Deterministic dynamic models play a crucial role in elucidating the function of biological networks. However, the underlying biological mechanisms are often only partially known, and different biological hypotheses on the unknown molecular mechanisms lead to multiple potential network topologies for the model. Limitations in generating comprehensive quantitative data often prevent identification of the correct model topology and additionally leave substantial uncertainty about a model's parameter values. Here, we introduce an experiment design method for model discrimination under parameter uncertainty. We focus on genetic perturbations, such as gene deletions, as our possible experimental interventions. We start from an initial dataset and...
Experimental design attempts to maximise the information available for modelling tasks. An optimal e...
Background Mathematical modeling is often used to formalize hypotheses on how a biochemical network ...
Experimental design attempts to maximise the information available for modelling tasks. An optimal e...
Computational models have emerged as a key tool to study and characterize the behavior of biological...
Computational models have emerged as a key tool to study and characterize the behavior of biological...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Biological Engineering, 2014.Ca...
11 pages, 1 table, 6 figuresModeling parts and circuits represents a significant roadblock to automa...
8 pages, 4 figuresData-driven inference of the most plausible mechanistic model within a set of can...
Despite the ever-increasing interest in understanding biology at the system level, there are several...
Progress in systems and synthetic biology is driven by mathematical and experimental collaboration. ...
Background: Most dynamical models for genomic networks are built upon two current methodologies, one...
Background Mathematical modeling is often used to formalize hypotheses on how a biochemical network ...
Abstract Background The success of molecular systems biology hinges on the ability to use computatio...
Background: The success of molecular systems biology hinges on the ability to use computational mo...
Background The success of molecular systems biology hinges on the ability to use computational mode...
Experimental design attempts to maximise the information available for modelling tasks. An optimal e...
Background Mathematical modeling is often used to formalize hypotheses on how a biochemical network ...
Experimental design attempts to maximise the information available for modelling tasks. An optimal e...
Computational models have emerged as a key tool to study and characterize the behavior of biological...
Computational models have emerged as a key tool to study and characterize the behavior of biological...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Biological Engineering, 2014.Ca...
11 pages, 1 table, 6 figuresModeling parts and circuits represents a significant roadblock to automa...
8 pages, 4 figuresData-driven inference of the most plausible mechanistic model within a set of can...
Despite the ever-increasing interest in understanding biology at the system level, there are several...
Progress in systems and synthetic biology is driven by mathematical and experimental collaboration. ...
Background: Most dynamical models for genomic networks are built upon two current methodologies, one...
Background Mathematical modeling is often used to formalize hypotheses on how a biochemical network ...
Abstract Background The success of molecular systems biology hinges on the ability to use computatio...
Background: The success of molecular systems biology hinges on the ability to use computational mo...
Background The success of molecular systems biology hinges on the ability to use computational mode...
Experimental design attempts to maximise the information available for modelling tasks. An optimal e...
Background Mathematical modeling is often used to formalize hypotheses on how a biochemical network ...
Experimental design attempts to maximise the information available for modelling tasks. An optimal e...