Motivation: Biological systems are understood through iterations of modeling and experimentation. Not all experiments, however, are equally valuable for predictive modeling. This study introduces an efficient method for experimental design aimed at selecting dynamical models from data. Motivated by biological applications, the method enables the design of crucial experiments: it determines a highly informative selection of measurement readouts and time points. Results: We demonstrate formal guarantees of design efficiency on the basis of previous results. By reducing our task to the setting of graphical models, we prove that the method finds a near-optimal design selection with a polynomial number of evaluations. Moreover, the method exhibi...
Our understanding of most biological systems is in its infancy. Learning their structure and intrica...
8 pages, 4 figuresData-driven inference of the most plausible mechanistic model within a set of can...
Experimental design attempts to maximise the information available for modelling tasks. An optimal e...
MOTIVATION: Biological systems are understood through iterations of modeling and experimentation. N...
<div><p>This model-based design of experiments (MBDOE) method determines the input magnitudes of an ...
The Design-Build-Test-Learn cycle is the main approach of synthetic biology to re-design and create ...
This model-based design of experiments (MBDOE) method determines the input magni-tudes of an experim...
International audienceOne of the most crippling problems in quantitative and synthetic biology is th...
Background: The success of molecular systems biology hinges on the ability to use computational mo...
International audienceBorrowing ideas from Bayesian experimental design and active learning, we prop...
Motivation: Systems biology employs mathematical modelling to further our understanding of biochemic...
The optimal experimental design (OED) for observation strategy is investigated in this paper to coll...
19 pages, 6 figuresDynamic modeling in systems and synthetic biology is still quite a challenge—the ...
Motivation: Systems biology employs mathematical modelling to fur-ther our understanding of biochemi...
Background Mathematical modeling is often used to formalize hypotheses on how a biochemical network ...
Our understanding of most biological systems is in its infancy. Learning their structure and intrica...
8 pages, 4 figuresData-driven inference of the most plausible mechanistic model within a set of can...
Experimental design attempts to maximise the information available for modelling tasks. An optimal e...
MOTIVATION: Biological systems are understood through iterations of modeling and experimentation. N...
<div><p>This model-based design of experiments (MBDOE) method determines the input magnitudes of an ...
The Design-Build-Test-Learn cycle is the main approach of synthetic biology to re-design and create ...
This model-based design of experiments (MBDOE) method determines the input magni-tudes of an experim...
International audienceOne of the most crippling problems in quantitative and synthetic biology is th...
Background: The success of molecular systems biology hinges on the ability to use computational mo...
International audienceBorrowing ideas from Bayesian experimental design and active learning, we prop...
Motivation: Systems biology employs mathematical modelling to further our understanding of biochemic...
The optimal experimental design (OED) for observation strategy is investigated in this paper to coll...
19 pages, 6 figuresDynamic modeling in systems and synthetic biology is still quite a challenge—the ...
Motivation: Systems biology employs mathematical modelling to fur-ther our understanding of biochemi...
Background Mathematical modeling is often used to formalize hypotheses on how a biochemical network ...
Our understanding of most biological systems is in its infancy. Learning their structure and intrica...
8 pages, 4 figuresData-driven inference of the most plausible mechanistic model within a set of can...
Experimental design attempts to maximise the information available for modelling tasks. An optimal e...