Shemonti Abida Sanjana, Plebani Emanuele, Biscola Natalia P, Jaffey Deborah M, Havton Leif A, Keast Janet R, Pothen Alex, Dundar M Murat, Powley Terry L, Rajwa Bartek
Department of Computer Science, Purdue University, West Lafayette, IN, United States.
Department of Computer & Information Sciences, Indiana University - Purdue University Indianapolis, Indianapolis, IN, United States.
Front Neurosci. 2023 Mar 9;17:1072779. doi: 10.3389/fnins.2023.1072779. eCollection 2023.
A thorough understanding of the neuroanatomy of peripheral nerves is required for a better insight into their function and the development of neuromodulation tools and strategies. In biophysical modeling, it is commonly assumed that the complex spatial arrangement of myelinated and unmyelinated axons in peripheral nerves is random, however, in reality the axonal organization is inhomogeneous and anisotropic. Present quantitative neuroanatomy methods analyze peripheral nerves in terms of the number of axons and the morphometric characteristics of the axons, such as area and diameter. In this study, we employed spatial statistics and point process models to describe the spatial arrangement of axons and Sinkhorn distances to compute the similarities between these arrangements (in terms of first- and second-order statistics) in various vagus and pelvic nerve cross-sections. We utilized high-resolution transmission electron microscopy (TEM) images that have been segmented using a custom-built high-throughput deep learning system based on a highly modified U-Net architecture. Our findings show a novel and innovative approach to quantifying similarities between spatial point patterns using metrics derived from the solution to the optimal transport problem. We also present a generalizable pipeline for quantitative analysis of peripheral nerve architecture. Our data demonstrate differences between male- and female-originating samples and similarities between the pelvic and abdominal vagus nerves.
为了更好地理解周围神经的功能以及神经调节工具和策略的发展,需要对周围神经的神经解剖学有透彻的了解。在生物物理建模中,通常假设周围神经中有髓和无髓轴突的复杂空间排列是随机的,然而,实际上轴突组织是不均匀且各向异性的。目前的定量神经解剖学方法根据轴突数量和轴突的形态特征(如面积和直径)来分析周围神经。在本研究中,我们采用空间统计学和点过程模型来描述轴突的空间排列,并使用Sinkhorn距离来计算不同迷走神经和盆腔神经横截面中这些排列之间的相似性(根据一阶和二阶统计量)。我们利用了高分辨率透射电子显微镜(TEM)图像,这些图像是使用基于高度修改的U-Net架构的定制高通量深度学习系统进行分割得到的。我们的研究结果展示了一种新颖且创新的方法,即使用从最优传输问题的解中导出的度量来量化空间点模式之间的相似性。我们还提出了一种用于周围神经结构定量分析的通用流程。我们的数据表明了雄性和雌性来源样本之间的差异以及盆腔迷走神经和腹部迷走神经之间的相似性。