Mathematical modeling and analysis of biochemical reaction networks are key routines in computational systems biology and biophysics; however, it remains difficult to choose the most valid model. Here, we propose a computational framework for data-driven and systematic inference of a nonlinear biochemical network model. The framework is based on the expectation-maximization algorithm combined with particle smoother and sparse regularization techniques. In this method, a “redundant” model consisting of an excessive number of nodes and regulatory paths is iteratively updated by eliminating unnecessary paths, resulting in an inference of the most likely model. Using artificial single-cell time-course data showing heterogeneous oscillatory beha...
ObjectiveThe complexity of biochemical networks is enormous and difficult to unravel by intuitive re...
International audienceBiochemical networks are used in computational biology, to model the static an...
ObjectiveThe complexity of biochemical networks is enormous and difficult to unravel by intuitive re...
Background: Determining the interaction topology of biological systems is a topic that currently at...
Background Determining the interaction topology of biological systems is a topic that currently att...
Motivation: Network models are widely used as structural summaries of biochemical systems. Statistic...
MOTIVATION: Networks are widely used as structural summaries of biochemical systems. Statistical est...
Reconstruction of biochemical reaction networks is a central topic in systems biology which raises c...
Abstract High-throughput data acquisition in synthetic biology leads to an abundance of data that n...
Abstract High-throughput data acquisition in synthetic biology leads to an abundance of data that n...
Reconstruction of biochemical reaction networks (BRN) and genetic regulatory networks (GRN) in parti...
Network representations of biological systems are widespread and reconstructing unknown networks fro...
Reconstruction of biochemical reaction networks (BRN) and genetic regulatory networks (GRN) in parti...
Motivation: The inference of biochemical networks, such as gene regulatory networks, protein–protein...
peer reviewedReconstruction of biochemical reaction networks (BRN) and genetic regulatory networks (...
ObjectiveThe complexity of biochemical networks is enormous and difficult to unravel by intuitive re...
International audienceBiochemical networks are used in computational biology, to model the static an...
ObjectiveThe complexity of biochemical networks is enormous and difficult to unravel by intuitive re...
Background: Determining the interaction topology of biological systems is a topic that currently at...
Background Determining the interaction topology of biological systems is a topic that currently att...
Motivation: Network models are widely used as structural summaries of biochemical systems. Statistic...
MOTIVATION: Networks are widely used as structural summaries of biochemical systems. Statistical est...
Reconstruction of biochemical reaction networks is a central topic in systems biology which raises c...
Abstract High-throughput data acquisition in synthetic biology leads to an abundance of data that n...
Abstract High-throughput data acquisition in synthetic biology leads to an abundance of data that n...
Reconstruction of biochemical reaction networks (BRN) and genetic regulatory networks (GRN) in parti...
Network representations of biological systems are widespread and reconstructing unknown networks fro...
Reconstruction of biochemical reaction networks (BRN) and genetic regulatory networks (GRN) in parti...
Motivation: The inference of biochemical networks, such as gene regulatory networks, protein–protein...
peer reviewedReconstruction of biochemical reaction networks (BRN) and genetic regulatory networks (...
ObjectiveThe complexity of biochemical networks is enormous and difficult to unravel by intuitive re...
International audienceBiochemical networks are used in computational biology, to model the static an...
ObjectiveThe complexity of biochemical networks is enormous and difficult to unravel by intuitive re...