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A Stochastic Algorithm for Generating Realistic Virtual Interstitial Cell of Cajal Networks

机译:用于生成Cajal网络的真实虚拟间隙细胞的随机算法

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Interstitial cells of Cajal (ICC) play a central role in coordinating normal gastrointestinal (GI) motility. Depletion of ICC numbers and network integrity contributes to major functional GI motility disorders. However, the mechanisms relating ICC structure to GI function and dysfunction remains unclear, partly because there is a lack of large-scale ICC network imaging data across a spectrum of depletion levels to guide models. Experimental imaging of these large-scale networks remains challenging because of technical constraints, and hence, we propose the generation of realistic virtual ICC networks using the single normal equation simulation (SNESIM) algorithm. ICC network imaging data obtained from wild-type (normal) and 5-HT serotonin receptor knockout (depleted ICC) mice were used to inform the algorithm, and the virtual networks generated were assessed using ICC network structural metrics and biophysically-based computational modeling. When the virtual networks were compared to the original networks, there was less than 10% error for four out of five structural metrics and all four functional measures. The SNESIM algorithm was then modified to enable the generation of ICC networks across a spectrum of depletion levels, and as a proof-of-concept, virtual networks were successfully generated with a range of structural and functional properties. The SNESIM and modified SNESIM algorithms, therefore, offer an alternative strategy for obtaining the large-scale ICC network imaging data across a spectrum of depletion levels. These models can be applied to accurately inform the physiological consequences of ICC depletion.
机译:Cajal间质细胞(ICC)在协调正常胃肠道(GI)的运动中起着核心作用。 ICC数量的减少和网络完整性会导致主要的功能性GI运动障碍。然而,将ICC结构与GI功能和功能障碍相关的机制仍不清楚,部分原因是缺乏在整个耗尽水平范围内指导模型的大规模ICC网络成像数据。由于技术上的限制,这些大型网络的实验成像仍然具有挑战性,因此,我们提出了使用单正态方程模拟(SNESIM)算法生成现实的虚拟ICC网络的方法。从野生型(正常)和5-HT血清素受体基因敲除(耗竭的ICC)小鼠获得的ICC网络成像数据被用作该算法的参考,并且使用ICC网络结构指标和基于生物物理的计算模型评估了生成的虚拟网络。将虚拟网络与原始网络进行比较时,五种结构指标中的四种以及所有四个功能指标的误差均小于10%。然后,对SNESIM算法进行了修改,以使其能够在一系列耗尽级别上生成ICC网络,并且作为概念验证,成功构建了具有一系列结构和功能特性的虚拟网络。因此,SNESIM和改进的SNESIM算法提供了另一种策略,可用于获取整个耗尽水平范围内的大规模ICC网络成像数据。这些模型可用于准确告知ICC耗竭的生理后果。

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