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Automatic Guide-Wire Detection for Neurointerventions Using Low-Rank Sparse Matrix Decomposition and Denoising

机译:使用低秩稀疏矩阵分解和去噪的神经介入自动导丝检测

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摘要

In neuro-interventional surgeries, physicians rely on fluoro-scopic video sequences to guide tools through the vascular system to the region of interest. Due to the low signal-to-noise ratio of low-dose images and the presence of many line-like structures in the brain, the guide-wire and other tools are difficult to see. In this work we propose an effective method to detect guide-wires in fluoroscopic videos that aims at enhancing the visualization for better intervention guidance. In contrast to prior work, we do not rely on a specific modeling of the catheter (e.g. shape, intensity, etc.), nor on prior statistical learning. Instead, we base our approach on motion cues by making use of recent advances in low-rank and sparse matrix decomposition, which we then combine with denoising. An evaluation on 651 X-ray images from 5 patient shows that our guide-wire tip detection is precise and within clinical tolerance for guide-wire inter-frame motions as high as 6 mm.
机译:在神经介入手术中,医生依靠荧光镜视频序列将工具引导通过血管系统到达感兴趣的区域。由于低剂量图像的信噪比低,并且大脑中存在许多线状结构,因此很难看到导丝和其他工具。在这项工作中,我们提出了一种有效的方法来检测透视视频中的导线,旨在增强可视化效果,以更好地进行干预指导。与先前的工作相反,我们不依赖于导管的特定模型(例如形状,强度等),也不依赖于先前的统计学习。相反,我们通过利用低秩和稀疏矩阵分解的最新进展,将我们的方法基于运动线索,然后将其与去噪相结合。对来自5位患者的651幅X射线图像进行的评估显示,我们的导丝尖端检测非常精确,并且对于高达6 mm的导丝框架间运动在临床公差范围内。

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