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首页> 外文期刊>IEEE Transactions on Ultrasonics, Ferroelectrics, and Frequency Control >Fine-Tuning U-Net for Ultrasound Image Segmentation: Different Layers, Different Outcomes
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Fine-Tuning U-Net for Ultrasound Image Segmentation: Different Layers, Different Outcomes

机译:微调用于超声图像分割的 U-Net:不同的层,不同的结果

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One way of resolving the problem of scarce and expensive data in deep learning for medical applications is using transfer learning and fine-tuning a network which has been trained on a large data set. The common practice in transfer learning is to keep the shallow layers unchanged and to modify deeper layers according to the new data set. This approach may not work when using a U-Net and when moving from a different domain to ultrasound (US) images due to their drastically different appearance. In this study, we investigated the effect of fine-tuning different sets of layers of a pretrained U-Net for US image segmentation. Two different schemes were analyzed, based on two different definitions of shallow and deep layers. We studied simulated US images, as well as two human US data sets. We also included a chest X-ray data set. The results showed that choosing which layers to fine-tune is a critical task. In particular, they demonstrated that fine-tuning the last layers of the network, which is the common practice for classification networks, is often the worst strategy. It may therefore be more appropriate to fine-tune the shallow layers rather than deep layers in US image segmentation when using a U-Net. Shallow layers learn lower level features which are critical in automatic segmentation of medical images. Even when a large US data set is available, we observed that fine-tuning shallow layers is a faster approach compared to fine-tuning the whole network.
机译:解决医疗应用中深度学习数据稀缺和昂贵问题的一种方法是使用迁移学习并微调已在大型数据集上训练的网络。迁移学习的常见做法是保持浅层不变,并根据新的数据集修改深层。当使用 U-Net 以及从不同的域移动到超声 (US) 图像时,由于它们的外观截然不同,这种方法可能不起作用。在这项研究中,我们研究了微调预训练 U-Net 的不同层集以进行 US 图像分割的效果。基于浅层和深层的两种不同定义,分析了两种不同的方案。我们研究了模拟的美国图像,以及两个人类美国数据集。我们还纳入了胸部X光数据集。结果表明,选择要微调的层是一项关键任务。特别是,他们证明,微调网络的最后一层,这是分类网络的常见做法,通常是最糟糕的策略。因此,在使用 U-Net 时,在美国图像分割中微调浅层而不是深层可能更合适。浅层学习较低级别的特征,这些特征对于医学图像的自动分割至关重要。即使有大量的美国数据集可用,我们也观察到,与微调整个网络相比,微调浅层是一种更快的方法。

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