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数字化乳腺钼靶片中乳腺肿瘤的定量分类

Quantitative classification of breast tumors in digitized mammograms.

作者信息

Pohlman S, Powell K A, Obuchowski N A, Chilcote W A, Grundfest-Broniatowski S

机构信息

Biomedical Engineering Center, Ohio State University, Columbus 43210, USA.

出版信息

Med Phys. 1996 Aug;23(8):1337-45. doi: 10.1118/1.597707.

Abstract

The goal of this study was to develop a technique to distinguish benign and malignant breast lesions in secondarily digitized mammograms. A set of 51 mammograms (two views/patient) containing lesions of known pathology were evaluated using six different morphological descriptors: circularity, mu R/sigma R (where mu R = mean radial distance of tumor boundary, sigma R = standard deviation); compactness, P2/A (where P = perimeter length of tumor boundary and A = area of the tumor); normalized moment classifier; fractal dimension; and a tumor boundary roughness (TBR) measurement (the number of angles in the tumor boundary with more than one boundary point divided by the total number of angles in the boundary). The lesion was segmented from the surrounding background using an adaptive region growing technique. Ninety-seven percent of the lesions were segmented using this approach. An ROC analysis was performed for each parameter and the results of this analysis were compared to each other and to those obtained from a subjective review by two board-certified radiologists who specialize in mammography. The results of the analysis indicate that all six parameters are diagnostic for malignancy with areas under their ROC curves ranging from 0.759 to 0.928. We observed a trend towards increased specificity at low false-negative rates (0.01 and 0.001) with the TBR measurement. Additionally, the diagnostic accuracy of a classification model based on this parameter was similar to that of the subjective reviewers.

摘要

本研究的目的是开发一种技术,以区分二次数字化乳腺钼靶片中的良性和恶性乳腺病变。使用六种不同的形态学描述符对一组51例乳腺钼靶片(每位患者两张视图)进行评估,这些钼靶片包含已知病理的病变:圆形度、μR/σR(其中μR =肿瘤边界的平均径向距离,σR =标准差);紧凑度,P2/A(其中P =肿瘤边界的周长,A =肿瘤面积);归一化矩分类器;分形维数;以及肿瘤边界粗糙度(TBR)测量值(肿瘤边界中具有多个边界点的角度数量除以边界中的总角度数量)。使用自适应区域生长技术将病变与周围背景分割开。采用这种方法,97%的病变得以分割。对每个参数进行了ROC分析,并将该分析结果相互比较,同时与两位专门从事乳腺钼靶检查的经委员会认证的放射科医生进行主观评估所获得的结果进行比较。分析结果表明,所有六个参数对恶性肿瘤均具有诊断价值,其ROC曲线下面积在0.759至0.928之间。我们观察到,在低假阴性率(0.01和0.001)下,TBR测量值有特异性增加的趋势。此外,基于该参数的分类模型的诊断准确性与主观评估者的相似。

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