Lauritzen Andreas D, von Euler-Chelpin My Catarina, Lynge Elsebeth, Vejborg Ilse, Nielsen Mads, Karssemeijer Nico, Lillholm Martin
University of Copenhagen, Department of Computer Science, Faculty of Science, Copenhagen, Denmark.
University of Copenhagen, Department of Public Health, Faculty of Health and Medical Sciences, Copenhagen, Denmark.
J Med Imaging (Bellingham). 2023 Sep;10(5):054003. doi: 10.1117/1.JMI.10.5.054003. Epub 2023 Sep 29.
Risk-stratified breast cancer screening might improve early detection and efficiency without comprising quality. However, modern mammography-based risk models do not ensure adaptation across vendor-domains and rely on cancer precursors, associated with short-term risk, which might limit long-term risk assessment. We report a cross-vendor mammographic texture model for long-term risk.
The texture model was robustly trained using two systematically designed case-control datasets. Textural features, indicative of future breast cancer, were learned by excluding samples with diagnosed/potential malignancies from training. An augmentation-based domain adaption technique, based on flavorization of mammographic views, ensured generalization across vendor-domains. The model was validated in 66,607 consecutively screened Danish women with flavorized Siemens views and 25,706 Dutch women with Hologic-processed views. Performances were evaluated for interval cancers (IC) within 2 years from screening and long-term cancers (LTC) from 2 years after screening. The texture model was combined with established risk factors to flag 10% of women with the highest risk.
In Danish women, the texture model achieved an area under the receiver operating characteristic curve (AUC) of 0.71 and 0.65 for ICs and LTCs, respectively. In Dutch women with Hologic-processed views, the AUCs were not different from AUCs in Danish women with flavorized views. The AUC for texture combined with established risk factors increased to 0.68 for LTCs. The 10% of women flagged as high-risk accounted for 25.5% of ICs and 24.8% of LTCs.
The texture model robustly estimated long-term breast cancer risk while adapting to an unseen processed vendor-domain and identified a clinically relevant high-risk subgroup.
基于风险分层的乳腺癌筛查可能在不影响质量的情况下提高早期检测率和效率。然而,现代基于乳腺X线摄影的风险模型不能确保在不同供应商领域之间的适应性,并且依赖于与短期风险相关的癌症前体,这可能会限制长期风险评估。我们报告了一种用于长期风险评估的跨供应商乳腺X线摄影纹理模型。
使用两个系统设计的病例对照数据集对纹理模型进行了稳健训练。通过在训练中排除已诊断/潜在恶性肿瘤的样本,学习了指示未来乳腺癌的纹理特征。基于乳腺X线摄影视图调味的基于增强的域适应技术确保了跨供应商领域的泛化。该模型在66607名连续接受筛查的丹麦女性(使用调味后的西门子视图)和25706名荷兰女性(使用Hologic处理的视图)中进行了验证。对筛查后2年内的间期癌(IC)和筛查后2年以上的长期癌(LTC)的性能进行了评估。纹理模型与既定风险因素相结合,对风险最高的10%女性进行标记。
在丹麦女性中,纹理模型对于间期癌和长期癌的受试者操作特征曲线下面积(AUC)分别为0.71和0.65。在使用Hologic处理视图的荷兰女性中,AUC与使用调味后视图的丹麦女性中的AUC没有差异。纹理与既定风险因素相结合后的长期癌AUC增加到0.68。被标记为高风险的10%女性占间期癌的25.5%和长期癌的24.8%。
纹理模型在适应未见过的处理过的供应商领域的同时,稳健地估计了长期乳腺癌风险,并识别出了一个具有临床相关性的高风险亚组。