基于单镜头检测器和水平集分割技术的黑色素瘤病灶分割

Faaiza Rashid, Aun Irtaza, Nudrat Nida, A. Javed, H. Malik, K. Malik
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引用次数: 5

摘要

黑色素瘤是一种致命类型的皮肤癌,起源于皮肤的黑色素细胞,每年因暴露于紫外线辐射而导致数人死亡。黑色素瘤的早期诊断和适当治疗可显著提高患者的生存率。在计算机辅助诊断中,自动分割是早期准确诊断黑色素瘤病变区域的第一步。然而,自然或临床伪影的存在阻碍了病灶的精确分割。我们的工作目标是建立一种新的流水线,可以对黑色素瘤病变进行自动预处理、定位和精确分割,并提高其分割精度。在我们提出的方法中,皮肤镜图像分为三个步骤进行分割:1。使用形态学操作去除毛发的预处理。2. 2 .利用深度卷积神经网络进行黑色素瘤病灶定位,称为Single-Shot Detection (SSD)网络;使用水平集算法分割。该方法在ISBI 2016挑战数据集(皮肤病变分析对黑色素瘤检测挑战数据集)上进行了评估。在ISIC 2016上,我们的方法获得的Jc、Di和Ac的平均值分别为0.82、0.901和0.90。分割的结果也与最先进的方法进行比较,以证明所提出的方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Segmenting melanoma Lesion using Single Shot Detector (SSD) and Level Set Segmentation Technique
Melanoma is a lethal type of skin cancer that orginates fron melanocytes cells of skin and it is responsible of several deaths annually due to exposure of ultraviolet radiations. Early diagnosis and proper treatment of melanoma significantly improves the patient's survival rate. In the computer aided diagnosis, the automatic segmentation is first step in early and accurate diagnosis of the Melanoma lesion area. However, the presence of natural or clinical artifacts hinders the precise lesion segmentation. The goal of our work is to establish a novel pipeline that automatically pre-process, localize and then segment the melanoma lesion precisely and improve its segmentation accuracy. In our proposed method, dermoscopic images are segmented in three steps: 1. Preprocessing using morphological operations to remove hair. 2. Localization of melanoma lesion by utilizing a deep convolutional neural network named as Single-Shot Detection (SSD) network, 3. Segmentation using level set algorithm. The proposed approach was evaluated on ISBI 2016 challenge dataset (Skin Lesion Analysis Towards Melanoma Detection Challenge Dataset). On ISIC 2016, our method achieved an average of Jc, Di and Ac as 0.82, 0.901 and 0.90 respectively. The results of the segmentation are also compared with the state-of-the-art methods to justify the effectiveness of the proposed approach.
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