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首页> 外文期刊>Biomedical and Health Informatics, IEEE Journal of >An Automatic Mass Detection System in Mammograms Based on Complex Texture Features
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An Automatic Mass Detection System in Mammograms Based on Complex Texture Features

机译:基于复杂纹理特征的乳腺X线图像质量自动检测系统

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摘要

It is difficult for radiologists to identify the masses on a mammogram because they are surrounded by complicated tissues. In current breast cancer screening, radiologists often miss approximately 10–30% of tumors because of the ambiguous margins of lesions and visual fatigue resulting from long-time diagnosis. For these reasons, many computer-aided detection (CADe) systems have been developed to aid radiologists in detecting mammographic lesions which may indicate the presence of breast cancer. This study presents an automatic CADe system that uses local and discrete texture features for mammographic mass detection. This system segments some adaptive square regions of interest (ROIs) for suspicious areas. This study also proposes two complex feature extraction methods based on cooccurrence matrix and optical density transformation to describe local texture characteristics and the discrete photometric distribution of each ROI. Finally, this study uses stepwise linear discriminant analysis to classify abnormal regions by selecting and rating the individual performance of each feature. Results show that the proposed system achieves satisfactory detection performance.
机译:放射线医师很难在乳房X线照片上识别肿块,因为它们被复杂的组织所包围。在当前的乳腺癌筛查中,由于长期诊断所导致的病灶边缘模糊和视觉疲劳,放射科医生常常会错过大约10–30%的肿瘤。由于这些原因,已经开发了许多计算机辅助检测(CADe)系统来帮助放射线医师检测可能表明存在乳腺癌的乳房X光检查病变。这项研究提出了一种自动CADe系统,该系统使用局部和离散纹理特征进行乳房X线照片质量检测。该系统将可疑区域的一些自适应正方形兴趣区域(ROI)分割开。这项研究还提出了两种基于共现矩阵和光密度变换的复杂特征提取方法,以描述局部纹理特征和每个ROI的离散光度分布。最后,本研究使用逐步线性判别分析,通过选择和评估每个功能的个别性能来对异常区域进行分类。结果表明,该系统取得了令人满意的检测性能。

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