory to analyze an...
Numerous methods have been developed for inferring gene regulatory networks from expression data, ho...
Transcriptomic data quantifying gene expression states for single cells or cell populations at a gen...
Transcriptomic data quantifying gene expression states for single cells or cell populations at a gen...
BACKGROUND: Reverse-engineering gene networks from expression profiles is a difficult problem for wh...
The inference of gene networks from large-scale human genomic data is challenging due to the difficu...
Transcriptomic data quantifying gene expression states for single cells or cell populations at a gen...
To understand how the components of a complex system like the biological cell interact and regulate ...
When inferring networks from high-throughput genomic data, one of the main challenges is the subsequ...
Scientists today have access to an unprecedented arsenal of high-tech tools that can be used to thor...
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 ...
Biological network models have become standard tools for genome-wide analysis of both cancer disease...
Predictive Networks: a new framework for inferring robust networks from gene expression data Benjam...
In this thesis we present methods for applying techniques from complex net-work theory to analyze an...
Numerous methods have been developed for inferring gene regulatory networks from expression data, ho...
Transcriptomic data quantifying gene expression states for single cells or cell populations at a gen...
Transcriptomic data quantifying gene expression states for single cells or cell populations at a gen...
BACKGROUND: Reverse-engineering gene networks from expression profiles is a difficult problem for wh...
The inference of gene networks from large-scale human genomic data is challenging due to the difficu...
Transcriptomic data quantifying gene expression states for single cells or cell populations at a gen...
To understand how the components of a complex system like the biological cell interact and regulate ...