Burnside Elizabeth S, Rubin Daniel L, Fine Jason P, Shachter Ross D, Sisney Gale A, Leung Winifred K
Department of Radiology, University of Wisconsin Medical School, E3/311 Clinical Science Center, 600 Highland Ave, Madison, WI 53792-3252, USA.
Radiology. 2006 Sep;240(3):666-73. doi: 10.1148/radiol.2403051096.
To retrospectively determine whether a Bayesian network (BN) computer model can accurately predict the probability of breast cancer on the basis of risk factors and mammographic appearance of microcalcifications, to improve the positive predictive value (PPV) of biopsy, with pathologic examination and follow-up as reference standards.
The institutional review board approved this HIPAA-compliant study; informed consent was not required. Results of 111 consecutive image-guided breast biopsies performed for microcalcifications deemed suspicious by radiologists were analyzed. Mammograms obtained before biopsy were analyzed in a blinded manner by a breast imager who recorded Breast Imaging Reporting and Data System (BI-RADS) descriptors and provided a probability of malignancy. The BN uses probabilistic relationships between breast disease and mammography findings to estimate the risk of malignancy. Probability estimates from the radiologist and the BN were used to create receiver operating characteristic (ROC) curves, and area under the ROC curve (A(z)) values were compared. PPV of biopsy was also evaluated on the basis of these probability estimates.
The BN and the radiologist achieved A(z) values of 0.919 and 0.916, respectively, which were not significantly different. If the 34 patients estimated by the BN to have less than a 10% probability of malignancy had not undergone biopsy, the PPV of biopsy would have increased from 21.6% to 31.2% without missing a breast cancer (P < .001). At this level, the radiologist's probability estimation improved the PPV to 30.0% (P < .001).
A probabilistic model that includes BI-RADS descriptors for microcalcifications can distinguish between benign and malignant abnormalities at mammography as well as a breast imaging specialist can and may be able to improve the PPV of image-guided breast biopsy.
回顾性确定贝叶斯网络(BN)计算机模型能否根据危险因素及乳腺微钙化的乳房X线表现准确预测乳腺癌的概率,以病理检查和随访作为参考标准,提高活检的阳性预测值(PPV)。
机构审查委员会批准了这项符合HIPAA的研究;无需知情同意。对111例因放射科医生认为可疑的微钙化而进行的连续影像引导下乳腺活检结果进行分析。活检前获得的乳房X线片由一名乳腺影像科医生以盲法进行分析,该医生记录乳腺影像报告和数据系统(BI-RADS)描述符并给出恶性概率。BN利用乳腺疾病与乳房X线检查结果之间的概率关系来估计恶性风险。放射科医生和BN的概率估计用于创建受试者操作特征(ROC)曲线,并比较ROC曲线下面积(A(z))值。还根据这些概率估计评估活检的PPV。
BN和放射科医生的A(z)值分别为0.919和0.916,差异无统计学意义。如果BN估计恶性概率小于10%的34例患者未进行活检,活检的PPV将从21.6%提高到31.2%,且不会漏诊乳腺癌(P <.001)。在此水平上,放射科医生的概率估计将PPV提高到30.0%(P <.001)。
一个包含微钙化BI-RADS描述符的概率模型在乳房X线检查中区分良性和恶性异常的能力与乳腺影像专家相当,并且可能能够提高影像引导下乳腺活检的PPV。