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Comparison of Data-Driven Respiratory Signal Extraction Methods From Cone-Beam CT (CBCT) — a Preliminary Clinical Study

机译:锥形梁CT(CBCT)数据驱动呼吸信号提取方法的比较 - 初步临床研究

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The difficulty of defining a data driven gold standard ground truth for internal motion has posed a challenge to clinically validate developed methods to extract respiratory motion especially during a 60-second cone-beam CT (CBCT) scan in Image-Guided Radiotherapy Treatment (IGRT). A methodology to manually track respiratory motion on clinically acquired lung cancer patient CBCT projection data over a 360° view angle is presented in this paper that serves as a ground truth respiratory signal for our work. The tracked signal is used as a reference to assess the performance of four data-driven methods in respiratory motion extraction, namely: Amsterdam Shroud (AS), Intensity Analysis (IA), Local Principal Component Analysis (LPCA), and Fourier Transform (FT)-based methods. The clinical assessment using this reference signal includes both quantitative and qualitative analysis. It is found out quantitatively that all four methods managed to extract respiratory signals which are highly correlated with the ground truth, with the LPCA method displaying the highest correlation coefficient value at 0.9071. This result is further supported by qualitative analysis and discussion via visual inspection of each extracted signal plotted with the reference signal on the same axes.
机译:确定数据驱动的数据驱动的金标标准实际对内部运动的难度已经对临床验证的开发方法提出了提取呼吸运动的挑战,特别是在图像引导放射治疗(IGRT)中的60秒锥形束CT(CBCT)扫描期间。本文提出了一种在360°视图角度上手动地进行临床上肺癌患者CBCT投影数据的呼吸运动的方法,作为我们工作的基础真理呼吸信号。跟踪信号用作评估呼吸运动提取中四种数据驱动方法的性能的参考,即:Amsterdam Shord(AS),强度分析(IA),局部主成分分析(LPCA)和傅里叶变换(FT )基于的方法。使用该参考信号的临床评估包括定量和定性分析。可以定量地发现,所有四种方法都有旨在提取与地面真理高度相关的呼吸信号,LPCA方法显示在0.9071时的最高相关系数值。通过定性分析和通过在同一轴上的参考信号绘制的每个提取信号的目视检查进一步支持该结果。

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