哺乳动物皮质神经元密度和白质体积的缩放。

Journal fur Hirnforschung Pub Date : 1997-01-01
J Prothero
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引用次数: 0

摘要

先前的缩放模型,基于重复的皮质单元,其数量和大小随着脑容量的增加而增加,给出了皮质厚度(1/9)、外(可见)表面积(2/3)、折叠皮质表面积(8/9)和皮质体积(1)的离散指数,每一个都是脑容量的函数。这些指数与经验数据的多样性是合理一致的(Prothero, 1997)。Rockel et al.(1980)报道,在横跨皮层(皮亚到白质)的窄柱中测定的神经元数量在几个不同的大脑区域和物种中是不变的。根据经验,由于皮质厚度的尺度大约是脑容量的1/9次方,他们的数据意味着神经元线密度(穿过皮质)的指数约为-1/9。Rockel等人(1980)也认为皮层神经元表面密度是不变的。这一外推表明,神经元体积密度的尺度,如线密度,是脑体积的-1/9次方,与Haug(1987)和Tower(1954)的数据存在显著差异。目前的模型假设每个重复单元的神经元数量不变。因此,与Rockel等人(1980)一致,通过皮质厚度测定神经元数量与大脑大小无关。该模型预测神经元线密度(在任何方向上)按脑容量的-1/9次方进行缩放。现在神经元体积密度的尺度是脑体积的-1/3次方,这与Haug(1987)和Tower(1954)的结果相当一致。对于白质,我假设平均轴突长度与脑直径成比例(指数为1/3)。白质轴突的数量与重复单元的数量成正比(指数为2/3)。鉴于白质轴突的大小分布不变,因此白质体积的指数为1,这与Haug(1970)的结论相当一致。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Scaling of cortical neuron density and white matter volume in mammals.

A prior scaling model, based on repeating cortical units, whose number and size increase with brain size, gave discrete exponents for cortical thickness (1/9), outer (visible) surface area (2/3), folded cortical surface area (8/9) and cortical volume (1), each as a function of brain volume. These exponents are in reasonable agreement with a diversity of empirical data (Prothero, 1997). Rockel et al. (1980) reported that neuron number, assayed in a narrow column across cortex (pia to white matter) is invariant over several differing brain regions and species. Since cortical thickness scales, empirically, as about the 1/9 power of brain volume, their data imply that neuron line density (across cortex) scales with an exponent of about -1/9. Rockel et al. (1980) also urged that cortical neuron surface density is invariant. This extrapolation implies that neuron volume density scales, like line density, as the -1/9 power of brain volume, in marked disparity with the data of Haug (1987) and Tower (1954). The present model assumes an invariant number of neurons per repeating unit. Thus neuron number, assayed across cortical thickness, is independent of brain size, in accord with Rockel et al. (1980). The model predicts that neuron line density (in any direction) scales as the -1/9 power of brain volume. Now neuron volume density scales as the -1/3 power of brain volume, in reasonable agreement with the results of Haug (1987) and Tower (1954). For white matter, I assume that mean axon length scales with brain diameter (exponent of 1/3). The number of white matter axons scales in proportion to the number of repeating units (exponent of 2/3). Given an invariant size distribution of white matter axons, white matter volume thus scales with an exponent of one, in reasonable accord with Haug (1970).

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