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Multi-modal surface registration for markerless initial patient setup in radiation therapy using microsoft's Kinect sensor

机译:使用微软Kinect传感器的放射治疗中无标记初始患者设置的多模态表面注册

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In radiation therapy, prior to each treatment fraction, the patient must be aligned to computed tomography (CT) data. Patient setup verification systems based on range imaging (RI) can accurately verify the patient position and adjust the treatment table at a fine scale, but require an initial manual setup using lasers and skin markers. We propose a novel markerless solution that enables a fully-automatic initial coarse patient setup. The table transformation that brings template and reference data in congruence is estimated from point correspondences based on matching local surface descriptors. Inherently, this point-based registration approach is capable of coping with gross initial misalignments and partial matching. Facing the challenge of multi-modal surface registration (RI/CT), we have adapted state-of-the-art descriptors to achieve invariance to mesh resolution and robustness to variations in topology. In a case study on real data from a low-cost RI device (Microsoft Kinect), the performance of different descriptors is evaluated on anthropomorphic phantoms. Furthermore, we have investigated the system's resilience to deformations for mono-modal RI/RI registration of data from healthy volunteers. Under gross initial misalignments, our method resulted in an average angular error of 1.5° and an average translational error of 13.4 mm in RI/CT registration. This coarse patient setup provides a feasible initialization for subsequent refinement with verification systems.
机译:在放射疗法中,在每个治疗部分之前,患者必须与计算的断层扫描(CT)数据对齐。基于范围成像(RI)的患者设置验证系统可以准确验证患者位置并以精细的尺度调整处理表,但需要使用激光和皮肤标记进行初始手动设置。我们提出了一种新的无标记解决方案,可实现全自动初始粗患者设置。从基于匹配的本地表面描述符的点对应估计在同时带来模板和参考数据的表格转换。本质上,基于点的登记方法能够应对初始初始错位和部分匹配。面对多模态表面登记(RI / CT)的挑战,我们具有适应的最先进的描述符,以实现对网格分辨率的不变性和对拓扑变化的鲁棒性。在来自低成本RI设备(Microsoft Kinect)的实际数据的案例研究中,对不同描述符的性能进行了评估对拟人的幽灵。此外,我们已经调查了该系统对来自健康志愿者数据的单次莫代尔RI / RI注册的变形的影响。在初始初始错位下,我们的方法导致平均角度误差为1.5°,RI / CT注册中的平均翻译误差为13.4 mm。该粗患者设置提供了可行的初始化,以便随后用验证系统改进。

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