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Malignant and benign breast masses on 3D US volumetric images: effect of computer-aided diagnosis on radiologist accuracy.

机译:3D US容积图像上的恶性和良性乳腺肿块:计算机辅助诊断对放射科医生准确性的影响。

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PURPOSE: To retrospectively investigate the effect of using a custom-designed computer classifier on radiologists' sensitivity and specificity for discriminating malignant masses from benign masses on three-dimensional (3D) volumetric ultrasonographic (US) images, with histologic analysis serving as the reference standard. MATERIALS AND METHODS: Informed consent and institutional review board approval were obtained. Our data set contained 3D US volumetric images obtained in 101 women (average age, 51 years; age range, 25-86 years) with 101 biopsy-proved breast masses (45 benign, 56 malignant). A computer algorithm was designed to automatically delineate mass boundaries and extract features on the basis of segmented mass shapes and margins. A computer classifier was used to merge features into a malignancy score. Five experienced radiologists participated as readers. Each radiologist read cases first without computer-aided diagnosis (CAD) and immediately thereafter with CAD. Observers' malignancy ratingdata were analyzed with the receiver operating characteristic (ROC) curve. RESULTS: Without CAD, the five radiologists had an average area under the ROC curve (A(z)) of 0.83 (range, 0.81-0.87). With CAD, the average A(z) increased significantly (P = .006) to 0.90 (range, 0.86-0.93). When a 2% likelihood of malignancy was used as the threshold for biopsy recommendation, the average sensitivity of radiologists increased from 96% to 98% with CAD, while the average specificity for this data set decreased from 22% to 19%. If a biopsy recommendation threshold could be chosen such that sensitivity would be maintained at 96%, specificity would increase to 45% with CAD. CONCLUSION: Use of a computer algorithm may improve radiologists' accuracy in distinguishing malignant from benign breast masses on 3D US volumetric images.
机译:目的:回顾性研究使用定制设计的计算机分类器对放射科医生的敏感性和特异性,以区分三维(3D)体积超声(US)图像上的良性肿块与良性肿块的敏感性和特异性,并以组织学分析作为参考标准。材料与方法:获得知情同意和机构审查委员会的批准。我们的数据集包含在101名经活检证实的乳腺肿块(45例良性,56例恶性)的101位女性(平均年龄51岁;年龄范围25-86岁)中获得的3D US容积图像。设计了一种计算机算法,以自动划分质量边界并根据分段的质量形状和边界提取特征。使用计算机分类器将特征合并为恶性评分。五位经验丰富的放射科医生作为读者参加了会议。每个放射科医生首先在没有计算机辅助诊断(CAD)的情况下阅读病例,然后立即在有CAD的情况下阅读。观察者的恶性等级数据与接收者的工作特征(ROC)曲线进行了分析。结果:在没有CAD的情况下,五位放射线医生的ROC曲线下平均面积(A(z))为0.83(范围为0.81-0.87)。使用CAD时,平均A(z)显着增加(P = .006)至0.90(范围0.86-0.93)。当以2%的恶性可能性作为活检建议的阈值时,放射科医师使用CAD的平均敏感性从96%增加到98%,而此数据集的平均特异性从22%降低到19%。如果可以选择活检推荐阈值,以使敏感性保持在96%,则CAD的特异性将提高到45%。结论:使用计算机算法可以提高放射科医生在3D US容积图像上区分恶性乳腺肿块和良性乳腺肿块的准确性。

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