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A fully automatic nerve segmentation and morphometric parameter quantification system for early diagnosis of diabetic neuropathy in corneal images

机译:全自动神经分割和形态计量学参数量化系统,用于早期诊断角膜图像中的糖尿病性神经病

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Diabetic Peripheral Neuropathy (DPN) is one of the most common types of diabetes that can affect the cornea. An accurate analysis of the nerve structures can assist the early diagnosis of this disease. This paper proposes a robust, fast and fully automatic nerve segmentation and morphometric parameter quantification system for corneal confocal microscope images. The segmentation part consists of three main steps. First, a preprocessing step is applied to enhance the visibility of the nerves and remove noise using anisotropic diffusion filtering, specifically a Coherence filter followed by Gaussian filtering. Second, morphological operations are applied to remove unwanted objects in the input image such as epithelial cells and small nerve segments. Finally, an edge detection step is applied to detect all the nerves in the input image. In this step, an efficient algorithm for connecting discontinuous nerves is proposed. In the morphometric parameters quantification part, a number of features are extracted, including thickness, tortuosity and length of nerve, which may be used for the early diagnosis of diabetic polyneuropathy and when planning Laser Assisted in situ Keratomileusis (LASIK) or Photorefractive keratectomy (PRK). The performance of the proposed segmentation system is evaluated against manually traced ground-truth images based on a database consisting of 498 corneal sub-basal nerve images (238 are normal and 260 are abnormal). In addition, the robustness and efficiency of the proposed system in extracting morphometric features with clinical utility was evaluated in 919 images taken from healthy subjects and diabetic patients with and without neuropathy. We demonstrate rapid (13 seconds/image), robust and effective automated corneal nerve quantification. The proposed system will be deployed as a useful clinical tool to support the expertise of ophthalmologists and save the clinician time in a busy clinical setting. (C) 2016 Elsevier Ireland Ltd. All rights reserved.
机译:糖尿病周围神经病变(DPN)是最常见的一种会影响角膜的糖尿病。对神经结构的准确分析有助于该病的早期诊断。本文为角膜共聚焦显微镜图像提出了一种鲁棒,快速,全自动的神经分割和形态计量学参数量化系统。细分部分包括三个主要步骤。首先,应用预处理步骤来增强神经的可见性并使用各向异性扩散过滤(特别是相干过滤器和高斯过滤器)消除噪声。其次,应用形态学运算以去除输入图像中不需要的对象,例如上皮细胞和小神经节段。最后,应用边缘检测步骤以检测输入图像中的所有神经。在这一步骤中,提出了一种用于连接不连续神经的有效算法。在形态计量学参数量化部分,提取了许多特征,包括厚度,曲折度和神经长度,这些特征可用于糖尿病多发性神经病的早期诊断,以及在计划进行激光辅助原位角膜磨镶术(LASIK)或光折射角膜切除术(PRK)时)。基于由498个角膜下基底神经图像(238个正常和260个异常)组成的数据库,针对手动跟踪的地面真实图像对所提出的分割系统的性能进行了评估。此外,在从健康受试者和有或没有神经病的糖尿病患者中拍摄的919张图像中,评估了该系统在提取具有临床实用性的形态特征方面的鲁棒性和效率。我们证明了快速(每秒钟13秒),强大且有效的自动角膜神经定量。拟议的系统将被部署为有用的临床工具,以支持眼科医生的专业知识,并在繁忙的临床环境中节省临床医生的时间。 (C)2016 Elsevier Ireland Ltd.保留所有权利。

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