Kesner Adam L, Chung Jonathan H, Lind Kimberly E, Kwak Jennifer J, Lynch David, Burckhardt Darrell, Koo Phillip J
Department of Radiology, Division of Nuclear Medicine and Molecular Imaging, University of Colorado, School of Medicine, Aurora, Colorado 80045.
Department of Radiology, National Jewish Health, Denver, Colorado 80206.
Med Phys. 2016 Mar;43(3):1451-61. doi: 10.1118/1.4941956.
Respiratory gating is a strategy for overcoming image degradation caused by patient motion in Positron Emission Tomography (PET) imaging. Traditional methods for sorting data, namely, phase-based gating or amplitude-based gating, come with an inherent trade-off between resolution improvements and added noise present in the subjugated data. If the goal of motion correction in PET is realigned from creating 4D images that attempt to mimic nongated images, towards ideal utilization of the information available, then new paths for data management emerge. In this work, the authors examine the application of a method in a new class of frequency based data subjugation algorithms, termed gating +. This strategy utilizes data driven information to locally adapt signal to its optimal segregation, thereby creating a new approach to 4D data utilization PET.
189 (18)F-fluorodeoxyglucose (FDG) PET scans were acquired at a single bed position centered on the thorax region. 4D gated image sets were reconstructed using data driven gating. The gating+ signal optimization algorithm, previously presented in small animal PET images and simulations, was used to segregate data in frequency space to generate optimized 4D images in the population-the first application and analysis of gating+ in human PET scans. The nongated, phase gated, and gating+ representations of the data were compared using FDG uptake analysis in the identified lesions and noise measurements from background regions.
Optimized processing required less than 1 min per scan on a standard PC (plus standard reconstruction time), and yielded entire 4D optimized volumes plus motion maps. Optimized scans had noise characteristics similar to nongated images, yet also contained much of the resolution and motion information found in the gated images. The average SUVmax increase in the lesion sample between gated/nongated and gating+/nongated (±SD in population) was 35.8% ± 34.6% and 28.6% ± 27.9%, respectively. The average percent standard deviation (%SD ± SD in population) in liver volumes of interest (VOIs) across the sample for the nongated, gated, and gating+ scans was 6.7% ± 2.4%, 13.6% ± 3.3%, and 7.1% ± 2.5%, respectively. In all cases, the noise in the gating+ liver VOIs was closer to the nongated measurements than to the gated.
The gating+ algorithm introduces the notion of conforming 4D data segregation to the local information and statistics that support it. By segregating data in frequency space, the authors are able to generate low noise motion information rich image sets, derived solely from selective use of raw data. Their work shows that the gating+ algorithm can be robustly applied in populations, and across varying qualities of motion and scans statistics, and be integrated as part of a fully automated motion correction workflow. Furthermore, the idea of smart signal utilization underpins a new concept of low risk or even risk-free motion correction application in PET.
呼吸门控是一种在正电子发射断层扫描(PET)成像中克服患者运动导致图像退化的策略。传统的数据分类方法,即基于相位的门控或基于幅度的门控,在分辨率提高与被分类数据中存在的额外噪声之间存在内在权衡。如果PET中运动校正的目标从创建试图模拟非门控图像的4D图像重新调整为对可用信息的理想利用,那么数据管理就会出现新途径。在这项工作中,作者研究了一种基于频率的新型数据分类算法(称为门控+)中一种方法的应用。这种策略利用数据驱动的信息使信号局部适应其最佳分离,从而创建一种新的4D数据利用PET方法。
在以胸部区域为中心的单个床位位置采集了189例(18)F-氟脱氧葡萄糖(FDG)PET扫描。使用数据驱动的门控重建4D门控图像集。先前在小动物PET图像和模拟中提出的门控+信号优化算法用于在频率空间中分离数据,以在总体中生成优化的4D图像——这是门控+在人体PET扫描中的首次应用和分析。使用已识别病变中的FDG摄取分析和背景区域的噪声测量来比较数据的非门控、相位门控和门控+表示。
在标准个人计算机上,每次扫描的优化处理时间不到1分钟(加上标准重建时间),并生成了完整的4D优化体积以及运动图。优化后的扫描具有与非门控图像相似的噪声特征,但也包含了门控图像中发现的许多分辨率和运动信息。门控/非门控和门控+/非门控(总体中的±标准差)之间病变样本中SUVmax的平均增加分别为35.8%±34.6%和28.6%±27.9%。非门控、门控和门控+扫描样本中肝脏感兴趣体积(VOI)的平均标准偏差百分比(总体中的%SD±标准差)分别为6.7%±2.4%、13.6%±3.3%和7.1%±2.5%。在所有情况下,门控+肝脏VOI中的噪声比门控更接近非门控测量值。
门控+算法引入了使4D数据分离符合支持它的局部信息和统计数据的概念。通过在频率空间中分离数据,作者能够生成仅从原始数据的选择性使用中得出的低噪声、富含运动信息的图像集。他们的工作表明,门控+算法可以在总体中稳健应用,并且适用于不同质量的运动和扫描统计数据,并且可以作为全自动运动校正工作流程的一部分进行集成。此外,智能信号利用的概念支撑了PET中低风险甚至无风险运动校正应用的新概念。