Accuracy of Head Motion Compensation for the HRRT: Comparison of Methods.

Xiao Jin, Tim Mulnix, Beata Planeta-Wilson, Jean-Dominique Gallezot, Richard E Carson
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引用次数: 13

Abstract

Motion correction in PET has become more important as system resolution has improved. The purpose of this study was to evaluate the accuracy of three motion compensation methods, event-by-event motion compensation with list-mode reconstruction (MOLAR), frame-based motion correction, and post-reconstruction image registration. Motion compensated image reconstructions were carried out with simulated HRRT data, using a range of motion information based on human motion data. ROI analyses in high contrast regions were performed to evaluate the accuracy of all the motion compensation methods, with particular attention to within-frame motion.Our study showed that MOLAR with list-mode based motion correction using accurate motion data can reliably correct for all reasonable head motions. Over all motions, the average ROI count was within 0.1±4.2% and 0.7±0.9% of the reference, no-motion value for two different ROIs. The location of the ROI centroid was found to be within 0.7±0.3mm of that of the reference image for the raphe nucleus. Frame-based motion compensation and post-reconstruction image registration were able to correct for small (<5mm), but the ROI intensity begins to deteriorate for medium motions (5-10mm), especially for small brain structures such as the raphe nucleus. For large (>10mm) motions, the average centroid locations of the raphe nucleus ROI had an offset error of 1.5±1.8mm and 1.8±1.8mm for each of the frame-based methods. For each frame-based method, the decrease in the average ROI intensity was 16.9±4.3% and 20.2±9.9% respectively for the raphe nucleus, and was 5.5±2.2% and 7.4±0.2% for putamen. Based on these data, we conclude that event-by-event based motion correction works accurately for all reasonable motions, whereas frame-based motion correction is accurate only when the within-frame motion is less than 10mm.

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HRRT头部运动补偿的精度:方法比较。
随着系统分辨率的提高,PET中的运动校正变得越来越重要。本研究的目的是评估三种运动补偿方法的准确性,即基于列表模式重建的逐事件运动补偿(MOLAR),基于帧的运动校正和重建后的图像配准。利用基于人体运动数据的一系列运动信息,利用模拟HRRT数据进行运动补偿图像重建。在高对比度区域进行ROI分析,以评估所有运动补偿方法的准确性,特别关注帧内运动。我们的研究表明,使用精确的运动数据进行基于列表模式的运动校正的臼齿可以可靠地校正所有合理的头部运动。在所有运动中,两种不同ROI的平均ROI计数在参考无运动值的0.1±4.2%和0.7±0.9%之间。ROI质心位置与中缝核参考图像的距离在0.7±0.3mm以内。基于帧的运动补偿和重建后图像配准能够校正较小(10mm)的运动,中缝核ROI的平均质心位置偏移误差分别为1.5±1.8mm和1.8±1.8mm。两种方法对中缝核的平均ROI强度分别降低16.9±4.3%和20.2±9.9%,对壳核的平均ROI强度分别降低5.5±2.2%和7.4±0.2%。基于这些数据,我们得出结论,基于事件的运动校正对所有合理的运动都是准确的,而基于帧的运动校正只有在帧内运动小于10mm时才准确。
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