用 CNN 对任何对比度和分辨率的 MRI 扫描中的多发性溃疡和大脑解剖进行联合分段。

Benjamin Billot, Stefano Cerri, Koen Van Leemput, Adrian V Dalca, Juan Eugenio Iglesias
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引用次数: 0

摘要

我们提出了第一种深度学习方法,用于从任何(可能是多模态)对比度和分辨率的 MRI 扫描中分割多发性硬化症病灶和大脑结构。我们的方法只需要对分割进行训练(不需要图像),因为它利用贝叶斯分割的生成模型生成带有模拟病灶的合成扫描,然后用于训练 CNN。通过调整合成部分体积的数量,我们的方法可以在任何分辨率下重新训练分割。根据构造,合成扫描图像与其标签完全对齐,因此可以使用自动方法获得的噪声标签进行训练。训练数据是即时生成的,为了提高泛化能力,我们采用了积极的增强方法(包括伪影)。我们在两个公共数据集上演示了我们的方法,并将其与在 FreeSurfer 中实现的最先进的贝叶斯方法以及在真实数据上训练的特定数据集 CNN 进行了比较。代码可在 https://github.com/BBillot/SynthSeg 上获取。
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JOINT SEGMENTATION OF MULTIPLE SCLEROSIS LESIONS AND BRAIN ANATOMY IN MRI SCANS OF ANY CONTRAST AND RESOLUTION WITH CNNs.

We present the first deep learning method to segment Multiple Sclerosis lesions and brain structures from MRI scans of any (possibly multimodal) contrast and resolution. Our method only requires segmentations to be trained (no images), as it leverages the generative model of Bayesian segmentation to generate synthetic scans with simulated lesions, which are then used to train a CNN. Our method can be retrained to segment at any resolution by adjusting the amount of synthesised partial volume. By construction, the synthetic scans are perfectly aligned with their labels, which enables training with noisy labels obtained with automatic methods. The training data are generated on the fly, and aggressive augmentation (including artefacts) is applied for improved generalisation. We demonstrate our method on two public datasets, comparing it with a state-of-the-art Bayesian approach implemented in FreeSurfer, and dataset specific CNNs trained on real data. The code is available at https://github.com/BBillot/SynthSeg.

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