Asymmetry and irregularity border as discrimination factor between melanocytic lesions

David Sbrissa, S. Pratavieira, A. G. Salvio, C. Kurachi, V. Bagnato, L. F. Costa, G. Travieso
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引用次数: 1

Abstract

Image processing tools have been widely used in systems supporting medical diagnosis. The use of mobile devices for the diagnosis of melanoma can assist doctors and improve their diagnosis of a melanocytic lesion. This study proposes a method of image analysis for melanoma discrimination from other types of melanocytic lesions, such as regular and atypical nevi. The process is based on extracting features related with asymmetry and border irregularity. It were collected 104 images, from medical database of two years. The images were obtained with standard digital cameras without lighting and scale control. Metrics relating to the characteristics of shape, asymmetry and curvature of the contour were extracted from segmented images. Linear Discriminant Analysis was performed for dimensionality reduction and data visualization. Segmentation results showed good efficiency in the process, with approximately 88:5% accuracy. Validation results presents sensibility and specificity 85% and 70% for melanoma detection, respectively.
不对称和不规则边界作为黑素细胞病变的鉴别因素
图像处理工具已广泛应用于支持医学诊断的系统中。使用移动设备诊断黑色素瘤可以帮助医生并提高他们对黑色素细胞病变的诊断。本研究提出了一种图像分析方法,用于黑色素瘤与其他类型的黑色素细胞病变(如常规和非典型痣)的区分。该过程是基于提取与不对称和边界不规则相关的特征。从两年的医学数据库中收集了104张图像。图像是在没有照明和比例控制的标准数码相机上获得的。从分割后的图像中提取与轮廓形状、不对称和曲率特征相关的度量。采用线性判别分析进行降维和数据可视化。结果表明,分割效果良好,准确率约为88:5%。验证结果显示,检测黑色素瘤的敏感性和特异性分别为85%和70%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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