Horsch Karla, Giger Maryellen L, Vyborny Carl J, Venta Luz A
Department of Radiology, University of Chicago, 5841 S Maryland Ave, Chicago, IL 60637, USA.
Acad Radiol. 2004 Mar;11(3):272-80. doi: 10.1016/s1076-6332(03)00719-0.
To investigate the potential usefulness of computer-aided diagnosis as a tool for radiologists in the characterization and classification of mass lesions on ultrasound.
Previously, a computerized method for the automatic classification of breast lesions on ultrasound was developed. The computerized method includes automatic segmentation of the lesion from the ultrasound image background and automatic extraction of four features related to lesion shape, margin, texture, and posterior acoustic behavior. In this study, the effectiveness of the computer output as an aid to radiologists in their ability to distinguish between malignant and benign lesions, and in their patient management decisions in terms of biopsy recommendation are evaluated. Six expert mammographers and six radiologists in private practice at an institution accredited by the American Ultrasound Institute of Medicine participated in the study. Each observer first interpreted 25 training cases with feedback of biopsy results, and then interpreted 110 additional ultrasound cases without feedback. Simulating an actual clinical setting, the 110 cases were unknown to both the observers and the computer. During interpretation, observers gave their confidence that the lesion was malignant and also their patient management recommendation (biopsy or follow-up). The computer output was then displayed, and observers again gave their confidence that the lesion was malignant and theirpatient management recommendation. Statistical analyses included receiver operator characteristic analysis and Student t-test.
For the expert mammographers and for the community radiologists, the Az (area under the receiver operator characteristic curve) increased from 0.83 to 0.87 (P = .02) and from 0.80 to 0.84 (P = .04), respectively, when the computer aid was used in the interpretation of the ultrasound images. Also, the Az values for the community radiologists with aid and for the expert mammographers without aid are similar to the Az value for the computer alone (Az = 0.83).
Computer analysis of ultrasound images of breast lesions has been shown to improve the diagnostic accuracy of radiologists in the task of distinguishing between malignant and benign breast lesions and in recommending cases for biopsy.
探讨计算机辅助诊断作为一种工具,对放射科医生在超声下对肿块病变进行特征描述和分类的潜在实用性。
此前,已开发出一种用于超声下乳腺病变自动分类的计算机化方法。该计算机化方法包括从超声图像背景中自动分割病变,以及自动提取与病变形状、边缘、纹理和后方声学特征相关的四个特征。在本研究中,评估了计算机输出在帮助放射科医生区分恶性和良性病变以及在活检建议方面的患者管理决策能力方面的有效性。六位专家乳腺造影技师和六位在美国医学超声学会认可机构执业的放射科医生参与了该研究。每位观察者首先解读25个有活检结果反馈的训练病例,然后解读另外110个无反馈的超声病例。模拟实际临床情况,这110个病例对观察者和计算机来说都是未知的。在解读过程中,观察者给出他们对病变为恶性的信心程度以及他们的患者管理建议(活检或随访)。然后显示计算机输出结果,观察者再次给出他们对病变为恶性的信心程度和患者管理建议。统计分析包括受试者操作特征分析和学生t检验。
对于专家乳腺造影技师和社区放射科医生,在超声图像解读中使用计算机辅助时,受试者操作特征曲线下面积(Az)分别从0.83增加到0.87(P = 0.02)和从0.80增加到0.84(P = 0.04)。此外,有辅助的社区放射科医生和无辅助的专家乳腺造影技师的Az值与单独计算机的Az值(Az = 0.83)相似。
乳腺病变超声图像的计算机分析已被证明能提高放射科医生在区分乳腺恶性和良性病变以及推荐活检病例任务中的诊断准确性。