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An experimental method for measuring the mean length of cerebellar parallel fibers: validation and derivation of a correction factor by computational simulation and probability analysis.

机译:一种测量小脑平行纤维平均长度的实验方法:通过计算模拟和概率分析验证和推导校正因子。

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The length of cerebellar parallel fibers is important for information integration by the Purkinje cells. Based on the Copernican principle for analyzing the length of stochastic events, we have recently devised a stochastic method to estimate the mean length of parallel fibers within a given cerebellar region. The purpose of the present report is to provide validation of this methodology via computational simulations. We create virtual parallel fibers with known lengths and program each step of our stochastic method for computational simulation. We then compare the observed mean length obtained from our computational simulation with the known mean length of the virtual parallel fibers. In particular, we investigate the effect of cutting parallel fibers into segments during histological sectioning. Our computational results reveal an over-estimation factor ranging from 1.0 (no correction is necessary) to 2.0 as the parallel fiber segmentation becomes increasingly severe. Based on probability theory considerations, we have confirmed the existence of this over-estimation. We have further determined the cause of this over-estimation to be an artificial consequence of one of the sampling steps in our stochastic method. These results provide validation of our methodology, as well as a correction factor, which can be derived directly from the experimentally measured parameters and used to obtain the true mean length of parallel fibers. Potential applications of the stochastic method include a comparative analysis of the length of parallel fibers as an approach to gain clues about cerebellar circuit principles and function. In addition, the stochastic method may also find promising applications in other functionally important axonal systems in the brain.
机译:小脑平行纤维的长度对于浦肯野细胞的信息整合很重要。基于哥白尼原理来分析随机事件的长度,我们最近设计了一种随机方法来估计给定小脑区域内平行纤维的平均长度。本报告的目的是通过计算仿真来验证这种方法。我们创建具有已知长度的虚拟平行光纤,并对随机方法的每个步骤进行编程以进行计算仿真。然后,我们将从计算仿真中获得的观察到的平均长度与虚拟平行纤维的已知平均长度进行比较。特别是,我们研究了组织切片过程中将平行纤维切成段的效果。我们的计算结果表明,随着平行光纤分段变得越来越严重,高估因子的范围从1.0(无需校正)到2.0。基于概率论的考虑,我们已经确认了这种高估的存在。我们进一步确定了这种高估的原因是我们的随机方法中抽样步骤之一的人为结果。这些结果提供了我们方法的验证以及校正因子,可以直接从实验测量的参数中得出校正因子,并用于获得平行纤维的真实平均长度。随机方法的潜在应用包括对平行纤维长度的比较分析,以获取有关小脑回路原理和功能的线索。此外,随机方法也可能在脑中其他功能重要的轴突系统中找到有前途的应用。

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