For many stochastic models of interest in systems biology, such as those describing biochemical reaction networks, exact quantification of parameter uncertainty through statistical inference is intractable. Likelihood-free computational inference techniques enable parameter inference when the likelihood function for the model is intractable but the generation of many sample paths is feasible through stochastic simulation of the forward problem. The most common likelihood-free method in systems biology is approximate Bayesian computation that accepts parameters that result in low discrepancy between stochastic simulations and measured data. However, it can be difficult to assess how the accuracy of the resulting inferences are affected by th...
Biology is the science of life and living organisms. Empowered by the deployment of several automate...
The development of mechanistic models of biological systems is a central part of Systems Biology. On...
Biochemical reaction networks are often modelled using discrete-state, continuous-time Markov chains...
For many stochastic models of interest in systems biology, such as those describing biochemical reac...
Stochasticity is a key characteristic of intracellular processes such as gene regulation and chemica...
Stochastic methods for simulating biochemical reaction networks often provide a more realistic descr...
Computational systems biology is concerned with the development of detailed mechanistic models of bi...
Stochastic simulation algorithms provide a powerful means to understand complex biochemical processe...
BACKGROUND: Mathematical modeling is an important tool in systems biology to study the dynamic prope...
A b s t r a c t: This paper proposes to use approximate instead of exact stochastic simulation algor...
Discrete and stochastic models in systems biology, such as biochemical reaction networks, can be mod...
Stochastic systems in biology often exhibit substantial variability within and between cells. This v...
As modeling becomes a more widespread practice in the life sciences and biomedical sciences, researc...
Stochastic models of biochemical reaction networks are often more realistic descriptions of cellular...
The development of mechanistic models of biological systems is a central part of Systems Biology. On...
Biology is the science of life and living organisms. Empowered by the deployment of several automate...
The development of mechanistic models of biological systems is a central part of Systems Biology. On...
Biochemical reaction networks are often modelled using discrete-state, continuous-time Markov chains...
For many stochastic models of interest in systems biology, such as those describing biochemical reac...
Stochasticity is a key characteristic of intracellular processes such as gene regulation and chemica...
Stochastic methods for simulating biochemical reaction networks often provide a more realistic descr...
Computational systems biology is concerned with the development of detailed mechanistic models of bi...
Stochastic simulation algorithms provide a powerful means to understand complex biochemical processe...
BACKGROUND: Mathematical modeling is an important tool in systems biology to study the dynamic prope...
A b s t r a c t: This paper proposes to use approximate instead of exact stochastic simulation algor...
Discrete and stochastic models in systems biology, such as biochemical reaction networks, can be mod...
Stochastic systems in biology often exhibit substantial variability within and between cells. This v...
As modeling becomes a more widespread practice in the life sciences and biomedical sciences, researc...
Stochastic models of biochemical reaction networks are often more realistic descriptions of cellular...
The development of mechanistic models of biological systems is a central part of Systems Biology. On...
Biology is the science of life and living organisms. Empowered by the deployment of several automate...
The development of mechanistic models of biological systems is a central part of Systems Biology. On...
Biochemical reaction networks are often modelled using discrete-state, continuous-time Markov chains...