Novas Romulo Bourget, Fazan Valeria Paula Sassoli, Felipe Joaquim Cezar
Department of Computing and Mathematics, Faculty of Philosophy, Science and Languages of Ribeirão Preto, University of São Paulo at Ribeirão Preto, Ribeirão Preto, Brazil.
Departament of Surgery and Anatomy, School of Medicine of Ribeirão Preto, University of São Paulo at Ribeirão Preto, Ribeirão Preto, Brazil.
J Digit Imaging. 2016 Feb;29(1):63-72. doi: 10.1007/s10278-015-9804-6.
Nerve morphometry is known to produce relevant information for the evaluation of several phenomena, such as nerve repair, regeneration, implant, transplant, aging, and different human neuropathies. Manual morphometry is laborious, tedious, time consuming, and subject to many sources of error. Therefore, in this paper, we propose a new method for the automated morphometry of myelinated fibers in cross-section light microscopy images. Images from the recurrent laryngeal nerve of adult rats and the vestibulocochlear nerve of adult guinea pigs were used herein. The proposed pipeline for fiber segmentation is based on the techniques of competitive clustering and concavity analysis. The evaluation of the proposed method for segmentation of images was done by comparing the automatic segmentation with the manual segmentation. To further evaluate the proposed method considering morphometric features extracted from the segmented images, the distributions of these features were tested for statistical significant difference. The method achieved a high overall sensitivity and very low false-positive rates per image. We detect no statistical difference between the distribution of the features extracted from the manual and the pipeline segmentations. The method presented a good overall performance, showing widespread potential in experimental and clinical settings allowing large-scale image analysis and, thus, leading to more reliable results.
神经形态测量学可为评估多种现象提供相关信息,比如神经修复、再生、植入、移植、衰老以及不同类型的人类神经病变。手工形态测量既费力、繁琐又耗时,还存在多种误差来源。因此,在本文中,我们提出了一种用于在横截面光学显微镜图像中自动测量有髓纤维形态的新方法。本文使用了成年大鼠喉返神经和成年豚鼠前庭蜗神经的图像。所提出的纤维分割流程基于竞争聚类和凹度分析技术。通过将自动分割结果与手工分割结果进行比较,对所提出的图像分割方法进行了评估。为了进一步根据从分割图像中提取的形态测量特征评估所提出的方法,对这些特征的分布进行了统计显著性差异检验。该方法实现了较高的总体灵敏度,且每张图像的假阳性率非常低。我们未检测到从手工分割和流程分割中提取的特征分布之间存在统计学差异。该方法展现出良好的总体性能,在实验和临床环境中具有广泛的潜力,能够进行大规模图像分析,从而得出更可靠的结果。