基于深度学习的视网膜内层自动提取及其视网膜异常分析

Taimur Hassan, Anam Usman, M. Akram, Momina Masood, Ubaidullah Yasin
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引用次数: 13

摘要

从光学相干断层扫描(OCT)中提取视网膜层对于分析视网膜异常至关重要,而人工分割这些视网膜层是一项非常繁琐的任务。近年来,深度学习因其潜在的精度和鲁棒性在医学图像分析中得到了广泛的应用。许多研究人员利用深度学习从OCT图像中提取视网膜层。然而,据我们所知,目前还没有文献提出一个健壮的分割框架,能够从具有不同视网膜病理综合征的OCT扫描中提取视网膜层。因此,本文提出了一种基于深度卷积神经网络和结构张量的分割框架(CNN-STSF),用于从正常和病变OCT扫描中自动分割多达8层视网膜。首先,该框架从候选扫描中计算相干张量,通过相干张量提取视网膜层。然后,使用基于云的深度卷积神经网络(CNN)模型对1200个视网膜层块进行训练,进一步对代表层的像素进行分类。该框架中的CNN模型计算每一层像素的概率,并将其分配为概率最高的那一层的一部分。所提出的框架在来自不同公开可用数据集和当地武装部队眼科研究所(AFIO)数据集的39,000多个视网膜OCT扫描上进行了测试和验证,其整体分层分割精度达到0.9375,优于所有现有解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning Based Automated Extraction of Intra-Retinal Layers for Analyzing Retinal Abnormalities
Extraction of retinal layers from optical coherence tomography (OCT) scans is critical for analyzing retinal anomalies and manual segmentation of these retinal layers is a very cumbersome task. Recently, deep learning has gained much popularity in medical image analysis due to its underlying precision and robustness. Many researchers have utilized deep learning for extracting retinal layers from OCT images. However, to the best of our knowledge, there is no literature available that presents a robust segmentation framework that is able to extract retinal layers from OCT scans having different retinal pathological syndromes. Therefore, this paper presents a deep convolutional neural network and structure tensor-based segmentation framework (CNN-STSF) for the fully automated segmentation of up to eight retinal layers from normal as well as diseased OCT scans. First of all, the proposed framework computes coherent tensor from the candidate scan through which retinal layers are extracted. Afterwards, the pixels representing the layers are further classified using cloud based deep convolutional neural network (CNN) model trained on 1,200 retinal layers patches. CNN model in the proposed framework computes the probability of each layer pixels and assign it to be part of that layer for which it has the highest probability. The proposed framework was tested and validated on more than 39,000 retinal OCT scans from different publicly available datasets and from local Armed Forces Institute of Ophthalmology (AFIO) dataset where it outperformed all the existing solutions by achieving the overall layer segmentation accuracy of 0.9375.
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