Deriving a Mammogram-Based Risk Score from Screening Digital Breast Tomosynthesis for 5-Year Breast Cancer Risk Prediction.

Shu Jiang, Debbie L Bennett, Graham A Colditz
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Abstract

Screening digital breast tomosynthesis (DBT) aims to identify breast cancer early when treatment is most effective, leading to reduced mortality. In addition to early detection, the information contained within DBT images may also inform subsequent risk stratification and guide risk-reducing management. Using transfer learning, we refined a model in the Joanne Knight Breast Health Cohort at Washington University, a cohort of 5,066 women with DBT screening (mean age, 54.6), among whom 105 were diagnosed with breast cancer (26 ductal carcinoma in situ). We applied the model to external data from the Emory Breast Imaging Dataset, a cohort of 7,017 women free from cancer (mean age, 55.4), among whom 111 pathology-confirmed breast cancer cases were diagnosed more than 6 months after initial DBT (17 ductal carcinoma in situ). We obtained a 5-year AUC of 0.75 [95% confidence interval (CI), 0.73-0.78] in the internal validation. The model validated in external data gave an AUC of 0.72 (95% CI, 0.69-0.75). The AUC was unchanged when age and Breast Imaging-Reporting and Data System density were added to the model with synthetic DBT images. The model significantly outperforms the Tyrer-Cuzick model, with a 5-year AUC of 0.56 (95% CI, 0.54-0.58; P < 0.01). Our model extends risk prediction applications to synthetic DBT, provides 5-year risk estimates, and is readily calibrated to national risk strata for clinical translation and guideline-driven risk management. The model could be implemented within any digital mammography program. Prevention Relevance: We develop and externally validate a 5-year risk prediction model for breast cancer using synthetic DBT and demonstrate clinical utility by calibrating to the national risk strata as defined in breast cancer risk management guidelines.

基于乳房x光检查的数字乳房断层合成风险评分,用于5年乳腺癌风险预测。
数字乳腺断层合成筛查(DBT)的目的是在治疗最有效的早期发现乳腺癌,从而降低死亡率。除了早期发现外,DBT图像中包含的信息还可以为后续的风险分层提供信息,并指导降低风险的管理。使用迁移学习,我们在WashU队列中改进了一个模型,该队列包括5,066名接受DBT筛查的女性(平均年龄54.6岁),其中105名被诊断患有乳腺癌(26例DCIS)。我们将该模型应用于来自EMBED队列的7017名无癌女性(平均年龄55.4岁)的外部数据,其中111例病理证实的乳腺癌病例在首次DBT(17例DCIS)后6个月以上被诊断出来。我们在内部验证中获得5年曲线下面积(AUC) = 0.75(95%置信区间(CI) = 0.73 - 0.78)。经外部数据验证的模型AUC = 0.72 (95% CI, 0.69 - 0.75)。在合成DBT图像模型中加入年龄和BI-RADS密度后,AUC不变。该模型显著优于Tyrer-Cuzick模型的5年AUC 0.56 (95%CI 0.54, 0.58)
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