The future of population-based breast cancer screening is likely personalized strategies based on clinically relevant risk models. Mammography-based risk models should remain robust to domain shifts caused by different populations and mammographic devices. Modern risk models do not ensure adaptation across vendor-domains and are often conflated to unintentionally rely on both precursors of cancer and systemic/global mammographic information associated with short- and long-term risk, respectively, which might limit performance. We developed a robust, cross-vendor model for long-term risk assessment. An augmentation-based domain adaption technique, based on flavorization of mammographic views, ensured generalization to an unseen vendor-domain. We trained on samples without diagnosed/potential malignant findings to learn systemic/global breast tissue features, called mammographic texture, indicative of future breast cancer. However, training so may cause erratic convergence. By excluding noise-inducing samples and designing a case-control dataset, a robust ensemble texture model was trained. This model was validated in two independent datasets. In 66,607 Danish women with flavorized Siemens views, the AUC was 0.71 and 0.65 for prediction of interval cancers within two years (ICs) and from two years after screening (LTCs), respectively. In a combination with established risk factors, the model's AUC increased to 0.68 for LTCs. In 25,706 Dutch women with Hologic-processed views, the AUCs were not different from the AUCs in Danish women with flavorized views. The results suggested that the model robustly estimated long-term risk while adapting to an unseen processed vendor-domain. The model identified 8.1% of Danish women accounting for 20.9% of ICs and 14.2% of LTCs.
翻译:基于人口的乳腺癌筛查的未来可能是基于临床相关风险模型的个性化战略。基于乳房造影的风险模型应该保持稳健,以适应不同人口和乳房X光仪造成的局部变化。现代风险模型不能确保跨供应商-行业的适应性,而且往往被混在一起,无意中依赖癌症前体以及与短期和长期风险有关的系统/全球乳房X光学信息,这可能会限制性能。我们为长期风险评估开发了一个强大的跨供应商模型。基于乳房X光观察的增强型域适应技术,确保了对隐蔽的供应商-行业的普及化。我们在没有诊断/潜在恶性发现的情况下对样本进行了培训,以学习系统/全球乳房组织特征,称为乳房X光图案,以示未来的乳房癌。然而,培训可能会造成不稳的趋同。通过排除噪音,设计一个控制案例的数据集,我们开发了一个强有力的全方位纹理模型。在两种独立的数据集中验证了该模型。在66,607名丹麦妇女具有可口味的锡门观点,而在两年内对AUCLL值进行了预测,在两年后又对癌症进行了0.75进行两次的预测。