Automatic detection and classification of breast tumors in ultrasonic images using texture and morphological features.

The open medical informatics journal Pub Date : 2011-01-01 Epub Date: 2011-07-27 DOI:10.2174/1874431101105010026
Yanni Su, Yuanyuan Wang, Jing Jiao, Yi Guo
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引用次数: 58

Abstract

Due to severe presence of speckle noise, poor image contrast and irregular lesion shape, it is challenging to build a fully automatic detection and classification system for breast ultrasonic images. In this paper, a novel and effective computer-aided method including generation of a region of interest (ROI), segmentation and classification of breast tumor is proposed without any manual intervention. By incorporating local features of texture and position, a ROI is firstly detected using a self-organizing map neural network. Then a modified Normalized Cut approach considering the weighted neighborhood gray values is proposed to partition the ROI into clusters and get the initial boundary. In addition, a regional-fitting active contour model is used to adjust the few inaccurate initial boundaries for the final segmentation. Finally, three textures and five morphologic features are extracted from each breast tumor; whereby a highly efficient Affinity Propagation clustering is used to fulfill the malignancy and benign classification for an existing database without any training process. The proposed system is validated by 132 cases (67 benignancies and 65 malignancies) with its performance compared to traditional methods such as level set segmentation, artificial neural network classifiers, and so forth. Experiment results show that the proposed system, which needs no training procedure or manual interference, performs best in detection and classification of ultrasonic breast tumors, while having the lowest computation complexity.

Abstract Image

Abstract Image

Abstract Image

基于纹理和形态学特征的超声图像乳腺肿瘤自动检测与分类。
由于乳腺超声图像存在严重的斑点噪声,图像对比度差,病变形状不规则,因此建立一个全自动的乳腺超声图像检测与分类系统是一个挑战。本文提出了一种新的、有效的计算机辅助方法,包括感兴趣区域的生成、乳腺肿瘤的分割和分类,而无需人工干预。首先结合纹理和位置的局部特征,利用自组织地图神经网络检测感兴趣区域;然后提出了一种考虑加权邻域灰度值的改进归一化切割方法,将感兴趣区域划分成簇并得到初始边界。此外,利用区域拟合的主动轮廓模型对少量不准确的初始边界进行调整,从而达到最终分割的目的。最后,从每个乳腺肿瘤中提取3个纹理和5个形态特征;利用高效的亲和传播聚类方法,在不进行任何训练的情况下,实现对现有数据库的良性和恶性分类。通过132例病例(67例良性肿瘤和65例恶性肿瘤)对该系统进行了验证,并将其性能与传统方法(如水平集分割、人工神经网络分类器等)进行了比较。实验结果表明,该系统不需要训练程序和人工干扰,在超声乳腺肿瘤的检测和分类中表现最好,同时具有最低的计算复杂度。
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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