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Learning-based detection of flow diverters in cerebral images

机译:基于学习的大脑图像中分流器的检测

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We propose a machine learning-based method to automatically detect flow diverters in cerebral C-arm CT images. An appearance detector is learned to generate hypotheses of a flow diverter's location in a volumetric image. A probabilistic framework incorporating a local appearance and shape model is developed to trace the flow diverter. Promising results have been obtained on clinical data. The proposed method provides a potential solution to the automation of cerebral aneurysm treatment workflow and in particular the post-operative assessment of flow diverter placement.
机译:我们提出了一种基于机器学习的方法来自动检测脑C臂CT图像中的分流器。学习外观检测器以生成体积图像中分流器位置的假设。开发了结合局部外观和形状模型的概率框架来跟踪分流器。根据临床数据已获得了有希望的结果。所提出的方法为脑动脉瘤治疗工作流程的自动化,尤其是对分流器放置的术后评估提供了潜在的解决方案。

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