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Supervised Domain Adaptation for Automatic Sub-cortical Brain Structure Segmentation with Minimal User Interaction

机译:有监督的域自适应可在用户交互最少的情况下自动进行皮质下大脑皮层结构分割

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摘要

In recent years, some convolutional neural networks (CNNs) have been proposed to segment sub-cortical brain structures from magnetic resonance images (MRIs). Although these methods provide accurate segmentation, there is a reproducibility issue regarding segmenting MRI volumes from different image domains – e.g., differences in protocol, scanner, and intensity profile. Thus, the network must be retrained from scratch to perform similarly in different imaging domains, limiting the applicability of such methods in clinical settings. In this paper, we employ the transfer learning strategy to solve the domain shift problem. We reduced the number of training images by leveraging the knowledge obtained by a pretrained network, and improved the training speed by reducing the number of trainable parameters of the CNN. We tested our method on two publicly available datasets – MICCAI 2012 and IBSR – and compared them with a commonly used approach: FIRST. Our method showed similar results to those obtained by a fully trained CNN, and our method used a remarkably smaller number of images from the target domain. Moreover, training the network with only one image from MICCAI 2012 and three images from IBSR datasets was sufficient to significantly outperform FIRST with (p < 0.001) and (p < 0.05), respectively.
机译:近年来,已经提出了一些卷积神经网络(CNN)从磁共振图像(MRI)分割皮层下大脑结构。尽管这些方法可提供准确的分割,但是在分割来自不同图像域的MRI体积时仍存在可重复性问题,例如协议,扫描仪和强度配置文件中的差异。因此,必须重新训练网络以在不同的成像域中执行类似的操作,从而限制了此类方法在临床环境中的适用性。在本文中,我们采用转移学习策略来解决域转移问题。我们通过利用预训练网络获得的知识来减少训练图像的数量,并通过减少CNN的可训练参数的数量来提高训练速度。我们在两个公开可用的数据集– MICCAI 2012和IBSR –上测试了我们的方法,并将其与常用方法FIRST进行了比较。我们的方法显示出与完全训练的CNN相似的结果,并且我们的方法使用的目标域图像数量明显减少。此外,仅用MICCAI 2012中的一幅图像和IBSR数据集中的三幅图像训练网络就足以显着优于FIRST,分别具有(p <0.001)和(p <0.05)。

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