Multi-Scale Attentional Network for Multi-Focal Segmentation of Active Bleed after Pelvic Fractures.

Yuyin Zhou, David Dreizin, Yingwei Li, Zhishuai Zhang, Yan Wang, Alan Yuille
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引用次数: 15

Abstract

Trauma is the worldwide leading cause of death and disability in those younger than 45 years, and pelvic fractures are a major source of morbidity and mortality. Automated segmentation of multiple foci of arterial bleeding from ab-dominopelvic trauma CT could provide rapid objective measurements of the total extent of active bleeding, potentially augmenting outcome prediction at the point of care, while improving patient triage, allocation of appropriate resources, and time to definitive intervention. In spite of the importance of active bleeding in the quick tempo of trauma care, the task is still quite challenging due to the variable contrast, intensity, location, size, shape, and multiplicity of bleeding foci. Existing work presents a heuristic rule-based segmentation technique which requires multiple stages and cannot be efficiently optimized end-to-end. To this end, we present, Multi-Scale Attentional Network (MSAN), the first yet reliable end-to-end network, for automated segmentation of active hemorrhage from contrast-enhanced trauma CT scans. MSAN consists of the following components: 1) an encoder which fully integrates the global contextual information from holistic 2D slices; 2) a multi-scale strategy applied both in the training stage and the inference stage to handle the challenges induced by variation of target sizes; 3) an attentional module to further refine the deep features, leading to better segmentation quality; and 4) a multi-view mechanism to leverage the 3D information. MSAN reports a significant improvement of more than 7% compared to prior arts in terms of DSC.

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骨盆骨折后活动性出血多焦点分割的多尺度注意网络。
创伤是全世界45岁以下人群死亡和残疾的主要原因,骨盆骨折是发病率和死亡率的主要来源。骨盆外伤CT对动脉出血的多个病灶进行自动分割,可以快速客观地测量活动性出血的总范围,潜在地增加护理点的结果预测,同时改善患者分诊,分配适当的资源,并缩短最终干预的时间。尽管活动性出血在快速创伤护理中的重要性,但由于出血灶的对比度、强度、位置、大小、形状和多样性的变化,这项任务仍然相当具有挑战性。现有的工作是一种启发式的基于规则的分割技术,需要多个阶段,不能有效地优化端到端。为此,我们提出了多尺度注意力网络(MSAN),这是第一个可靠的端到端网络,用于从对比增强创伤CT扫描中自动分割活动性出血。MSAN由以下组件组成:1)编码器,该编码器完全集成了来自整体二维切片的全局上下文信息;2)在训练阶段和推理阶段同时采用多尺度策略,以应对目标大小变化带来的挑战;3)关注模块,进一步细化深度特征,提高分割质量;4)利用三维信息的多视图机制。MSAN报告说,在DSC方面,与现有技术相比,显著改善了7%以上。
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