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Scatter segmentation in dynamic SPECT images using principal component analysis

机译:使用主成分分析的动态SPECT图像中的散射分割

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Dynamic single photon emission computed tomography (dSPECT) provides tune-varying spatial information about changes of tracer distribution in the body from data acquired using a standard (single slow rotation) protocol. Variations of tracer distribution observed in the images might be due to physiological processes in the body, but may also stem from reconstruction artefacts. These two possibilities are not easily separated because of the highly underdetermined nature of the dynamic reconstruction problem. Since it is expected that temporal changes in tracer distribution may carry important diagnostic information, the analysis of dynamic SPECT images should consider and use this additional information. In this paper we present a segmentation scheme for aggregating voxels with similar time activity curves (TACs). Voxel aggregates are created through region merging based on a similarity criterion on a reduced set of features, which is derived after transformation into eigenspace. Region merging was carried out on dSPECT images from simulated and patient myocardial perfusion studies using various stopping criteria and ranges of accumulated variances in eigenspace. Results indicate that segmentation clearly separates heart and liver tissues from the background. The segmentation quality did not change significantly if more than 99% of the variance was incorporated into the feature vector. The heart behaviour followed an expected exponential decay curve while some variation of time behaviour in liver was observed. Scatter artefacts from photons originating from liver could be identified in long as well as in short studies.
机译:动态单光子发射计算机断层扫描(dSPECT)可根据使用标准(单次慢速旋转)协议获取的数据,提供有关人体中示踪剂分布变化的空间变化的空间信息。在图像中观察到的示踪剂分布变化可能是由于体内的生理过程引起的,但也可能源于重建伪像。由于动态重建问题的高度不确定性,这两种可能性不容易分开。由于预计示踪剂分布的时间变化可能会携带重要的诊断信息,因此动态SPECT图像的分析应考虑并使用此附加信息。在本文中,我们提出了一种用于聚集具有相似时间活动曲线(TAC)的体素的分割方案。体素聚集体是基于区域归并的基础上的相似性准则而建立的,该相似性归因于一组简化的特征,这些特征在转换为特征空间后得出。使用各种停止标准和本征空间中累积方差的范围,对来自模拟和患者心肌灌注研究的dSPECT图像进行区域合并。结果表明,分割清楚地将心脏和肝脏组织与背景分开。如果将超过99%的方差纳入特征向量,则分割质量不会发生明显变化。心脏行为遵循预期的指数衰减曲线,而在肝脏中观察到时间行为的某些变化。在长期和短期研究中都可以鉴定出源自肝脏的光子产生的散射伪像。

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