主成分分析在飞行时间PET重合流中提取呼吸信号的性能

L. Presotto, E. De Bernardi, M. Gilardi, L. Gianolli, V. Bettinardi
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引用次数: 2

摘要

近年来,主成分分析(PCA)被认为是一种从PET扫描的重合流中提取运动信号(如心跳和呼吸信号)的潜在方法。原理的证明接踵而来。目的:从时间分辨率、所需的总计数和数据中运动信号的强度方面,评估PCA成功恢复信号的最低要求。使用飞行时间技术,以提高信本比进行了研究,看看它是否会给改善的结果。材料和方法:使用通用电气医疗系统Discovery-690 PET/CT。在移动平台上使用具有均匀背景和热球形光源的幻影。运动周期设置为约4秒,运动范围为10毫米和20毫米。这个运动是用RPM设备记录下来的。采用PCA分别对80、160和320 ms采样的运动信号进行分析。它应用于相对于总采集时间的327、163、81和41秒的数据。与RPM信号的相关性,对于这个幻影几乎是无噪声的,被用来测量PCA信号的功率,作为运动信号的有效指标。PCA应用于TOF,传统的非TOF数据和非TOF数据,并拒绝所有具有时间签名的事件,这些事件指示直径40 cm以外的事件。研究人员还分析了一名患者的心脏扫描数据,分别在20、40和80毫秒进行采样,试图恢复心脏和呼吸信号。结果:所有病例幻肢运动20mm的相关系数均大于等于0.80。对于10毫米的运动,相关性明显较低。在80毫秒的时间分辨率下,相关性太低或不存在,无法提取运动信号。足够高的值(r>0.7)仅在320毫秒采样81秒(或更长时间)采集或160毫秒采样327秒采集时被发现。TOF数据的使用并没有改善这种相对较小的幻像的结果。尽管如此,利用TOF来提高重建分辨率和拒绝随机巧合的结果有所改善。在所分析的患者示例中,心脏和呼吸信号都可以在20 ms采样时提取,总持续时间为2分钟。结论:主成分分析被证明是一种有效的工具,可以从PET重合流中提取运动信号。对于视场内运动物体较少的呼吸信号,采样时间可快至160 ms;对于视场内运动信号较多的双运动提取,采样时间可快至40 ms。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performances of Principal Component Analysis for the extraction of respiratory signal from Time-of-Flight PET coincidences stream
Recently Principal Component Analysis (PCA) was suggested as a potential way to extract motion signals (e.g: cardiac beat and respiratory signals) from the coincidences stream of the PET scan. Proofs of principle ensued. Aim: To assess minimum requirements of the signal for PCA to successfully recover it, in terms of temporal resolution, of total counts needed and of strength of the motion signal in the data. The use of Time-Of-Flight technology, to increase signal-to-background ratio was investigated to see whether it would give improved results. Materials and methods: A General Electrics Medical Systems Discovery-690 PET/CT was used. A phantom with an uniform background and hot spherical sources placed on a moving platform was used. Motion period was set to about 4 seconds and motion range at 10 mm and 20 mm. The motion was recorded with an RPM device. PCA was applied to obtain motion signals with 80, 160 and 320 ms sampling. It was applied to data relative to 327, 163, 81 and 41 seconds of total acquisition time. The correlation to the RPM signal, which for this phantom is virtually noiseless, was used to measure the power of PCA signal to be an effective indicator of the motion signal. PCA was applied to TOF, traditional non-TOF data and non-TOF data with a rejection for all events with a time signature indicating events outside a 40 cm diameter. Data were also analyzed for a cardiac scan of a patient, with samplings of 20, 40 and 80 ms, to try to recover both cardiac and respiratory signal. Results: Correlation coefficients of 0.80 or greater were found in all cases for the phantom with 20 mm motion. For the 10 mm motion markedly lower correlations are found. At 80 ms temporal resolution the correlations are too low or absent to allow motion signal extraction. High enough values (r>0.7) are found only at 320 ms sampling for 81 s (or longer) acquisitions or at 160 ms sampling for 327 s acquisitions. The use of TOF data did not improve results for this, relatively small, phantom. Nonetheless exploiting TOF to improve rebinning resolution and to reject random coincidences improved a bit the results.In the example patient analyzed both the cardiac and the respiratory signal could be extracted at 20 ms sampling with 2 minutes of total duration Conclusion: Principal Component Analysis proved to be effective as a tool to extract motion signal from PET coincidences stream. Sampling durations as fast as 160 ms for respiratory signals with few moving objects in the Field of View or 40 ms sampling for dual motion extraction with large motion signals in the FOV are feasible.
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