全自动工具的形态计量分析髓鞘纤维

Romulo Bourget Novas, V. Fazan, J. C. Felipe
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引用次数: 3

摘要

已知髓鞘纤维的形态计量学分析可以为几种现象的评估提供相关信息,从神经脱髓鞘/再脱髓鞘到衰老过程。这种分析可以手动完成,也可以使用基于计算机的图像分析系统,这些系统在一定程度上自动化。然而,手动或半自动化的系统是非常费力的,非常繁琐和耗时的。因此,本文的目的是提出、实现和评估一种能够自动执行髓鞘纤维形态测量的计算工具。我们已经实现并测试了各种方法来分割来自不同类型神经的图像,这些图像在形式,颜色和大小上存在差异。然后,我们实现了一种能够提取所需形态特征的算法。该工具对数据库的最大面积重叠精度为83.1%,灵敏度为90.7%。该工具在实验和临床应用中具有广泛的潜力,消除了许多与神经形态测量相关的繁琐和耗时的任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fully-automatic tool for morphometric analysis of myelinated fibers
The morphometric analysis of myelinated fibers is known to produce relevant information for the evaluation of several phenomena, which range from nerve demyelization/remyelization to the aging process. This analysis can be achieved manually or using computer-based image analysis systems which vary to a certain degree of automation. However, systems which are manual or semi-automated are extremely laborious, highly tedious and time-consuming. Therefore, the aim of this paper is the proposal, implementation and evaluation of a computational tool capable of automatically performing the morphometry of myelinated fibers. We have implemented and tested various methods for the segmentation of images from different types of nerve, which present differences in form, color and size. Then, we implemented an algorithm capable of extracting the required morphometric features. The developed tool has shown maximum area overlap accuracy of 83.1% and sensitivity of 90.7% for our database. The tool has widespread potential in experimental and clinical applications eliminating many of the tedious and time-consuming tasks associated with nerve morphometry.
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CiteScore
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