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Deep Learning Semantic Segmentation for High-Resolution Medical Volumes

机译:高分辨率医学体积的深度学习语义分割

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Automated semantic segmentation in the domain of medical imaging can enable a faster, more reliable, and more affordable clinical workflow. Fully convolutional networks (FCNs) have been heavily used in this area due to the level of success that they have achieved. In this work, we first leverage recent architectural innovations to make an initial segmentation: (i) spatial and channel-wise squeeze and excitation mechanism; (ii) a 3D U-Net++ network and deep supervision. Second, we use classical methods for refining the initial segmentation: (i) spatial normalization and (ii) local 3D refinement network applied to patches. Finally, we put our methods together in a novel segmentation pipeline. We train and evaluate our models and pipelines on a dataset of a 120 abdominal magnetic resonance – volumetric – images (MRIs). The goal is to segment five different organs of interest (ORI): liver, kidneys, stomach, duodenum, and large bowel. Our experiments show that we can generate high resolution segmentation of comparable quality to the state-of-the-art methods on low resolution without adding significant computational cost.
机译:医学成像领域的自动语义分割可以实现更快,更可靠,更实惠的临床工作流程。由于它们所取得的成功水平,完全卷积网络(FCNS)在这一领域受到大量使用。在这项工作中,我们首先利用最近的建筑创新来制作初步分割:(i)空间和通道 - 明智的挤压和激励机制; (ii)3D U-Net ++网络和深度监督。其次,我们使用经典方法来精炼初始分割:(i)空间标准化和(ii)应用于补丁的本地3D细化网络。最后,我们将我们的方法放在一个新的分段管道中。我们在120腹部磁共振 - 体积 - 图像(MRIS)的数据集上培训和评估我们的模型和管道。目标是分割五种不同的兴趣器官(ORI):肝脏,肾脏,胃,十二指肠和大肠。我们的实验表明,我们可以在低分辨率上为最先进的方法产生高分辨率的质量,而不增加显着的计算成本。

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