Liu Chang, Patel Priya, Arefan Dooman, Zuley Margarita, Sumkin Jules, Wu Shandong
Department of Bioengineering, University of Pittsburgh, Pittsburgh, PA 15213 (C.L., S.W.).
Magee-Womens Hospital, University of Pittsburgh Medical Center, Pittsburgh, PA, 15213 (P.P., M.Z., J.S.).
Acad Radiol. 2025 May;32(5):2438-2449. doi: 10.1016/j.acra.2024.12.051. Epub 2025 Jan 10.
In the USA over 1 million breast biopsies are performed annually. Approximately 9.6% diagnostic exams were given Breast Imaging Reporting and Data System (BI-RADS) ≥4A, most of which are 4A/4B. Contrast-enhanced mammography (CEM) may improve biopsy outcome prediction for this subpopulation, but machine learning-based analysis of CEM is largely unexplored. We aim to develop a machine learning-based analysis of CEM using computer-extracted radiomics and radiologist-assessed descriptors to predict breast biopsy outcomes of BI-RADS 4A/4B/4C or 5 lesions.
This HIPPA-compliant, IRB-approved study included women in a single institution who had BI-RADS 4A/4B/4C or 5 lesions and underwent CEM imaging prior to biopsy. Logistic regression models were built to predict biopsy outcomes using radiomics features and four radiologist-assessed qualitative descriptors. A cohort of 201 patients was used for model development/training, and an independent group of 86 patients were used as an internal test set. AUC was used to measure model's performance. Positive predictive value (PPV) was assessed on subgroups of BI-RADS 4A or 4B lesions.
Model AUC was 0.90 for radiomics, 0.81 for clinical descriptors and 0.88 for their combination. On patients with an initial BI-RADS 4A or 4B scores, model combining radiomics and clinical descriptors of pre-biopsy CEM increased PPV3 to 18% from the radiologist's 6% for 4A patients, and to 25% from the radiologist's 17% for 4B patients.
Machine learning models combining radiomics features and clinical descriptors on CEM can predict breast biopsy outcomes on women with BI-RADS 4A/4B/4C or 5 lesions.
在美国,每年进行超过100万例乳腺活检。约9.6%的诊断性检查被给予乳腺影像报告和数据系统(BI-RADS)≥4A,其中大多数为4A/4B。对比增强乳腺X线摄影(CEM)可能会改善该亚组人群活检结果的预测,但基于机器学习的CEM分析在很大程度上尚未得到探索。我们旨在利用计算机提取的放射组学和放射科医生评估的描述符,开发一种基于机器学习的CEM分析方法,以预测BI-RADS 4A/4B/4C或5类病变的乳腺活检结果。
这项符合HIPPA规定、经机构审查委员会批准的研究纳入了单一机构中患有BI-RADS 4A/4B/4C或5类病变且在活检前接受CEM成像的女性。构建逻辑回归模型,使用放射组学特征和四个放射科医生评估的定性描述符来预测活检结果。一组201例患者用于模型开发/训练,另一组86例独立患者用作内部测试集。使用曲线下面积(AUC)来衡量模型性能。对BI-RADS 4A或4B病变亚组评估阳性预测值(PPV)。
放射组学模型的AUC为0.90,临床描述符模型的AUC为0.81,两者结合模型的AUC为0.88。对于初始BI-RADS 4A或4B评分的患者,结合活检前CEM的放射组学和临床描述符的模型将4A患者的PPV3从放射科医生的6%提高到18%,将4B患者的PPV3从放射科医生的17%提高到25%。
结合CEM上的放射组学特征和临床描述符的机器学习模型可以预测患有BI-RADS 4A/4B/4C或5类病变女性的乳腺活检结果。