Stochasticity is a key characteristic of intracellular processes such as gene regulation and chemical signalling. Therefore, characterizing stochastic effects in biochemical systems is essential to understand the complex dynamics of living things. Mathematical idealizations of biochemically reacting systems must be able to capture stochastic phenomena. While robust theory exists to describe such stochastic models, the computational challenges in exploring these models can be a significant burden in practice since realistic models are analytically intractable. Determining the expected behaviour and variability of a stochastic biochemical reaction network requires many probabilistic simulations of its evolution. Using a biochemical reaction n...
The use of rate models for networks of stochastic reactions is frequently used to comprehend the mac...
Recent studies through biological experiments have indicated that noise plays a very important role ...
Stochastic simulation algorithms provide a powerful means to understand complex biochemical processe...
Stochasticity is a key characteristic of intracellular processes such as gene regulation and chemica...
Background: In recent years, several stochastic simulation algorithms have been developed to generat...
Stochastic methods for simulating biochemical reaction networks often provide a more realistic descr...
Computational techniques provide invaluable tools for developing a quantitative understanding the co...
Abstract Background Intrinsic fluctuations due to the...
In this talk, we present stochastic modeling and computational methods for the time-evolution of rea...
Stochastic simulation has been widely used to model the dynamics of biochemical reaction networks. S...
<p>Additional approaches not listed here are referenced via reviews in the text.</p
AbstractThis paper presents a stochastic modelling framework based on stochastic automata networks (...
Mathematical modelling opens the door to a rich pathway to study the dynamic properties of biologica...
University of Minnesota Ph.D. dissertation. June 2018. Major: Chemical Engineering. Advisor: Prodrom...
Abstract — Stochastic models of biological networks are well established in systems biology, where t...
The use of rate models for networks of stochastic reactions is frequently used to comprehend the mac...
Recent studies through biological experiments have indicated that noise plays a very important role ...
Stochastic simulation algorithms provide a powerful means to understand complex biochemical processe...
Stochasticity is a key characteristic of intracellular processes such as gene regulation and chemica...
Background: In recent years, several stochastic simulation algorithms have been developed to generat...
Stochastic methods for simulating biochemical reaction networks often provide a more realistic descr...
Computational techniques provide invaluable tools for developing a quantitative understanding the co...
Abstract Background Intrinsic fluctuations due to the...
In this talk, we present stochastic modeling and computational methods for the time-evolution of rea...
Stochastic simulation has been widely used to model the dynamics of biochemical reaction networks. S...
<p>Additional approaches not listed here are referenced via reviews in the text.</p
AbstractThis paper presents a stochastic modelling framework based on stochastic automata networks (...
Mathematical modelling opens the door to a rich pathway to study the dynamic properties of biologica...
University of Minnesota Ph.D. dissertation. June 2018. Major: Chemical Engineering. Advisor: Prodrom...
Abstract — Stochastic models of biological networks are well established in systems biology, where t...
The use of rate models for networks of stochastic reactions is frequently used to comprehend the mac...
Recent studies through biological experiments have indicated that noise plays a very important role ...
Stochastic simulation algorithms provide a powerful means to understand complex biochemical processe...