On the simulation of biological diffusion processes

被引:12
作者
Tuckwell, HC
Lansky, P
机构
[1] CNRS MARSEILLE LUMINY, CTR PHYS THEOR, F-13288 MARSEILLE 09, FRANCE
[2] ACAD SCI CZECH REPUBL, INST PHYSIOL, CR-14220 PRAGUE 4, CZECH REPUBLIC
关键词
stochastic processes; simulation; biological diffusions;
D O I
10.1016/S0010-4825(96)00033-9
中图分类号
Q [生物科学];
学科分类号
07 ; 0710 ; 09 ;
摘要
Many phenomena of interest in biology can be modeled using diffusion processes satisfying a stochastic differential equation. We consider first the stochastic differential equation dX = mu Xdt + sigma X dW, where W is a standard Wiener process and representing a population growth process. This is simulated using both a strong Euler scheme involving normal pseudorandom numbers and a weak Euler scheme using Bernoulli pseudorandom numbers. Results are given for the mean of X(1) and its 95% confidence intervals for various numbers of simulations. It is found that there are no significant differences between the results obtained by these two schemes at a particular value of the time step, but that the weak scheme takes less computer time than the strong scheme. We also consider the process satisfying dX = (- gamma(1)X + gamma(2)(1 - X))dt + root X(1 - X)dW, representing a gene frequency under the influence of random mating and mutation. It is similarly found that the results of simulation by the two schemes are not significantly different. It is concluded that in simulations of many biological diffusion processes it is often advantageous to employ a scheme involving Bernoulli rather than Gaussian random variates not only because it involves fewer machine arithmetic operations but also because problems with large jumps that sometimes occur with extreme values of normal variates are less likely, thus enabling one to employ a larger rime step with a concomitant saving in machine time. (C) 1997 Elsevier Science Ltd.
引用
收藏
页码:1 / 7
页数:7
相关论文
共 18 条
[1]  
[Anonymous], 1973, Stability and complexity in model ecosystems
[2]   DIFFUSION APPROXIMATION AND FIRST PASSAGE TIME PROBLEM FOR A MODEL NEURON [J].
CAPOCELLI, RM ;
RICCIARDI, LM .
KYBERNETIK, 1971, 8 (06) :214-+
[3]   The variant call format and VCFtools [J].
Danecek, Petr ;
Auton, Adam ;
Abecasis, Goncalo ;
Albers, Cornelis A. ;
Banks, Eric ;
DePristo, Mark A. ;
Handsaker, Robert E. ;
Lunter, Gerton ;
Marth, Gabor T. ;
Sherry, Stephen T. ;
McVean, Gilean ;
Durbin, Richard .
BIOINFORMATICS, 2011, 27 (15) :2156-2158
[4]   RANDOM WALK MODELS FOR SPIKE ACTIVITY OF SINGLE NEURON [J].
GERSTEIN, GL ;
MANDELBROT, B .
BIOPHYSICAL JOURNAL, 1964, 4 (1P1) :41-&
[5]   A MODEL FOR NEURON FIRING WITH EXPONENTIAL DECAY OF POTENTIAL RESULTING IN DIFFUSION EQUATIOS FOR PROBABILITY DENSITY [J].
GLUSS, B .
BULLETIN OF MATHEMATICAL BIOPHYSICS, 1967, 29 (02) :233-&
[6]  
Hanson F. B., 1983, J THEOR NEUROBIOL, V2, P127
[7]  
KIMURA M., 1964, J. appl. Prob., V1, P177, DOI 10.2307/3211856
[8]  
Kloeden PE, 2011, Stochastic differential equations
[9]   DIFFUSION-APPROXIMATION OF THE NEURONAL MODEL WITH SYNAPTIC REVERSAL POTENTIALS [J].
LANSKY, P ;
LANSKA, V .
BIOLOGICAL CYBERNETICS, 1987, 56 (01) :19-26
[10]   FIRST-PASSAGE-TIME PROBLEM FOR SIMULATED STOCHASTIC DIFFUSION-PROCESSES [J].
LANSKY, P ;
LANSKA, V .
COMPUTERS IN BIOLOGY AND MEDICINE, 1994, 24 (02) :91-101