Systems biology models are used to understand complex biological and physiological systems. Interpretation of these models is an important part of developing this understanding. These models are often fit to experimental data in order to understand how the system has produced various phenomena or behaviour that are seen in the data. In this paper, we have outlined a framework that can be used to perform Bayesian analysis of complex systems biology models. In particular, we have focussed on analysing a systems biology of the brain using both simulated and measured data. By using a combination of sensitivity analysis and approximate Bayesian computation, we have shown that it is possible to obtain distributions of parameters that can better g...
Bayesian inference has taken FMRI methods research into areas that frequentist statistics have strug...
Here we apply Bayesian system identification methods to infer stimulus-neuron and neuron-neuron depe...
Item does not contain fulltextThis chapter provides an introduction to Bayesian models and their app...
Systems biology models are used to understand complex biological and physiological systems. Interpre...
Motivation: Model selection and parameter inference are complex problems of long-standing interest i...
This paper describes and validates a novel framework using the Approximate Bayesian Computation (ABC...
Inferring parameters for models of biological processes is a current challenge in systems biology, a...
Dynamical systems modeling, particularly via systems of ordinary differential equations, has been us...
Typically in neuroimaging we are looking to extract some pertinent information from imperfect, noisy...
In Penny et al. [Penny, W., Ghahramani, Z., Friston, K.J. 2005. Bilinear dynamical systems. Philos. ...
Motivation: Dynamical models describing intracellular phenomena are increasing in size and complexit...
The task of system identification lies at the heart of neural data analysis. Bayesian system identif...
Dynamical systems modeling, particularly via systems of ordinary differential equations, has been us...
Many modern biomedical studies record vast amounts of data on individual subjects. The observed data...
A b s t r a c t: This paper proposes to use approximate instead of exact stochastic simulation algor...
Bayesian inference has taken FMRI methods research into areas that frequentist statistics have strug...
Here we apply Bayesian system identification methods to infer stimulus-neuron and neuron-neuron depe...
Item does not contain fulltextThis chapter provides an introduction to Bayesian models and their app...
Systems biology models are used to understand complex biological and physiological systems. Interpre...
Motivation: Model selection and parameter inference are complex problems of long-standing interest i...
This paper describes and validates a novel framework using the Approximate Bayesian Computation (ABC...
Inferring parameters for models of biological processes is a current challenge in systems biology, a...
Dynamical systems modeling, particularly via systems of ordinary differential equations, has been us...
Typically in neuroimaging we are looking to extract some pertinent information from imperfect, noisy...
In Penny et al. [Penny, W., Ghahramani, Z., Friston, K.J. 2005. Bilinear dynamical systems. Philos. ...
Motivation: Dynamical models describing intracellular phenomena are increasing in size and complexit...
The task of system identification lies at the heart of neural data analysis. Bayesian system identif...
Dynamical systems modeling, particularly via systems of ordinary differential equations, has been us...
Many modern biomedical studies record vast amounts of data on individual subjects. The observed data...
A b s t r a c t: This paper proposes to use approximate instead of exact stochastic simulation algor...
Bayesian inference has taken FMRI methods research into areas that frequentist statistics have strug...
Here we apply Bayesian system identification methods to infer stimulus-neuron and neuron-neuron depe...
Item does not contain fulltextThis chapter provides an introduction to Bayesian models and their app...