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Augmenting Auto-context with Global Geometric Features for Spinal Cord Segmentation

机译:具有全局几何特征的自动上下文增强脊髓分割

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摘要

Anatomical shape variations are typically difficult to model and parametric or hand-crafted models can lead to ill-fitting segmentations. This difficulty can be addressed with a framework like auto-context, that learns to jointly detect and regularize a segmentation. However, mis-segmentation can still occur when a desired structure, such as the spinal cord, has few locally distinct features. High-level knowledge at a global scale (e.g. an MRI contains a single connected spinal cord) is needed to regularize these candidate segmentations. To encode high-level knowledge, we propose to augment the auto-context framework with global geometric features extracted from the detected candidate shapes. Our classifier then learns these high-level rules and rejects falsely detected shapes. To validate our method we segment the spinal cords from 20 MRI volumes composed of patients with and without multiple sclerosis and demonstrate improvements in accuracy, speed, and manual effort required when compared to state-of-the-art methods.
机译:解剖形状变化通常很难建模,而参数化或手工制作的模型可能会导致不合适的分割。可以通过自动上下文之类的框架来解决此难题,该框架学会联合检测和规范化细分。但是,当所需的结构(例如脊髓)几乎没有局部明显的特征时,仍然会发生误分割。需要全球范围的高级知识(例如MRI包含一条相连的脊髓)来规范这些候选分割。为了对高级知识进行编码,我们建议使用从检测到的候选形状中提取的全局几何特征来扩展自动上下文框架。然后,我们的分类器学习这些高级规则,并拒绝错误检测的形状。为了验证我们的方法,我们将MRI分为20个MRI体积的脊髓(包括多发性硬化症和无多发性硬化症的患者),并与最新方法相比,显示出所需的准确性,速度和人工方面的改善。

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  • 来源
  • 会议地点 Nagoya(JP)
  • 作者单位

    Medical Image Analysis Lab., Simon Fraser University, Burnaby, Canada;

    Medical Image Analysis Lab., Simon Fraser University, Burnaby, Canada Princess Margaret Cancer Centre, University Health Network, Toronto, Canada;

    MS/MRI Research Group, University of British Columbia, Vancouver, Canada;

    Medical Image Analysis Lab., Simon Fraser University, Burnaby, Canada;

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  • 正文语种 eng
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