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Analysis of feature stability for laser-based determination of tissue thickness

机译:基于激光的组织厚度的特征稳定性分析

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Localisation of the cranium is necessary for accurate stereotactic radiotherapy of malign lesions in the brain. This is achieved by immobilizing the patient's head (typically by using thermoplastic masks, bite blocks or combinations thereof) and X-ray imaging to determine the actual position of the patient with respect to the treatment device. In previous work we have developed a novel method for marker-less and non-invasive tracking of the skull using a combination of laser-based surface triangulation and the analysis of backscattered feature patterns of a tightly collimated NIR laser beam scanned over the patient's forehead. An HDR camera is coupled into the beam path of the laser scanning system to acquire one image per projected laser point. We have demonstrated that this setup is capable of accurately determining the tissue thickness for each triangulation point and consequently allows detecting the surface of the cranial bone with sub-millimetre accuracy. Typical clinical settings (treatment times of 15-90 min) require feature stability over time, since the determination of tissue thickness is achieved by machine learning methods trained on initial feature scans. We have collected initial scans of the forehead as well as long-term backscatter data (20 images per seconds over 30 min) from five subjects and extracted the relevant tissue features from the image streams. Based on the knowledge of the relationship between the tissue feature values and the tissue thickness, the analysis of the long-term data showed that the noise level is low enough to allow robust discrimination of tissue thicknesses of 0.5 mm.
机译:颅骨的定位是准确的大脑中恶性病变的准确立体定向放射治疗所必需的。这是通过固定患者的头部(通常通过使用热塑性掩模,咬合块或其组合)和X射线成像来实现,以确定患者相对于治疗装置的实际位置。在以前的工作中,我们已经开发了一种新的方法,用于使用基于激光的表面三角测量的组合和在患者额头上扫描的紧密准直的NIR激光束的背散射特征图案的分析来开发了颅骨的较少和非侵入性跟踪。 HDR相机耦合到激光扫描系统的光束路径中,以获取每个投影激光点的一个图像。我们已经证明,该设置能够精确地确定每个三角测量点的组织厚度,从而允许以亚毫米精度检测颅骨的表面。典型的临床环境(治疗时间为15-90分钟)需要随时间的特征稳定性,因为通过在初始特征扫描的机器学习方法实现组织厚度的确定。我们从五个受试者收集了额头的初始扫描以及长期反向散射数据(超过30分钟的20秒图像),并从图像流中提取相关的组织特征。基于组织特征值与组织厚度之间的关系的知识,长期数据的分析表明,噪声水平足够低,以允许稳健的组织厚度为0.5mm的组织厚度。

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