Histo-pathological image analysis using OS-FCM and level sets

M. Babu, V. Madasu, M. Hanmandlu, S. Vasikarla
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引用次数: 8

Abstract

Malignant melanomas are the most serious form of skin cancer accounting for the majority of skin cancer related deaths. Histo-pathological images of skin tissues are analyzed for detecting various types of melanomas. The automatic analysis of these images can greatly facilitate the diagnosis task for dermato-pathologists. The first and foremost step in automatic histo-pathological image analysis is to accurately segment the images into dermal and epidermal layers along with segmenting other tissues structures such as nests and melanocytic cells which indicate the presence of cancer. In this paper, we present a novel technique for segmenting the dermal-epidermal junction based on color features which are initially clustered using the Orientation Sensitive Fuzzy C-means algorithm (OS-FCM) and later refined with level set based algorithms. A few novel parameters which define the architecture of the dermis are then extracted. Experimental results on a small database of skin tissue images show the efficacy of the proposed methodology in differentiating between melanomas and naevi.
使用OS-FCM和水平集进行组织病理图像分析
恶性黑色素瘤是最严重的皮肤癌形式,占皮肤癌相关死亡的大部分。分析皮肤组织的组织病理图像,以检测各种类型的黑色素瘤。这些图像的自动分析可以大大方便皮肤科病理学家的诊断任务。自动组织病理图像分析的第一步也是最重要的一步是准确地将图像分割成真皮和表皮层,同时分割其他组织结构,如巢和黑色素细胞,这表明癌症的存在。在本文中,我们提出了一种基于颜色特征分割真皮-表皮连接的新技术,该技术最初使用方向敏感模糊c均值算法(OS-FCM)聚类,然后使用基于水平集的算法进行改进。然后提取了一些定义真皮层结构的新参数。在一个小的皮肤组织图像数据库上的实验结果表明,所提出的方法在区分黑素瘤和痣方面是有效的。
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