Mogatadakala Kishore V, Donohue Kevin D, Piccoli Catherine W, Forsberg Flemming
Department of Diagnostic and Interventional Imaging, University of Texas Health Science Center at Houston, Houston, Texas 77030, USA.
Med Phys. 2006 Apr;33(4):840-9. doi: 10.1118/1.2174134.
Accurate detection and segmentation of suspicious regions within the complex and irregular tissues of the breast, as depicted with ultrasonic B scans, typically require human analysis and decision making. Tissue characterization methods for classifying suspicious regions often depend on identifying and then accurately segmenting these regions. Motivated by an ultimate goal to automate this critical identification and segmentation step for tissue characterization problems, this work examines ultrasonic signal characteristics between various regions of breast tissue broadly classified as normal tissue and breast lesions. This paper introduces a nonparametric model based on order statistics (OS) estimated from multiresolution (MR) decompositions of energy-normalized subregions. Experimental results demonstrate the classification performance of the OS-based features extracted from the tumor and normal tissue regions in multiple scans from 84 patients, which resulted in a total of 204 tumor regions (from 43 malignant and 161 benign) and 816 normal tissue regions. Performance results indicate that OS-based features achieved an area under the receiver-operator characteristic curve of 91% in the discrimination between breast lesions and surrounding normal tissues.
如超声B扫描所示,在乳腺复杂且不规则的组织内准确检测和分割可疑区域通常需要人工分析和决策。用于对可疑区域进行分类的组织特征化方法通常依赖于识别并随后准确分割这些区域。受将组织特征化问题的这一关键识别和分割步骤自动化的最终目标所驱动,这项工作研究了大致分类为正常组织和乳腺病变的乳腺组织各区域之间的超声信号特征。本文介绍了一种基于顺序统计量(OS)的非参数模型,该顺序统计量是根据能量归一化子区域的多分辨率(MR)分解估计得出的。实验结果展示了从84名患者的多次扫描中肿瘤和正常组织区域提取的基于OS的特征的分类性能,这些扫描总共产生了204个肿瘤区域(43个恶性和161个良性)以及816个正常组织区域。性能结果表明,基于OS的特征在区分乳腺病变与周围正常组织时,在接收者操作特征曲线下的面积达到了91%。