Chen Yasheng, Juttukonda Meher, Su Yi, Benzinger Tammie, Rubin Brian G, Lee Yueh Z, Lin Weili, Shen Dinggang, Lalush David, An Hongyu
From the Biomedical Research Imaging Center (Y.C., Y.Z.L., W.L., D.S., D.L., H.A.), Department of Radiology (Y.C., Y.Z.L., W.L., D.S., H.A.), and Department of Biomedical Engineering (M.J., Y.Z.L., W.L., D.L., H.A.), University of North Carolina at Chapel Hill, 106 Mason Farm Rd, CB 7513, Chapel Hill, NC 27599; and Mallinckrodt Institute of Radiology, Washington University School of Medicine, St Louis, Mo (Y.S., T.B., B.G.R.).
Radiology. 2015 May;275(2):562-9. doi: 10.1148/radiol.14140810. Epub 2014 Dec 17.
To develop a positron emission tomography (PET) attenuation correction method for brain PET/magnetic resonance (MR) imaging by estimating pseudo computed tomographic (CT) images from T1-weighted MR and atlas CT images.
In this institutional review board-approved and HIPAA-compliant study, PET/MR/CT images were acquired in 20 subjects after obtaining written consent. A probabilistic air segmentation and sparse regression (PASSR) method was developed for pseudo CT estimation. Air segmentation was performed with assistance from a probabilistic air map. For nonair regions, the pseudo CT numbers were estimated via sparse regression by using atlas MR patches. The mean absolute percentage error (MAPE) on PET images was computed as the normalized mean absolute difference in PET signal intensity between a method and the reference standard continuous CT attenuation correction method. Friedman analysis of variance and Wilcoxon matched-pairs tests were performed for statistical comparison of MAPE between the PASSR method and Dixon segmentation, CT segmentation, and population averaged CT atlas (mean atlas) methods.
The PASSR method yielded a mean MAPE ± standard deviation of 2.42% ± 1.0, 3.28% ± 0.93, and 2.16% ± 1.75, respectively, in the whole brain, gray matter, and white matter, which were significantly lower than the Dixon, CT segmentation, and mean atlas values (P < .01). Moreover, 68.0% ± 16.5, 85.8% ± 12.9, and 96.0% ± 2.5 of whole-brain volume had within ±2%, ±5%, and ±10% percentage error by using PASSR, respectively, which was significantly higher than other methods (P < .01).
PASSR outperformed the Dixon, CT segmentation, and mean atlas methods by reducing PET error owing to attenuation correction.
通过从T1加权磁共振(MR)图像和图谱CT图像估计伪计算机断层扫描(CT)图像,开发一种用于脑正电子发射断层扫描(PET)/磁共振(MR)成像的PET衰减校正方法。
在这项经机构审查委员会批准且符合健康保险流通与责任法案(HIPAA)的研究中,在获得20名受试者的书面同意后采集了PET/MR/CT图像。开发了一种概率空气分割和稀疏回归(PASSR)方法用于伪CT估计。在概率空气图的辅助下进行空气分割。对于非空气区域,通过使用图谱MR补丁经稀疏回归估计伪CT值。将PET图像上的平均绝对百分比误差(MAPE)计算为一种方法与参考标准连续CT衰减校正方法之间PET信号强度的归一化平均绝对差值。进行Friedman方差分析和Wilcoxon配对检验,以对PASSR方法与Dixon分割、CT分割和总体平均CT图谱(平均图谱)方法之间的MAPE进行统计学比较。
PASSR方法在全脑、灰质和白质中的平均MAPE±标准差分别为2.42%±1.0、3.28%±0.93和2.16%±1.75,显著低于Dixon、CT分割和平均图谱的值(P<.01)。此外,使用PASSR时,全脑体积的68.0%±16.5、85.8%±12.9和96.0%±2.5的百分比误差在±2%、±5%和±10%以内,显著高于其他方法(P<.01)。
PASSR通过减少衰减校正导致的PET误差,其性能优于Dixon、CT分割和平均图谱方法。