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Domain Adaptation for Deviating Acquisition Protocols in CNN-Based Lesion Classification on Diffusion-Weighted MR Images

机译:域适应用于偏离基于CNN的病变分类在扩散加权MR图像中的采集协议

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End-to-end deep learning improves breast cancer classification on diffusion-weighted MR images (DWI) using a convolutional neural network (CNN) architecture. A limitation of CNN as opposed to previous model-based approaches is the dependence on specific DWI input channels used during training. However, in the context of large-scale application, methods agnostic towards heterogeneous inputs are desirable, due to the high deviation of scanning protocols between clinical sites. We propose model-based domain adaptation to overcome input dependencies and avoid re-training of networks at clinical sites by restoring training inputs from altered input channels given during deployment. We demonstrate the method's significant increase in classification performance and superiority over implicit domain adaptation provided by training-schemes operating on model-parameters instead of raw DWI images.
机译:端到端深度学习使用卷积神经网络(CNN)架构改善了扩散加权MR图像(DWI)的乳腺癌分类。与先前的基于模型的方法相反的CNN的限制是对训练期间使用的特定DWI输入信道的依赖性。然而,在大规模应用的背景下,由于临床位点之间的扫描协议的高偏差,所需的方法是期望对异构输入的不可知。我们提出基于模型的域适应来克服输入依赖性,并避免通过在部署期间给出的改变的输入通道恢复训练输入来恢复临床站点的网络。我们展示了该方法通过在模型 - 参数上而不是原始DWI图像上运行的培训方案提供的隐式域适应的分类性能和优越性的显着增加。

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