Calibration or model parameter estimation from measured data is an ubiquitous problem in engineering. In systems biology this problem turns out to be particularly challenging due to very short data-records, low signal-to-noise ratio of data acquisition, large intrinsic process noise and limited measurement access to only a few, of sometimes several hundreds, state variables. We review state-of-the-art model calibration techniques and also discuss their relation to the general reverse-engineering problem in systems biology. For biomolecular circuits involving low-copy-number molecules we adopt a Markov process setup and discuss a calibration approach based on suitable metrics between probability measures and propose the metrics computation f...
High-throughput experimentation has revolutionized data-driven experimental sciences and opened the ...
The stochastic dynamics of biochemical reaction networks can be modeled using a number of succinct f...
High-throughput experimentation has revolutionized data-driven experimental sciences and opened the ...
Calibration or model parameter estimation from measured data is an ubiquitous problem in engineering...
Abstract — Calibration or model parameter estimation from measured data is an ubiquitous problem in ...
Abstract Background The importance of stochasticity in cellular processes having low number of molec...
Abstract. Model checking has historically been an important tool to verify models of a wide variety ...
In this thesis, we study two fundamental problems that arise in the modeling of stochastic systems: ...
The estimation of parameter values (model calibration) is the bottleneck of the computational analys...
Background Fluorescent and luminescent gene reporters allow us to dynamically quantify changes in ...
We consider the problem of synthesising rate parameters for stochastic biochemical networks so that ...
The stochastic dynamics of biochemical reaction networks can be modeled using a number of succinct f...
We consider the problem of synthesising rate parameters for stochastic biochemical networks so that ...
A goal of systems biology is to understand the dynamics of intracellu-lar systems. Stochastic chemic...
The stochastic dynamics of biochemical reaction networks can be modeled using a number of succinct f...
High-throughput experimentation has revolutionized data-driven experimental sciences and opened the ...
The stochastic dynamics of biochemical reaction networks can be modeled using a number of succinct f...
High-throughput experimentation has revolutionized data-driven experimental sciences and opened the ...
Calibration or model parameter estimation from measured data is an ubiquitous problem in engineering...
Abstract — Calibration or model parameter estimation from measured data is an ubiquitous problem in ...
Abstract Background The importance of stochasticity in cellular processes having low number of molec...
Abstract. Model checking has historically been an important tool to verify models of a wide variety ...
In this thesis, we study two fundamental problems that arise in the modeling of stochastic systems: ...
The estimation of parameter values (model calibration) is the bottleneck of the computational analys...
Background Fluorescent and luminescent gene reporters allow us to dynamically quantify changes in ...
We consider the problem of synthesising rate parameters for stochastic biochemical networks so that ...
The stochastic dynamics of biochemical reaction networks can be modeled using a number of succinct f...
We consider the problem of synthesising rate parameters for stochastic biochemical networks so that ...
A goal of systems biology is to understand the dynamics of intracellu-lar systems. Stochastic chemic...
The stochastic dynamics of biochemical reaction networks can be modeled using a number of succinct f...
High-throughput experimentation has revolutionized data-driven experimental sciences and opened the ...
The stochastic dynamics of biochemical reaction networks can be modeled using a number of succinct f...
High-throughput experimentation has revolutionized data-driven experimental sciences and opened the ...