Ikedo Yuji, Fukuoka Daisuke, Hara Takeshi, Fujita Hiroshi, Takada Etsuo, Endo Tokiko, Morita Takako
Department of Intelligent Image Information, Division of Regeneration and Advanced Medical Sciences, Graduate School of Medicine, Gifu University, 1-1 Yanagido, Gifu 501-1194, Japan.
Med Phys. 2007 Nov;34(11):4378-88. doi: 10.1118/1.2795825.
Ultrasonography has been used for breast cancer screening in Japan. Screening using a conventional hand-held probe is operator dependent and thus it is possible that some areas of the breast may not be scanned. To overcome such problems, a mechanical whole breast ultrasound (US) scanner has been proposed and developed for screening purposes. However, another issue is that radiologists might tire while interpreting all images in a large-volume screening; this increases the likelihood that masses may remain undetected. Therefore, the aim of this study is to develop a fully automatic scheme for the detection of masses in whole breast US images in order to assist the interpretations of radiologists and potentially improve the screening accuracy. The authors database comprised 109 whole breast US imagoes, which include 36 masses (16 malignant masses, 5 fibroadenomas, and 15 cysts). A whole breast US image with 84 slice images (interval between two slice images: 2 mm) was obtained by the ASU-1004 US scanner (ALOKA Co., Ltd., Japan). The feature based on the edge directions in each slice and a method for subtracting between the slice images were used for the detection of masses in the authors proposed scheme. The Canny edge detector was applied to detect edges in US images; these edges were classified as near-vertical edges or near-horizontal edges using a morphological method. The positions of mass candidates were located using the near-vertical edges as a cue. Then, the located positions were segmented by the watershed algorithm and mass candidate regions were detected using the segmented regions and the low-density regions extracted by the slice subtraction method. For the removal of false positives (FPs), rule-based schemes and a quadratic discriminant analysis were applied for the distribution between masses and FPs. As a result, the sensitivity of the authors scheme for the detection of masses was 80.6% (29/36) with 3.8 FPs per whole breast image. The authors scheme for a computer-aided detection may be useful in improving the screening performance and efficiency.
在日本,超声检查已用于乳腺癌筛查。使用传统手持探头进行筛查依赖于操作人员,因此乳房的某些区域可能未被扫描到。为克服此类问题,已提出并开发了一种用于筛查目的的机械式全乳超声(US)扫描仪。然而,另一个问题是,放射科医生在解读大量筛查图像时可能会疲劳,这增加了肿块未被发现的可能性。因此,本研究的目的是开发一种用于检测全乳超声图像中肿块的全自动方案,以协助放射科医生进行解读,并有可能提高筛查准确性。作者的数据库包含109幅全乳超声图像,其中包括36个肿块(16个恶性肿块、5个纤维腺瘤和15个囊肿)。通过ASU - 1004超声扫描仪(日本ALOKA公司)获得了一幅包含84幅切片图像(两片图像之间的间隔:2毫米)的全乳超声图像。在作者提出的方案中,基于各切片边缘方向的特征以及切片图像之间的减法方法用于肿块检测。应用Canny边缘检测器检测超声图像中的边缘;使用形态学方法将这些边缘分类为近垂直边缘或近水平边缘。以近垂直边缘为线索定位肿块候选位置。然后,使用分水岭算法对定位的位置进行分割,并使用分割区域和通过切片减法方法提取的低密度区域检测肿块候选区域。为去除假阳性(FP),对肿块和FP之间的分布应用基于规则的方案和二次判别分析。结果,作者方案检测肿块的灵敏度为80.6%(29/36),每幅全乳图像有3.8个FP。作者的计算机辅助检测方案可能有助于提高筛查性能和效率。