part of DREAM4 solicited the inference of cycle-rich gene regulatory networks from heterogeneous, noisy expression data including time courses as well as knockout, knockdown and multifactorial perturbations. networks of size 10 with an area under the precision-recall curve (AUPR) of 81%. Besides topology, we inferred a range of additional mechanistic details with good reliability, e.g. distinguishing activation from inhibition as well as dependent from independent regulation. Our models also performed well on new experimental conditions such as double knockout mutations that were not included in the provided datasets.The inference of biological networks substantially benefits from methods that are expressive enough to deal with diverse dat...
In the context of reverse engineering of biological networks, simulators are helpful to test and com...
International audienceRegulatory networks are at the core of all biological functions from bio-chemi...
Abstract. In order to understand complex genetic regulatory networks researchers require automated f...
part of DREAM4 solicited the inference of cycle-rich gene regulatory networks from heterogeneous, n...
BACKGROUND: The recent DREAM4 blind assessment provided a particularly realistic and challenging set...
Background: The recent DREAM4 blind assessment provided a particularly realistic and challenging set...
Gene Regulatory Networks are models of genes and gene interactions at the expression level. The adve...
The inference of gene regulatory networks (GRNs) from expression data is a challenging problem in sy...
<p>In Petri nets, states such as effector (e) or target (t) gene levels are represented by places an...
Reverse engineering of gene regulatory networks (GRNs) is the process of estimating genetic interact...
Inferring Gene Regulatory Networks (GRNs) from expression data is one of the most challenging topic ...
To address one of the most challenging issues at the cellular level, this paper surveys the fuzzy me...
Inferring Gene Regulatory Networks (GRNs) from expression data is one of the most challenging topic ...
Abstract Regulatory networks are at the core of all biological functions from bio-chemical pathways ...
Copyright © 2012 Roozbeh Manshaei et al. This is an open access article distributed under the Creati...
In the context of reverse engineering of biological networks, simulators are helpful to test and com...
International audienceRegulatory networks are at the core of all biological functions from bio-chemi...
Abstract. In order to understand complex genetic regulatory networks researchers require automated f...
part of DREAM4 solicited the inference of cycle-rich gene regulatory networks from heterogeneous, n...
BACKGROUND: The recent DREAM4 blind assessment provided a particularly realistic and challenging set...
Background: The recent DREAM4 blind assessment provided a particularly realistic and challenging set...
Gene Regulatory Networks are models of genes and gene interactions at the expression level. The adve...
The inference of gene regulatory networks (GRNs) from expression data is a challenging problem in sy...
<p>In Petri nets, states such as effector (e) or target (t) gene levels are represented by places an...
Reverse engineering of gene regulatory networks (GRNs) is the process of estimating genetic interact...
Inferring Gene Regulatory Networks (GRNs) from expression data is one of the most challenging topic ...
To address one of the most challenging issues at the cellular level, this paper surveys the fuzzy me...
Inferring Gene Regulatory Networks (GRNs) from expression data is one of the most challenging topic ...
Abstract Regulatory networks are at the core of all biological functions from bio-chemical pathways ...
Copyright © 2012 Roozbeh Manshaei et al. This is an open access article distributed under the Creati...
In the context of reverse engineering of biological networks, simulators are helpful to test and com...
International audienceRegulatory networks are at the core of all biological functions from bio-chemi...
Abstract. In order to understand complex genetic regulatory networks researchers require automated f...