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Automated Segmentation of Multiple Sclerosis Lesions Using Multi-dimensional Gated Recurrent Units

机译:使用多维门控复发单元自动分割多发性硬化病变

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We analyze the performance of multi-dimensional gated recurrent units on automated lesion segmentation in multiple sclerosis. The segmentation of these pathologic structures is not trivial, since location, shape and size can be arbitrary. Furthermore, the inherent class imbalance of about 1 lesion voxel to 10 000 healthy voxels further exacerbates the correct segmentation. We introduce a new MD-GRU setup, using established techniques from the deep learning community as well as our own adaptations. We evaluate these modifications by comparing them to a standard MD-GRU network. We demonstrate that using data augmentation, selective sampling, residual learning and/or DropConnect on the RNN state can produce better segmentation results. Reaching rank #1 in the ISBI 2015 longitudinal multiple sclerosis lesion segmentation challenge, we show that a setup which combines these techniques can outperform the state of the art in automated lesion segmentation.
机译:我们分析多维门控复发单位对多发性硬化中自动病变分段的性能。这些病理结构的分割不是微不足道的,因为位置,形状和尺寸可以是任意的。此外,约1个病变体素到10 000个健康体素的固有类别不平衡进一步加剧了正确的分割。我们介绍了一个新的MD-GRU设置,使用深度学习界的建立技术以及我们自己的适应。我们通过将它们与标准MD-GRU网络进行比较来评估这些修改。我们演示了使用数据增强,在RNN状态下的选择性采样,剩余学习和/或DropConnect可以产生更好的分段结果。在ISBI 2015年纵向多发性硬化病变分割挑战中达到排名第1,我们表明结合这些技术的设置可以优于自动化病变分割中的最新状态。

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