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Detection of Lung Density Variations With Principal Component Analysis in PET

机译:PET主成分分析法检测肺密度变化

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Respiratory motion generates lung volume changes during the breathing cycle. These affect the lung tissue density and therefore influence both the attenuation effect and the radiotracer concentration in PET imaging. To detect and correct for these effects could improve the quantitative accuracy of lung PET imaging. In this work we propose the use of Principal Component Analysis (PCA) to detect respiratory-induced lung density changes in the upper lung, where motion is expected to be minimal. The method is firstly applied to simulation data, specifically generated to simulate density changes only and no motion. Secondly, it is applied on the upper lung bed position of 15 lung cancer patients datasets. The total number of counts in time is also evaluated. The results show that the PCA signal is highly correlated to the respiratory trace obtained from an external device, and also to the variation of total counts in time. As the bed positions taken into account do not include moving organs, the results suggest that PCA is successful in detecting respiratory-induced density changes in the upper lung.
机译:呼吸运动在呼吸周期中产生肺体积变化。这些会影响肺组织密度,因此会影响PET成像中的衰减效果和放射性示踪剂浓度。检测并纠正这些影响可以提高肺部PET成像的定量准确性。在这项工作中,我们建议使用主成分分析(PCA)来检测运动引起的上肺的呼吸诱发的肺密度变化。该方法首先应用于模拟数据,专门用于模拟密度变化而没有运动的模拟数据。其次,将其应用于15个肺癌患者数据集的上肺床位置。还评估了时间的总数。结果表明,PCA信号与从外部设备获得的呼吸道高度相关,并且与时间总数的变化高度相关。由于考虑的床位不包括运动器官,因此结果表明PCA成功地检测了呼吸诱导的上肺密度变化。

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