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Evaluation of motion correction methods in human brain PET imaging-A simulation study based on human motion data

机译:基于人类运动数据的人脑宠物成像运动校正方法评价 - 一种基于人类运动数据的仿真研究

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摘要

Purpose: Motion correction in PET has become more important as system resolution has improved. The purpose of this study was to evaluate the accuracy of event-by-event and frame-based MC methods in human brain PET imaging. Methods: Motion compensated image reconstructions were performed with static and dynamic simulated high resolution research tomograph data with frame-based image reconstructions, using a range of measured human head motion data. Image intensities in high-contrast regions of interest (ROI) and parameter estimates in tracer kinetic models were assessed to evaluate the accuracy of the motion correction methods. Results: Given accurate motion data, event-by-event motion correction can reliably correct for head motions. The average ROI intensities and the kinetic parameter estimates VT and BPND were comparable to the true values. The frame-based motion correction methods with correctly aligned attenuation map using the average of externally acquired motion data or motion data derived from image registration give comparable quantitative accuracy. For large intraframe (5 mm) motion, the frame-based methods produced ~9% bias in ROI intensities, ~5% in VT, and ~10% in BPND estimates. In addition, in real studies that lack a ground truth, the normalized weighted residual sum of squared difference is a potential figure-of-merit to evaluate the accuracy of motion correction methods. Conclusions: The authors conclude that frame-based motion correction methods are accurate when the intraframe motion is less than 5 mm and when the attenuation map is accurately aligned. Given accurate motion data, event-by-event motion correction can reliably correct for head motion in human brain PET studies.
机译:目的:宠物中的运动校正随着系统分辨率的提高而变得更加重要。本研究的目的是评估人脑宠物成像中逐赛事和基于帧的MC方法的准确性。方法:使用一系列测量的人头运动数据,用静态和动态模拟高分辨率研究曲线数据进行运动补偿图像重建。评估利用高对比度区域(ROI)和参数估计的图像强度进行评估,以评估运动校正方法的准确性。结果:给定准确的运动数据,逐步发生运动校正可以可靠地对头部运动可靠。平均ROI强度和动力学参数估计VT和BPND与真实值相当。使用从外部获取的运动数据的平均值或来自图像配准的运动数据的平均值具有正确对准的衰减图的基于帧的运动校正方法给出了相当的定量精度。对于大型帧内(& 5 mm)运动,基于帧的方法在ROI强度下产生了〜9%,vt〜5%,BPND估算中〜10%。此外,在缺乏地面真理的实际研究中,平方差的标准化加权残余之和是评估运动校正方法的准确性的潜在图。结论:作者得出结论,当帧内运动小于5mm时,基于帧的运动校正方法是准确的,并且当衰减图准确地对准时。给定准确的运动数据,逐个事件运动校正可以可靠地正确地校正人脑宠物研究中的头部运动。

著录项

  • 来源
    《Medical Physics》 |2013年第10期|共1页
  • 作者单位

    Biomedical Engineering Yale University New Haven CT 06520 United States;

    PET Center Diagnostic Radiology School of Medicine Yale University LMP89 New Haven CT 06520;

    PET Center Diagnostic Radiology School of Medicine Yale University LMP89 New Haven CT 06520;

    Biomedical Engineering Yale University New Haven CT 06520 United States PET Center Diagnostic;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 基础医学;
  • 关键词

    Dynamic; Event-by-event; Frame-based; Motion correction; PET;

    机译:动态;逐个事件;基于帧;运动校正;宠物;
  • 入库时间 2022-08-19 17:15:43

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