Department of Industrial and Systems Engineering, 3900 Stevens Way, Seattle, WA 98195, USA. Integrated Brain Imaging Center, 1959 NE Pacific St, Seattle, WA 98195, USA.
Phys Med Biol. 2014 Feb 21;59(4):1027-45. doi: 10.1088/0031-9155/59/4/1027. Epub 2014 Feb 7.
The benefits of respiratory gating in quantitative PET/CT vary tremendously between individual patients. Respiratory pattern is among many patient-specific characteristics that are thought to play an important role in gating-induced imaging improvements. However, the quantitative relationship between patient-specific characteristics of respiratory pattern and improvements in quantitative accuracy from respiratory-gated PET/CT has not been well established. If such a relationship could be estimated, then patient-specific respiratory patterns could be used to prospectively select appropriate motion compensation during image acquisition on a per-patient basis. This study was undertaken to develop a novel statistical model that predicts quantitative changes in PET/CT imaging due to respiratory gating. Free-breathing static FDG-PET images without gating and respiratory-gated FDG-PET images were collected from 22 lung and liver cancer patients on a PET/CT scanner. PET imaging quality was quantified with peak standardized uptake value (SUV(peak)) over lesions of interest. Relative differences in SUV(peak) between static and gated PET images were calculated to indicate quantitative imaging changes due to gating. A comprehensive multidimensional extraction of the morphological and statistical characteristics of respiratory patterns was conducted, resulting in 16 features that characterize representative patterns of a single respiratory trace. The six most informative features were subsequently extracted using a stepwise feature selection approach. The multiple-regression model was trained and tested based on a leave-one-subject-out cross-validation. The predicted quantitative improvements in PET imaging achieved an accuracy higher than 90% using a criterion with a dynamic error-tolerance range for SUV(peak) values. The results of this study suggest that our prediction framework could be applied to determine which patients would likely benefit from respiratory motion compensation when clinicians quantitatively assess PET/CT for therapy target definition and response assessment.
在定量 PET/CT 中,呼吸门控的益处因个体患者差异而有很大不同。呼吸模式是许多患者特定特征之一,被认为在门控成像改善中起着重要作用。然而,呼吸模式的患者特定特征与呼吸门控 PET/CT 定量准确性的提高之间的定量关系尚未得到很好的确定。如果能够估计这种关系,那么就可以根据患者的具体呼吸模式,在每个患者的基础上,前瞻性地选择适当的运动补偿。本研究旨在开发一种新的统计模型,用于预测呼吸门控对 PET/CT 成像的定量变化。在 PET/CT 扫描仪上,从 22 名肺癌和肝癌患者中采集了无门控和呼吸门控 FDG-PET 图像。使用感兴趣病变的峰值标准化摄取值 (SUV(peak)) 量化 PET 成像质量。计算静态和门控 PET 图像之间 SUV(peak)的相对差异,以指示门控引起的定量成像变化。对呼吸模式的形态和统计特征进行了全面的多维提取,得到了 16 个特征,这些特征代表了单个呼吸轨迹的典型模式。随后使用逐步特征选择方法提取了六个最具信息量的特征。基于逐个受试者的交叉验证,对多元回归模型进行了训练和测试。使用 SUV(peak)值的动态误差容限范围的标准,该预测模型在 PET 成像的定量改善方面达到了超过 90%的准确性。这项研究的结果表明,我们的预测框架可以应用于确定哪些患者可能受益于呼吸运动补偿,当临床医生对 PET/CT 进行定量评估以定义治疗靶区和评估反应时。