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Mathematical foundations of the dendritic growth models

机译:树突生长模型的数学基础

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At present two growth models describe successfully the distribution of size and topological complexity in populations of dendritic trees with considerable accuracy and simplicity, the BE model (Van Pelt et al. in J. Comp. Neurol. 387:325-340, 1997) and the S model (Van Pelt and Verwer in Bull. Math. Biol. 48:197-211, 1986). This paper discusses the mathematical basis of these models and analyzes quantitatively the relationship between the BE model and the S model assumed in the literature by developing a new explicit equation describing the BES model (a dendritic growth model integrating the features of both preceding models; Van Pelt et al. in J. Comp. Neurol. 387:325-340, 1997). In numerous studies it is implicitly presupposed that the S model is conditionally linked to the BE model (Granato and Van Pelt in Brain Res. Dev. Brain Res. 142:223-227, 2003; Uylings and Van Pelt in Network 13:397-414, 2002; Van Pelt, Dityatev and Uylings in J. Comp. Neurol. 387:325-340, 1997; Van Pelt and Schierwagen in Math. Biosci. 188:147-155, 2004; Van Pelt and Uylings in Network. 13:261-281, 2002; Van Pelt, Van Ooyen and Uylings in Modeling Dendritic Geometry and the Development of Nerve Connections, pp 179, 2000). In this paper we prove the non-exactness of this assumption, quantify involved errors and determine the conditions under which the BE and S models can be separately used instead of the BES model, which is more exact but considerably more difficult to apply. This study leads to a novel expression describing the BE model in an analytical closed form, much more efficient than the traditional iterative equation (Van Pelt et al. in J. Comp. Neurol. 387:325-340, 1997) in many neuronal classes. Finally we propose a new algorithm in order to obtain the values of the parameters of the BE model when this growth model is matched to experimental data, and discuss its advantages and improvements over the more commonly used procedures.
机译:目前,两个生长模型以相当大的准确性和简单性成功地描述了树状树种群中大小和拓扑复杂性的分布,即BE模型(Van Pelt等人,J。Comp。Neurol。387:325-340,1997)和S模型(Van Pelt and Verwer in Bull。Math。Biol。48:197-211,1986)。本文讨论了这些模型的数学基础,并通过开发一个描述BES模型的新的显式方程(结合了前述两个模型特征的树突生长模型; Van)来定量分析文献中假设的BE模型和S模型之间的关系。 Pelt等人,J.Comp.Neurol.387:325-340,1997)。在许多研究中,都隐含地假设S模型与BE模型有条件地关联(Granato和Van Pelt在Brain Res。Dev。Brain Res。142:223-227,2003; Uylings和Van Pelt在Network 13:397- 414,2002; Van Pelt,Dityatev and Uylings in J. Comp。Neurol.387:325-340,1997; Van Pelt and Schierwagen in Math.Biosci.188:147-155,2004; Van Pelt and Uylings in Network.13 :261-281,2002; Van Pelt,Van Ooyen和Uylings在树突状几何模型和神经连接的发展中,第179页,2000年)。在本文中,我们证明了该假设的不精确性,量化了所涉及的误差,并确定了可以单独使用BE和S模型而不是BES模型的条件,后者更为精确,但应用起来却更加困难。这项研究导致了一种新颖的表达式,它以解析的封闭形式描述了BE模型,比许多神经元类中的传统迭代方程式(Van Pelt等人,J。Comp。Neurol。387:325-340,1997)有效得多。 。最后,我们提出了一种新算法,以便在该增长模型与实验数据匹配时获得BE模型的参数值,并讨论其在较常用过程上的优势和改进。

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