Kesner Adam L, Meier Joseph G, Burckhardt Darrell D, Schwartz Jazmin, Lynch David A
Department of Medical Physics, Memorial Sloan Kettering Cancer Center, New York, NY, USA.
Department of Imaging Physics, University of Texas MD Anderson Cancer Center, Houston, TX, USA.
Med Phys. 2018 Jan;45(1):277-286. doi: 10.1002/mp.12651. Epub 2017 Nov 20.
Respiratory gating has been used in PET imaging to reduce the amount of image blurring caused by patient motion. Optimal binning is an approach for using the motion-characterized data by binning it into a single, easy to understand/use, optimal bin. To date, optimal binning protocols have utilized externally driven motion characterization strategies that have been tuned with population-derived assumptions and parameters. In this work, we are proposing a new strategy with which to characterize motion directly from a patient's gated scan, and use that signal to create a patient/instance-specific optimal bin image.
Two hundred and nineteen phase-gated FDG PET scans, acquired using data-driven gating as described previously, were used as the input for this study. For each scan, a phase-amplitude motion characterization was generated and normalized using principle component analysis. A patient-specific "optimal bin" window was derived using this characterization, via methods that mirror traditional optimal window binning strategies. The resulting optimal bin images were validated by correlating quantitative and qualitative measurements in the population of PET scans.
In 53% (n = 115) of the image population, the optimal bin was determined to include 100% of the image statistics. In the remaining images, the optimal binning windows averaged 60% of the statistics and ranged between 20% and 90%. Tuning the algorithm, through a single acceptance window parameter, allowed for adjustments of the algorithm's performance in the population toward conservation of motion or reduced noise-enabling users to incorporate their definition of optimal. In the population of images that were deemed appropriate for segregation, average lesion SUV max were 7.9, 8.5, and 9.0 for nongated images, optimal bin, and gated images, respectively. The Pearson correlation of FWHM measurements between optimal bin images and gated images were better than with nongated images, 0.89 and 0.85, respectively. Generally, optimal bin images had better resolution than the nongated images and better noise characteristics than the gated images.
We extended the concept of optimal binning to a data-driven form, updating a traditionally one-size-fits-all approach to a conformal one that supports adaptive imaging. This automated strategy was implemented easily within a large population and encapsulated motion information in an easy to use 3D image. Its simplicity and practicality may make this, or similar approaches ideal for use in clinical settings.
呼吸门控已应用于PET成像,以减少患者运动引起的图像模糊。最佳分箱是一种通过将运动特征数据分箱到单个易于理解/使用的最佳箱中来利用这些数据的方法。迄今为止,最佳分箱协议采用的是外部驱动的运动特征策略,这些策略已根据群体衍生的假设和参数进行了调整。在这项工作中,我们提出了一种新策略,可直接从患者的门控扫描中表征运动,并利用该信号创建患者/实例特定的最佳分箱图像。
本研究使用了219例相位门控的FDG PET扫描,这些扫描是使用先前所述的数据驱动门控采集的,作为输入数据。对于每次扫描,通过主成分分析生成相位-幅度运动特征并进行归一化。通过反映传统最佳窗口分箱策略的方法,利用此特征得出患者特定的“最佳分箱”窗口。通过对PET扫描群体中的定量和定性测量进行相关性分析,对所得的最佳分箱图像进行验证。
在53%(n = 115)的图像群体中,确定最佳分箱包含100%的图像统计信息。在其余图像中,最佳分箱窗口平均包含60%的统计信息,范围在20%至90%之间。通过单个接受窗口参数调整算法,可使算法在群体中的性能朝着保留运动或降低噪声的方向调整,从而使用户能够纳入他们对最佳的定义。在被认为适合分离的图像群体中,非门控图像、最佳分箱图像和门控图像的平均病变SUV最大值分别为7.9、8.5和9.0。最佳分箱图像与门控图像之间FWHM测量值的Pearson相关性分别为0.89和0.85,优于与非门控图像的相关性。一般来说,最佳分箱图像比非门控图像具有更好的分辨率,比门控图像具有更好的噪声特征。
我们将最佳分箱的概念扩展为数据驱动形式,将传统的一刀切方法更新为支持自适应成像的适形方法。这种自动化策略易于在大量群体中实施,并将运动信息封装在易于使用的3D图像中。其简单性和实用性可能使其或类似方法成为临床环境中理想的使用方法。