首页> 外文期刊>Computerized Medical Imaging and Graphics: The Official Jounal of the Computerized Medical Imaging Society >Digital reconstruction of high-quality daily 4D cone-beam CT images using prior knowledge of anatomy and respiratory motion
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Digital reconstruction of high-quality daily 4D cone-beam CT images using prior knowledge of anatomy and respiratory motion

机译:使用解剖学和呼吸运动的先验知识对高质量的每日4D锥形束CT图像进行数字重建

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摘要

Conventional in-room cone-beam computed tomography (CBCT) lacks explicit representation of patient respiratory motion and usually has poor image quality and inaccurate CT numbers for target delineation and/or adaptive treatment planning. In-room four-dimensional (4D) CBCT image acquisition is still time consuming and suffers the same issue of poor image quality. To overcome this limitation, we developed a computational framework to digitally synthesize high-quality daily 4D CBCT images using the prior knowledge of motion and appearance learned from the planning 4D CT dataset A patient-specific respiratory motion model was first constructed from the planning 4D CT images using principal component analysis of displacement vector fields across different respiratory phases. Subsequently, the respiratory motion model as well as the image content of the planning CT was spatially mapped onto the daily CBCT using deformable image registration. The synthesized 4D images possess explicit patient motion while maintaining the geometric accuracy of patient's anatomy at the time of treatment. We validated our model by quantitatively comparing the synthesized 4D CBCT against the 4D CT dataset acquired in the same day from protocol patients undergoing daily in-room CBCT setup and weekly 4D CT for treatment evaluation. Our preliminary results have demonstrated good agreement of contours in different motion phases between the synthesized and acquired scans. Various imaging artifacts were also suppressed and soft-tissue visibility was enhanced. (C) 2014 Elsevier Ltd. All rights reserved.
机译:传统的室内锥形束计算机断层扫描(CBCT)缺乏对患者呼吸运动的明确表示,并且通常图像质量较差,并且靶标描绘和/或适应性治疗计划的CT数不准确。室内四维(4D)CBCT图像采集仍然很耗时,并且会遇到图像质量差的问题。为了克服这一局限性,我们开发了一个计算框架,利用从计划4D CT数据集中学到的运动和外观的先验知识,数字合成高质量的每日4D CBCT图像。首先从计划4D CT构建了患者特定的呼吸运动模型图像使用不同呼吸阶段的位移矢量场的主成分分析。随后,使用可变形图像配准将呼吸运动模型以及计划CT的图像内容在空间上映射到每日CBCT。合成的4D图像具有明确的患者运动,同时在治疗时保持患者解剖结构的几何精度。我们通过将合成的4D CBCT与同一天从每天进行室内CBCT设置和每周4D CT进行治疗评估的方案患者中获取的4D CT数据集进行定量比较来验证模型。我们的初步结果表明,合成扫描和采集扫描在不同运动阶段的轮廓具有良好的一致性。还抑制了各种成像伪像,并增强了软组织的可见性。 (C)2014 Elsevier Ltd.保留所有权利。

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