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First U-Net Layers Contain More Domain Specific Information Than the Last Ones

机译:第一个U-Net层包含比最后一个特定的域特定信息

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MRI scans appearance significantly depends on scanning protocols and, consequently, the data-collection institution. These variations between clinical sites result in dramatic drops of CNN segmentation quality on unseen domains. Many of the recently proposed MRI domain adaptation methods operate with the last CNN layers to suppress domain shift. At the same time, the core manifestation of MRI variability is a considerable diversity of image intensities. We hypothesize that these differences can be eliminated by modifying the first layers rather than the last ones. To validate this simple idea, we conducted a set of experiments with brain MRI scans from six domains. Our results demonstrate that 1) domain-shift may deteriorate the quality even for a simple brain extraction segmentation task (surface Dice Score drops from 0.85-0.89 even to 0.09); 2) fine-tuning of the first layers significantly outperforms fine-tuning of the last layers in almost all supervised domain adaptation setups. Moreover, fine-tuning of the first layers is a better strategy than fine-tuning of the whole network, if the amount of annotated data from the new domain is strictly limited.
机译:MRI扫描外观显着取决于扫描协议,因此数据收集机构。临床部位之间的这些变化导致在看不见的域上的CNN分割质量的显着下降。许多最近提出的MRI域适配方法使用最后的CNN层进行抑制域移位。同时,MRI变异性的核心表现是一种相当多样化的图像强度。我们假设可以通过修改第一层而不是最后一个层来消除这些差异。为了验证这个简单的想法,我们通过六个域进行了一组脑MRI扫描的实验。我们的结果表明,即使对于简单的脑提取分割任务(表面骰子评分降低0.09),甚至0.09的表面骰子得分降低,甚至0.09)即使对于0.09的表面骰子得分降低,也可能会降低质量。 2)第一层的微调显着优于几乎所有监督域适应设置中最后一个层的微调。此外,如果新域的注释数据严格限制,则第一层的微调是比整个网络的微调更好的策略。

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