Horsch K, Giger M L, Venta L A, Vyborny C J
Department of Radiology, University of Chicago, Illinois 60637, USA.
Med Phys. 2001 Aug;28(8):1652-9. doi: 10.1118/1.1386426.
In this paper we present a computationally efficient segmentation algorithm for breast masses on sonography that is based on maximizing a utility function over partition margins defined through gray-value thresholding of a preprocessed image. The performance of the segmentation algorithm is evaluated on a database of 400 cases in two ways. Of the 400 cases, 124 were complex cysts, 182 were benign solid lesions, and 94 were malignant lesions. In the first evaluation, the computer-delineated margins were compared to manually delineated margins. At an overlap threshold of 0.40, the segmentation algorithm correctly delineated 94% of the lesions. In the second evaluation, the performance of our computer-aided diagnosis method on the computer-delineated margins was compared to the performance of our method on the manually delineated margins. Round robin evaluation yielded Az values of 0.90 and 0.87 on the manually delineated margins and the computer-delineated margins, respectively, in the task of distinguishing between malignant and nonmalignant lesions.
在本文中,我们提出了一种用于超声图像中乳腺肿块的计算效率高的分割算法,该算法基于对通过预处理图像的灰度阈值定义的分区边界上的效用函数进行最大化。分割算法的性能通过两种方式在一个包含400个病例的数据库上进行评估。在这400个病例中,124个是复杂囊肿,182个是良性实性病变,94个是恶性病变。在第一次评估中,将计算机划定的边界与手动划定的边界进行比较。在重叠阈值为0.40时,分割算法正确划定了94%的病变。在第二次评估中,将我们的计算机辅助诊断方法在计算机划定边界上的性能与在手动划定边界上的性能进行比较。在区分恶性和非恶性病变的任务中,循环评估在手动划定边界和计算机划定边界上分别产生了0.90和0.87的Az值。