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Multi-stream 3D FCN with multi-scale deep supervision for multi-modality isointense infant brain MR image segmentation

机译:多级3D FCN,具有多尺度深度监控多模态性婴幼儿脑MR图像分割

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We present a method to address the challenging problem of segmentation of multi-modality isointense infant brain MR images into white matter (WM), gray matter (GM), and cerebrospinal fluid (CSF). Our method is based on context-guided, multi-stream fully convolutional networks (FCN), which after training, can directly map a whole volumetric data to its volume-wise labels. In order to alleviate the potential gradient vanishing problem during training, we designed multi-scale deep supervision. Furthermore, context information was used to further improve the performance of our method. Validated on the test data of the MICCAI 2017 Grand Challenge on 6-month infant brain MRI segmentation (iSeg-2017), our method achieved an average Dice Overlap Coefficient of 95.4%, 91.6% and 89.6% for CSF, GM and WM, respectively.
机译:我们提出了一种解决白种物(WM),灰质(GM)和脑脊液(CSF)分成多种模式雌峰婴儿脑MR图像的挑战性问题的方法。我们的方法是基于上下文引导的多流全卷积网络(FCN),在训练之后,可以直接将整个体积数据映射到其音量标签。为了减轻训练期间潜在的渐变消失问题,我们设计了多规模的深度监督。此外,使用上下文信息来进一步提高我们方法的性能。在6个月婴儿脑MRI分割(ISEG-2017)的Miccai 2017年大挑战的测试数据上验证(ISEG-2017),CSF,GM和CM的平均骰子重叠系数为95.4 %,91.6 %和89.6 % WM分别。

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