Gene regulatory networks are composed of sub-networks that are often shared across biological processes, cell-types, and organisms. Leveraging multiple sources of information, such as publicly available gene expression datasets, could therefore be helpful when learning a network of interest. Integrating data across different studies, however, raises numerous technical concerns. Hence, a common approach in network inference, and broadly in genomics research, is to separately learn models from each dataset and combine the results. Individual models, however, often suffer from under-sampling, poor generalization and limited network recovery. In this study, we explore previous integration strategies, such as batch-correction and model ensembles...
Abstract Background Reverse engineering of gene regul...
Abstract Background Reverse engineering of gene regulatory networks (GRNs) from gene expression data...
Motivation: The use of prior knowledge to improve gene regulatory network modelling has often been p...
Gene regulatory networks are composed of sub-networks that are often shared across biological proces...
International audienceBACKGROUND: Reverse engineering in systems biology entails inference of gene r...
International audienceBACKGROUND: Reverse engineering in systems biology entails inference of gene r...
International audienceBACKGROUND: Reverse engineering in systems biology entails inference of gene r...
Summary: Biological systems are driven by intricate interactions among molecules. Many methods have ...
<div><p>The task of gene regulatory network reconstruction from high-throughput data is receiving in...
AbstractMicroarray data is a key source of experimental data for modelling gene regulatory interacti...
Regulatory network reconstruction is an ongoing field of research that biologists have been pressing...
Biological systems are driven by intricate interactions among molecules. Many methods have been deve...
The task of gene regulatory network reconstruction from high-throughput data is receiving increasing...
Abstract Background Reverse engineering of gene regul...
Inferring comprehensive regulatory networks from high-throughput data is one of the foremost challen...
Abstract Background Reverse engineering of gene regul...
Abstract Background Reverse engineering of gene regulatory networks (GRNs) from gene expression data...
Motivation: The use of prior knowledge to improve gene regulatory network modelling has often been p...
Gene regulatory networks are composed of sub-networks that are often shared across biological proces...
International audienceBACKGROUND: Reverse engineering in systems biology entails inference of gene r...
International audienceBACKGROUND: Reverse engineering in systems biology entails inference of gene r...
International audienceBACKGROUND: Reverse engineering in systems biology entails inference of gene r...
Summary: Biological systems are driven by intricate interactions among molecules. Many methods have ...
<div><p>The task of gene regulatory network reconstruction from high-throughput data is receiving in...
AbstractMicroarray data is a key source of experimental data for modelling gene regulatory interacti...
Regulatory network reconstruction is an ongoing field of research that biologists have been pressing...
Biological systems are driven by intricate interactions among molecules. Many methods have been deve...
The task of gene regulatory network reconstruction from high-throughput data is receiving increasing...
Abstract Background Reverse engineering of gene regul...
Inferring comprehensive regulatory networks from high-throughput data is one of the foremost challen...
Abstract Background Reverse engineering of gene regul...
Abstract Background Reverse engineering of gene regulatory networks (GRNs) from gene expression data...
Motivation: The use of prior knowledge to improve gene regulatory network modelling has often been p...