BACKGROUND: Mathematical modeling is an important tool in systems biology to study the dynamic property of complex biological systems. However, one of the major challenges in systems biology is how to infer unknown parameters in mathematical models based on the experimental data sets, in particular, when the data are sparse and the regulatory network is stochastic. RESULTS: To address this issue, this work proposed a new algorithm to estimate parameters in stochastic models using simulated likelihood density in the framework of approximate Bayesian computation. Two stochastic models were used to demonstrate the efficiency and effectiveness of the proposed method. In addition, we designed another algorithm based on a novel objective function...
Almost all fields of science rely upon statistical inference to estimate unknown parameters in theor...
We compare three state-of-the-art Bayesian inference methods for the estimation of the unknown param...
The accurate construction and verification of mathematical models from data in biology are paramount...
A b s t r a c t: This paper proposes to use approximate instead of exact stochastic simulation algor...
Stochastic systems in biology often exhibit substantial variability within and between cells. This v...
Approximate Bayesian computation has become an essential tool for the analysis of complex stochastic...
Free to read Approximate Bayesian computation has become an essential tool for the analysis of compl...
parameter inference of discrete stochastic models using simulated likelihood densit
Bayesian statistics provides a principled framework for performing statistical inference for an unkn...
Statistical models are the traditional choice to test scientific theories when observations, process...
Models defined by stochastic differential equations (SDEs) allow for the representation of random va...
Parameter inference and model selection are very important for mathematical modeling in systems biol...
A new multi-level Markov chain Monte Carlo algorithm for Bayesian inference, ABC-SubSim, has recentl...
Approximate Bayesian computation (ABC) has become an essential tool for the anal-ysis of complex sto...
Parameter inference and model selection are very important for mathematical modeling in systems biol...
Almost all fields of science rely upon statistical inference to estimate unknown parameters in theor...
We compare three state-of-the-art Bayesian inference methods for the estimation of the unknown param...
The accurate construction and verification of mathematical models from data in biology are paramount...
A b s t r a c t: This paper proposes to use approximate instead of exact stochastic simulation algor...
Stochastic systems in biology often exhibit substantial variability within and between cells. This v...
Approximate Bayesian computation has become an essential tool for the analysis of complex stochastic...
Free to read Approximate Bayesian computation has become an essential tool for the analysis of compl...
parameter inference of discrete stochastic models using simulated likelihood densit
Bayesian statistics provides a principled framework for performing statistical inference for an unkn...
Statistical models are the traditional choice to test scientific theories when observations, process...
Models defined by stochastic differential equations (SDEs) allow for the representation of random va...
Parameter inference and model selection are very important for mathematical modeling in systems biol...
A new multi-level Markov chain Monte Carlo algorithm for Bayesian inference, ABC-SubSim, has recentl...
Approximate Bayesian computation (ABC) has become an essential tool for the anal-ysis of complex sto...
Parameter inference and model selection are very important for mathematical modeling in systems biol...
Almost all fields of science rely upon statistical inference to estimate unknown parameters in theor...
We compare three state-of-the-art Bayesian inference methods for the estimation of the unknown param...
The accurate construction and verification of mathematical models from data in biology are paramount...