Patient specific respiratory motion model using two static CT images

Tengfei Wang, Guoren Xia, Hai Li, C. Qi, Hongzhi Wang
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引用次数: 1

Abstract

Computed Tomography (CT) has been extensively used for guiding percutaneous lung biopsy during image-guided intervention. However, due to respiratory motion, there having a difference between static images and current lung. Current studies are using the global model to predict lung movement in real time. This model extracts common features of lung motion based on group-level of imaging data, which overlook the information comes from the randomness of lung movements and individual differences on the features of lung motion and consequently, limit the precision of the model. In order to resolve this issue, patient specific model is proposed and can effectively acquire individual features of lung movement but required 4D CT image that increases the risk of radiation damage. This paper developed a new patient specific respiratory motion model to establish the mathematical relationship between lung internal motion and external chest surface motion. Only two static 3D CT are needed for a specific patient, and there is no need to collect 4D CT images. The proposed method combining the advantages of global and patient specific model will ensure better prediction of lung motions and lower the risk of radiation damage. The qualitative and quantitative result show that the proposed model achieved a better balance between predictive accuracy and radiation doses.
利用两张静态CT图像建立患者特异性呼吸运动模型
计算机断层扫描(CT)已广泛用于引导经皮肺活检在图像引导的介入。然而,由于呼吸运动,静态图像与当前肺有差异。目前的研究正在使用全局模型来实时预测肺部运动。该模型基于组级成像数据提取肺运动的共同特征,忽略了肺运动的随机性和肺运动特征的个体差异带来的信息,限制了模型的精度。为了解决这一问题,提出了针对患者的模型,该模型可以有效地获取肺运动的个体特征,但需要4D CT图像,增加了辐射损伤的风险。本文建立了一种新的患者特异性呼吸运动模型,建立了肺内运动与胸外表面运动之间的数学关系。特定患者只需要2台静态3D CT,无需采集4D CT图像。该方法结合了全局模型和患者特异性模型的优点,可以更好地预测肺部运动,降低辐射损伤的风险。定性和定量结果表明,该模型在预测精度和辐射剂量之间取得了较好的平衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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