The Department of Neurology, The University of Tokyo Hospital, 1138655, 7-3-1 Hongo, Bunkyo-ku, Tokyo, Japan.
The Department of Neurology, The University of Tokyo Hospital, 1138655, 7-3-1 Hongo, Bunkyo-ku, Tokyo, Japan.
J Neurosci Methods. 2017 Nov 1;291:141-149. doi: 10.1016/j.jneumeth.2017.08.014. Epub 2017 Aug 31.
The morphometric analysis of myelinated nerve fibers of peripheral nerves in cross-sectional optical microscopic images is valuable. Several automated methods for nerve fiber identification and segmentation have been reported. This paper presents a new method that uses a deep learning model of a convolutional neural network (CNN). We tested it for human sural nerve biopsy images.
The method comprises four steps: normalization, clustering segmentation, myelinated nerve fiber identification, and clump splitting. A normalized sample image was separated into individual objects with clustering segmentation. Each object was applied to a CNN deep learning model that labeled myelinated nerve fibers as positive and other structures as negative. Only positives proceeded to the next step. For pretraining the model, 70,000 positive and negative data each from 39 samples were used. The accuracy of the proposed algorithm was evaluated using 10 samples that were not part of the training set. A P-value of <0.05 was considered statistically significant.
The total true-positive rate (TPR) for the detection of myelinated fibers was 0.982, and the total false-positive rate was 0.016. The defined total area similarity (AS) and area overlap error of segmented myelin sheaths were 0.967 and 0.068, respectively. In all but one sample, there were no significant differences in estimated morphometric parameters obtained from our method and manual segmentation.
The TPR and AS were higher than those obtained using previous methods.
High-performance automated identification and segmentation of myelinated nerve fibers were achieved using a deep learning model.
对横截面光学显微镜图像中髓鞘神经纤维的形态计量分析很有价值。已经报道了几种用于神经纤维识别和分割的自动化方法。本文提出了一种新的使用卷积神经网络(CNN)深度学习模型的方法。我们在人类腓肠神经活检图像上对其进行了测试。
该方法包括四个步骤:归一化、聚类分割、有髓神经纤维识别和团块分割。通过聚类分割将归一化后的样本图像分离成单个对象。将每个对象应用于 CNN 深度学习模型,将有髓神经纤维标记为阳性,其他结构标记为阴性。只有阳性的才会进入下一步。为了预训练模型,使用了来自 39 个样本的每个 70,000 个阳性和阴性数据。使用 10 个不属于训练集的样本评估了所提出算法的准确性。P 值<0.05 被认为具有统计学意义。
有髓纤维检测的总真阳性率(TPR)为 0.982,总假阳性率为 0.016。定义的总面积相似性(AS)和分割的髓鞘鞘面积重叠误差分别为 0.967 和 0.068。除了一个样本外,我们的方法和手动分割获得的估计形态计量参数没有显著差异。
TPR 和 AS 均高于以前方法的结果。
使用深度学习模型实现了有髓神经纤维的高性能自动识别和分割。