Title :
A deterministic-stochastic crossover algorithm for simulation of complex biochemical systems
Author :
Guoxing Fu ; Sabnis, Amit ; Harrison, Robert W.
Author_Institution :
Dept. of Biol., Georgia State Univ., Atlanta, GA, USA
Abstract :
Understanding biology at the system level has gained much more interest recently due to the rapid development in genome sequencing and high-throughput measurements. Mathematical descriptions of biological systems are normally formalized using two different approaches. The deterministic method is very efficient in predicting the overall behavior of the system but ignores the inherent fluctuations and correlations at lower concentration. The stochastic method captures the intrinsic randomness but is often computationally expensive. Our group has developed a deterministic-stochastic crossover algorithm for simulating biological networks. This method features with XML-based model representation, multiple compartments and events. More importantly, the improved algorithm is able to simulate Michaelis-Menten type reactions directly. Simulation on a complex glycolysis system showed that our algorithm retained the high efficiency of deterministic method and still reflected the random fluctuations at lower concentration. The ability of revealing the stochastic property with high efficiency makes our new algorithm useful for researches and applications based on systems biology.
Keywords :
XML; biochemistry; biology computing; fluctuations; genomics; mathematical analysis; molecular biophysics; stochastic processes; Michaelis-Menten type reaction simulation; XML-based model representation; biological network simulation; biological systems; complex biochemical system simulation; complex glycolysis system; deterministic-stochastic crossover algorithm; genome sequencing; high-throughput measurements; inherent fluctuations; intrinsic randomness; mathematical descriptions; random fluctuations; systems biology; Algorithm design and analysis; Biochemistry; Biological system modeling; Biological systems; Computational modeling; Stochastic processes; Systems biology; biochemical networks; deterministic simulation; stochastic simulation;
Conference_Titel :
Computational Advances in Bio and Medical Sciences (ICCABS), 2013 IEEE 3rd International Conference on
Conference_Location :
New Orleans, LA
DOI :
10.1109/ICCABS.2013.6629194