Unsupervised Breast Masses Classification through Optimum-Path Forest

P. Ribeiro, Leandro A. Passos Junior, L. A. D. Silva, K. Costa, J. Papa, R. Romero
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引用次数: 16

Abstract

Computer-Aided Diagnosis (CAD) can be divided into two main categories: CADe (Computer-Aided Detection), which is focused on the detection of structures of interest, as well as to assist radiologists to find out signals of interest that might be hidden to human vision, and the CADx (Computer-Aided Diagnosis), which works as a second observer, being responsible to give an opinion on a specific lesion. In CADe - based systems, the identification of mammograms with and without masses is highly needed to reduce the false positive rates regarding the automatic selection of regions of interest. The main contribution of this study is to introduce the unsupervised classifier Optimum-Path Forest to identify breast masses, and to evaluate its performance against with two other unsupervised techniques (Gaussian Mixture Model and k-Means) using texture features from images obtained from a private dataset composed by 120 images with and without the presence of masses.
基于最优路径森林的无监督乳腺肿块分类
计算机辅助诊断(CAD)可分为两大类:CADe(计算机辅助检测),主要用于检测感兴趣的结构,并协助放射科医生找出可能隐藏在人类视觉中的感兴趣的信号;CADx(计算机辅助诊断),作为第二观察者,负责对特定病变给出意见。在基于CADe的系统中,识别有肿块和没有肿块的乳房x线照片是非常必要的,以减少关于自动选择感兴趣区域的假阳性率。本研究的主要贡献是引入无监督分类器Optimum-Path Forest来识别乳房肿块,并使用由120张有肿块和没有肿块的图像组成的私有数据集获得的图像的纹理特征,与其他两种无监督技术(高斯混合模型和k-Means)对比评估其性能。
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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