With the advantages of the increased sensitivity of fully 3-dimensional (3D) PET for whole-body imaging come the challenges of more complicated quantitative corrections and, in particular, a'/> Correction Methods for Random Coincidences in Fully 3D Whole-Body PET: Impact on Data and Image Quality
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Correction Methods for Random Coincidences in Fully 3D Whole-Body PET: Impact on Data and Image Quality

机译:完全3D全身PET随机符合的校正方法:对数据和图像质量的影响

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id="p-1">With the advantages of the increased sensitivity of fully 3-dimensional (3D) PET for whole-body imaging come the challenges of more complicated quantitative corrections and, in particular, an increase in the number of random coincidences. The most common method of correcting for random coincidences is the real-time subtraction of a delayed coincidence channel, which does not add bias but increases noise. An alternative approach is the postacquisition subtraction of a low-noise random coincidence estimate, which can be obtained either from a smoothed delayed coincidence sinogram or from a calibration scan or directly estimated. Each method makes different trade-offs between noise amplification, bias, and data-processing requirements. These trade-offs are dependent on activity injected, the local imaging environment (e.g., near the bladder), and the reconstruction algorithm. >Methods: Using fully 3D whole-body simulations and phantom studies, we investigate how the gains in noise equivalent count (NEC) rates from using a noiseless random coincidence estimation method are translated to improvements in image signal-to-noise ratio (SNR). The image SNR, however, depends on the image reconstruction method and the local imaging environment. >Results: We show that for fully 3D whole-body imaging using a particular set of scanners and clinical protocols, a low-noise estimate of random coincidences improves sinogram and image SNRs by approximately 15% compared with online subtraction of delayed coincidences. >Conclusion: A 15% improvement in image SNR arises from a 32% increase in the NEC rate. Thus, scan duration can be reduced by 25% while still maintaining a constant total acquired NEC.
机译:id =“ p-1”>随着全3维(3D)PET对全身成像灵敏度提高的优势,挑战了更复杂的定量校正方法,尤其是增加了校正的数量。随机巧合。校正随机重合的最常见方法是延迟重合通道的实时减法,它不会增加偏差,但会增加噪声。一种替代方法是低噪声随机符合估计的采集后减法,可以从平滑的延迟符合正弦图或通过校准扫描获得或直接估计。每种方法都会在噪声放大,偏置和数据处理要求之间做出不同的权衡。这些折衷取决于注入的活动,局部成像环境(例如,膀胱附近)以及重建算法。 >方法:使用完整的3D全身模拟和幻像研究,我们研究了如何通过使用无噪声随机符合估计方法将噪声等效计数(NEC)率的增益转化为图像信噪比的改善。 -噪声比(SNR)。然而,图像SNR取决于图像重建方法和局部成像环境。 >结果:我们表明,对于使用特定扫描仪和临床规程进行的全3D全身成像,与在线减法相比,随机重合的低噪声估计可将正弦图和图像SNR改善约15%延迟巧合。 >结论:NEC率提高32%,可将图像SNR提高15%。因此,可以将扫描持续时间减少25%,同时仍保持恒定的总采集NEC。

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