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Simultaneous Intracranial Artery Tracing and Segmentation from Magnetic Resonance Angiography by Joint Optimization from Multiplanar Reformation

机译:多平面重建联合优化从磁共振血管造影同时颅内动脉追踪和分割

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摘要

Time-of-flight (TOF) Magnetic Resonance Angiography (MRA) is a useful imaging technique which reflects blood flow and vasculature information. However, due to the low signal and contrast of arteries in TOF MRA, it is challenging to extract vascular features such as length, volume and tortuosity, through segmentation and tracing. Hence, in this paper, a simultaneous artery tracing and segmentation method is proposed to a generate quantitative intracranial vasculature map from TOF MRA. Instead of using original images, segmentation from a neural network model is used to initiate tracing, avoiding the low signal or contrast for small arteries. A tracing method is proposed based on cross-sectional best matching, followed by an optimization scheme from the multiplanar reformatted view. Centerline positions, lumen radii and centerline deviations are jointly optimized for robust tracing within artery regions. Finally, the refined artery traces are used for better artery segmentation. The method is validated on eight TOF MRAs of both healthy subjects and patients with cerebrovascular disease, showing good agreements with human supervised tracing and segmentation results for representative features such as artery length (<4% mean absolute difference), volume (>0.80 Dice), and tortuosity (<3% mean absolute difference). Our method out-performs three other popular tracing and segmentation methods by a large margin.
机译:飞行时间(TOF)磁共振血管造影(MRA)是一种有用的成像技术,可反映血流和脉管系统信息。然而,由于TOF MRA中的动脉信号和对比度较低,通过分段和示踪提取血管特征(例如长度,体积和曲折度)具有挑战性。因此,在本文中,提出了一种同时动脉追踪和分割的方法,以从TOF MRA生成定量颅内血管系统图。代替使用原始图像,而是使用来自神经网络模型的分割来启动跟踪,从而避免了小动脉的低信号或对比度。提出了一种基于横截面最佳匹配的跟踪方法,然后从多平面重新格式化的角度提出了一种优化方案。共同优化中心线位置,管腔半径和中心线偏差,以在动脉区域内进行可靠的描迹。最后,精炼的动脉痕迹可用于更好的动脉分割。该方法已在健康受试者和脑血管疾病患者的八个TOF MRA上进行了验证,显示出与人类监督的追踪和分割结果良好的一致性,这些代表性特征包括动脉长度(<4%平均绝对差),体积(> 0.80 Dice)和曲折度(<3%的平均绝对差)。我们的方法大大优于其他三种流行的跟踪和细分方法。

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