Pacific Parkinson's Research Centre, Vancouver British Columbia V6T 1Z1, Canada.
Med Phys. 2011 Feb;38(2):773-81. doi: 10.1118/1.3537289.
Subject motion during positron emission tomography (PET) brain scans can reduce image quality and may lead to incorrect biological outcome measures, especially for data acquired with high resolution tomographs. A semiautomatic method for assessing the quality of frame-to-frame image realignments to compensate for subject motion in dynamic brain PET is proposed and evaluated.
A test set of 256 11C-raclopride (a dopamine D2-type receptor antagonist) brain PET image frames was used to develop and evaluate the proposed method. The transformation matrix to be applied to each image to achieve a frame-to-frame realignment was calculated with two independent methods: Using motion data measured with the Polaris Vicra optical tracking device and using the image-based realignment algorithm AIR (automated image registration). The quality assessment method is based on the observation that there is a very low probability that two independent approaches to motion detection will produce equal, but incorrect results. Agreement between transformation matrices was taken to be a signature of an accurate motion determination and thus realignment. Each pair of realignment matrices was compared and used to calculate a metric describing the frame-to-frame image realignment accuracy. In order to determine the range of values of the metric that correspond to a successful realignment, a comparison was made to a detailed visual inspection of the frame-to-frame realigned images for each image in the test set. The threshold on the metric for realignment acceptance was then selected to optimize the numbers of true-positives (realignments accepted by both the protocol and the operator) and minimize the number of false-positives (accepted by the protocol but not the operator).
The proposed method categorized 53% of the image realignments in the test dataset as successful, of which 11% were incorrectly categorized (6% of the total dataset). Implementation of the proposed assessment tool resulted in a 45% time savings compared to the same visual inspection applied to all image realignments.
The frame-to-frame image realignment assessment tool presented here required less operator time to evaluate realignment success compared to a method requiring visual inspection of all realigned images, while maintaining the same level of accuracy in the realigned dataset. This practical method can be easily implemented at any center with motion monitoring capabilities or, for centers lacking this technology, methods of estimating image realignment parameters that use independent information. In addition, the procedure is flexible, allowing modifications to be made for different tracer types and/or downstream analysis goals.
正电子发射断层扫描(PET)脑扫描过程中的受试者运动可能会降低图像质量,并可能导致生物测量结果不准确,特别是对于使用高分辨率断层扫描仪采集的数据。本文提出并评估了一种用于评估动态脑 PET 中补偿受试者运动的帧间图像配准质量的半自动方法。
使用 256 个 11C-racopride(一种多巴胺 D2 型受体拮抗剂)脑 PET 图像帧的测试集来开发和评估所提出的方法。应用于每个图像以实现帧间配准的变换矩阵是通过两种独立的方法计算的:使用 Polaris Vicra 光学跟踪设备测量的运动数据和使用基于图像的配准算法 AIR(自动图像配准)。质量评估方法基于以下观察结果:两种独立的运动检测方法产生相同但错误的结果的可能性极低。变换矩阵的一致性被认为是准确运动确定和因此配准的特征。比较每对配准矩阵,并使用该方法计算描述帧间图像配准精度的度量。为了确定度量值的范围对应于成功配准的值,将其与测试集中每个图像的帧间配准图像的详细目视检查进行比较。然后选择用于接受配准的度量的阈值,以优化真正阳性(协议和操作员都接受的配准)的数量,并最小化假阳性(协议接受但操作员不接受的配准)的数量。
所提出的方法将测试数据集的 53%的图像配准分类为成功,其中 11%被错误分类(总数据集的 6%)。与应用于所有图像配准的相同目视检查相比,所提出的评估工具的实现节省了 45%的时间。
与需要目视检查所有配准图像的方法相比,本文提出的帧间图像配准评估工具在评估配准成功方面需要更少的操作员时间,同时保持配准数据集的相同准确性。这种实用方法可以在具有运动监测功能的任何中心轻松实现,或者对于缺乏这项技术的中心,可以使用使用独立信息的估计图像配准参数的方法。此外,该过程具有灵活性,允许针对不同示踪剂类型和/或下游分析目标进行修改。