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LROC Investigation of Three Strategies for Reducing the Impact of Respiratory Motion on the Detection of Solitary Pulmonary Nodules in SPECT

机译:LROC调查减少呼吸运动对spECT孤立性肺结节检测影响的三种策略

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摘要

The objective of this investigation was to determine the effectiveness of three motion reducing strategies in diminishing the degrading impact of respiratory motion on the detection of small solitary pulmonary nodules (SPN) in single photon emission computed tomographic (SPECT) imaging in comparison to a standard clinical acquisition and the ideal case of imaging in the absence of respiratory motion. To do this non-uniform rational B-spline cardiac-torso (NCAT) phantoms based on human-volunteer CT studies were generated spanning the respiratory cycle for a normal background distribution of Tc-99m NeoTect. Similarly, spherical phantoms of 1.0 cm diameter were generated to model small SPN for each of 150 uniquely located sites within the lungs whose respiratory motion was based on the motion of normal structures in the volunteer CT studies. The SIMIND Monte Carlo program was used to produce SPECT projection data from these. Normal and single-lesion containing SPECT projection sets with a clinically realistic Poisson noise level were created for the cases of: 1) the end-expiration (EE) frame with all counts, 2) respiration-averaged motion with all counts, 3) one-fourth of the 32 frames centered around EE (Quarter-Binning), 4) one-half of the 32 frames centered around EE (Half-Binning), and 5) eight temporally binned frames spanning the respiratory cycle. Each of the sets of combined projection data were reconstructed with RBI-EM with system spatial-resolution compensation (RC). Based on the known motion for each of the 150 different lesions, the reconstructed volumes of respiratory bins were shifted so as to superimpose the locations of the SPN onto that in the first bin (Reconstruct and Shift). Five human-observers performed localization receiver operating characteristics (LROC) studies of SPN detection. The observer results were analyzed for statistical significance differences in SPN detection accuracy among the three correction strategies, the standard acquisition, and the ideal case of the absence of respiratory motion. Our human-observer LROC determined that Quarter-Binning and Half-Binning strategies resulted in SPN detection accuracy statistically significantly below (P \u3c 0.05) that of standard clinical acquisition, whereas the Reconstruct and Shift strategy resulted in a detection accuracy not statistically significantly different from that of the ideal case. This investigation demonstrates that tumor detection based on acquisitions associated with less than all the counts which could potentially be employed may result in poorer detection despite limiting the motion of the lesion. The Reconstruct and Shift method results in tumor detection that is equivalent to ideal motion correction.
机译:这项研究的目的是确定与标准临床相比,三种减少运动的策略在减少呼吸运动对单光子发射计算机断层扫描(SPECT)成像中小的孤立性肺结节(SPN)的检测方面的影响方面的有效性。在没有呼吸运动的情况下进行采集和成像的理想情况。为此,基于人类志愿者CT研究,在整个呼吸周期内生成了Tc-99m NeoTect的正常背景分布的非均匀B样条心脏躯干(NCAT)幻像。类似地,生成直径为1.0 cm的球形体模,以对肺中150个独特位置的每一个进行小型SPN建模,这些位置的呼吸运动基于自愿CT研究中正常结构的运动。 SIMIND Monte Carlo程序用于从中产生SPECT投影数据。针对以下情况创建了包含具有临床上现实的Poisson噪声水平的SPECT投影集的正常和单个病变:1)所有计数的末端呼出(EE)帧,2)所有计数的呼吸平均运动,3)一个-以EE(四分之一像素)为中心的32帧中的四分之一,以EE(半分像素)为中心的32帧中的四分之一,以及跨越呼吸周期的八个时间分帧的八分之一。使用具有系统空间分辨率补偿(RC)的RBI-EM重建每组组合的投影数据。基于针对150个不同病变中的每个病变的已知运动,将重建的呼吸仓体积移动,以便将SPN的位置叠加到第一个仓室中的位置上(Reconstruct和Shift)。五名人类观察员对SPN检测进行了本地化接收器工作特性(LROC)研究。对观察者的结果进行分析,以比较三种校正策略,标准采集和没有呼吸运动的理想情况之间SPN检测准确性的统计学显着性差异。我们的观察员LROC确定,四分之一分频和半分频策略导致SPN的检测准确性在统计学上显着低于标准临床获取的(P \ u3c 0.05),而“重构和移位”策略导致的SPN检测准确性在统计学上没有显着差异从理想情况来看。这项研究表明,基于与少于可能使用的所有计数相关的采集的肿瘤检测,尽管会限制病变的运动,但可能导致检测效果较差。重建和移位方法可实现等同于理想运动校正的肿瘤检测。

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