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Design and evaluation of a new automated method for the segmentation and characterization of masses on ultrasound images

机译:对超声图像分割和表征的新自动化方法的设计与评估

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Segmentation of masses is the first step in most computer-aided diagnosis (CAD) systems for characterization of breast masses as malignant or benign. In this study, we designed an automated method for segmentation of masses on ultrasound (US) images. The method automatically estimated an initial contour based on a manually-identified point approximately at the mass center. A two-stage active contour (AC) method iteratively refined the initial contour and performed self-examination and correction on the segmentation result. To evaluate our method, we compared it with manual segmentation by an experienced radiologists (R1) on a data set of 226 US images containing biopsy-proven masses from 121 patients (44 malignant and 77 benign). Four performance measures were used to evaluate the segmentation accuracy; two measures were related to the overlap between the computer and radiologist segmentation, and two were related to the area difference between the two segmentation results. To compare the difference between the segmentation results by the computer and Rl to inter-observer variation, a second radiologist (R2) also manually segmented all masses. The two overlap measures between the segmentation results by the computer and Rl were 0.87±0.16 and 0.73±0.17 respectively, indicating a high agreement. However, the segmentation results between two radiologists were more consistent. To evaluate the effect of the segmentation method on classification accuracy, three feature spaces were formed by extracting texture, width-to-height, and posterior shadowing features using the computer segmentation, R1's manual segmentation, and R2's manual segmentation. A linear discriminant analysis classifier using stepwise feature selection was tested and trained by a leave-one-case-out method to characterize the masses as malignant or benign. For case-based classification, the area A_z under the test receiver operating characteristic (ROC) curve was 0.90±0.03, 0.87±0.03 and 0.87±0.03 for the feature sets based on computer segmentation, R1's manual segmentation, and R2's manual segmentation, respectively.
机译:群众的分割是大多数计算机辅助诊断(CAD)系统的第一步,用于表征乳房肿块作为恶性或良性。在本研究中,我们设计了一种用于在超声(US)图像上的群众分割的自动化方法。该方法基于大约在大众中心的手动识别的点自动估计初始轮廓。两级有源轮廓(AC)方法迭代地改进初始轮廓并对分割结果进行了自检和校正。为了评估我们的方法,我们将其与经验丰富的放射科(R1)进行了手动细分,在121名患者(44名恶性和77个良性)中的226个美国图像的数据集的数据集上。四种性能措施用于评估分割精度;两项措施与计算机和放射科分段之间的重叠有关,并且两个与两个分段结果之间的面积差有关。为了比较计算机和RL对观察者间变异的分割结果之间的差异,第二放射科医师(R2)也手动分割所有群体。通过计算机和RL的分段结果之间的两个重叠度量分别为0.87±0.16和0.73±0.17,表示高协议。然而,两位放射科医生之间的分段结果更加一致。为了评估分段方法对分类精度的影响,通过使用计算机分割,R1的手动分段和R2的手动分割来提取纹理,宽度和高度和后阴影特征来形成三个特征空间。使用逐步特征选择的线性判别分析分类器通过休假方法进行测试和培训,以表征群众是恶性或良性的。对于基于案例的分类,区域A_Z测试接收器操作特性下(ROC)曲线分别0.87±0.03和基于计算机分割,R1的手动分割,且R 2的手动分割为功能集0.87±0.03,为0.90±0.03, 。

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