论文标题

乳房X线摄影中基于深度学习的质量检测的领域概括:一项大型多中心研究

Domain generalization in deep learning-based mass detection in mammography: A large-scale multi-center study

论文作者

Garrucho, Lidia, Kushibar, Kaisar, Jouide, Socayna, Diaz, Oliver, Igual, Laura, Lekadir, Karim

论文摘要

基于深度学习的计算机辅助检测系统在乳腺癌检测中表现出巨大的潜力。但是,人工神经网络缺乏领域的概括是它们在改变临床环境中部署的重要障碍。在这项工作中,我们探讨了在数字乳房X线摄影中进行质量检测的深度学习方法的领域概括,并深入分析了大型多中心设置中域转移的来源。为此,我们比较了八种最先进的检测方法的性能,包括基于变压器的模型,该模型在一个域中训练并在五个看不见的域中进行了测试。此外,单源质量检测训练管道旨在改善域的概括,而无需来自新域的图像。结果表明,我们的工作流比在五分之四的五分之四的基于最先进的转移学习方法概括了,同时减少了由不同的采集协议和扫描仪制造商引起的域移动。随后,进行了广泛的分析,以识别对检测性能的影响更大的协变量转移,例如由于患者年龄,乳房密度,质量大小和质量恶性肿瘤的差异。最终,这项全面的研究为基于深度学习的乳腺癌检测中的领域概括提供了关键的见解和最佳实践。

Computer-aided detection systems based on deep learning have shown great potential in breast cancer detection. However, the lack of domain generalization of artificial neural networks is an important obstacle to their deployment in changing clinical environments. In this work, we explore the domain generalization of deep learning methods for mass detection in digital mammography and analyze in-depth the sources of domain shift in a large-scale multi-center setting. To this end, we compare the performance of eight state-of-the-art detection methods, including Transformer-based models, trained in a single domain and tested in five unseen domains. Moreover, a single-source mass detection training pipeline is designed to improve the domain generalization without requiring images from the new domain. The results show that our workflow generalizes better than state-of-the-art transfer learning-based approaches in four out of five domains while reducing the domain shift caused by the different acquisition protocols and scanner manufacturers. Subsequently, an extensive analysis is performed to identify the covariate shifts with bigger effects on the detection performance, such as due to differences in patient age, breast density, mass size, and mass malignancy. Ultimately, this comprehensive study provides key insights and best practices for future research on domain generalization in deep learning-based breast cancer detection.

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