Department of Artificial Intelligence, Faculty of Mathematics and Natural Sciences, University of Groningen, Groningen, The Netherlands.
J Theor Biol. 2011 May 7;276(1):159-73. doi: 10.1016/j.jtbi.2011.01.039. Epub 2011 Feb 3.
In this paper we introduce a continuous time stochastic neurite branching model closely related to the discrete time stochastic BES-model. The discrete time BES-model is underlying current attempts to simulate cortical development, but is difficult to analyze. The new continuous time formulation facilitates analytical treatment thus allowing us to examine the structure of the model more closely. We derive explicit expressions for the time dependent probabilities p(γ,t) for finding a tree γ at time t, valid for arbitrary continuous time branching models with tree and segment dependent branching rates. We show, for the specific case of the continuous time BES-model, that as expected from our model formulation, the sums needed to evaluate expectation values of functions of the terminal segment number μ(f(n),t) do not depend on the distribution of the total branching probability over the terminal segments. In addition, we derive a system of differential equations for the probabilities p(n,t) of finding n terminal segments at time t. For the continuous BES-model, this system of differential equations gives direct numerical access to functions only depending on the number of terminal segments, and we use this to evaluate the development of the mean and standard deviation of the number of terminal segments at a time t. For comparison we discuss two cases where mean and variance of the number of terminal segments are exactly solvable. Then we discuss the numerical evaluation of the S-dependence of the solutions for the continuous time BES-model. The numerical results show clearly that higher S values, i.e. values such that more proximal terminal segments have higher branching rates than more distal terminal segments, lead to more symmetrical trees as measured by three tree symmetry indicators.
在本文中,我们引入了一个连续时间随机神经突分支模型,它与离散时间随机 BES 模型密切相关。离散时间 BES 模型是目前模拟皮质发育的基础,但很难进行分析。新的连续时间公式便于进行分析处理,从而使我们能够更仔细地检查模型的结构。我们为找到树γ的时间依赖概率 p(γ,t)导出了显式表达式,这些表达式对于具有树和段依赖分支率的任意连续时间分支模型都有效。对于连续时间 BES 模型的具体情况,我们证明了与我们的模型公式所预期的一样,评估终端段数μ(f(n),t)的函数的期望值所需的和不依赖于总分支概率在终端段上的分布。此外,我们为在时间 t 找到 n 个终端段的概率 p(n,t)导出了一个微分方程系统。对于连续 BES 模型,这个微分方程系统直接提供了仅依赖于终端段数的函数的数值访问,我们使用它来评估在某一时刻终端段数的平均值和标准偏差的发展情况。为了进行比较,我们讨论了两种情况下终端段数的平均值和方差可以精确求解的情况。然后,我们讨论了连续时间 BES 模型的解决方案中 S 依赖性的数值评估。数值结果清楚地表明,更高的 S 值,即近端终端段的分支率高于远端终端段的分支率,导致通过三个树对称性指标测量的更对称的树。