Szűcs Ádám István, Kári Béla, Pártos Oszkár
Computer Algebra, Eötvös Loránd University, Pázmány Péter blvd. 1/c, Budapest, Pest, 1117, Hungary.
Nuclear Medicine, Semmelweis University, Üllői street 78b, Budapest, Pest, 1083, Hungary.
EJNMMI Phys. 2025 Mar 10;12(1):21. doi: 10.1186/s40658-025-00728-5.
Various specialized and general collimators are used for myocardial perfusion imaging (MPI) with single-photon emission computed tomography (SPECT) to assess different types of coronary artery disease (CAD). Alongside the wide variability in imaging characteristics, the apriori "learnt" information of left ventricular (LV) shape can affect the final diagnosis of the imaging protocol. This study evaluates the effect of prior information incorporation into the segmentation process, compared to deep learning (DL) approaches, as well as the differences of 4 collimation techniques on 5 different datasets.
This study was implemented on 80 patients database. 40 patients were coming from mixed black-box collimators, 10 each, from multi-pinhole (MPH), low energy high resolution (LEHR), CardioC and CardioD collimators. The testing was evaluated on a new continuous graph-based approach, which automatically segments the left ventricular volume with prior information on the cardiac geometry. The technique is based on the continuous max-flow (CMF) min-cut algorithm, which performance was evaluated in precision, recall, IoU and Dice score metrics.
In the testing it was shown that, the developed method showed a good improvement over deep learning reaching higher scores in most of the evaluation metrics. Further investigating the different collimation techniques, the evaluation of receiver operating characterstic (ROC) curves showed different stabilities on the various collimators. Running Wilcoxon signed-rank test on the outlines of the LVs showed differentiability between the collimation procedures. To further investigate these phenomena the model parameters of the LVs were reconstructed and evaluated by the uniform manifold approximation and projection (UMAP) method, which further proved that collimators can be differentiated based on the projected LV shapes alone.
The results show that prior information incorporation can enhance the performance of segmentation methods and collimation strategies have a high effect on the projected cardiac geometry.
各种专用和通用准直器用于单光子发射计算机断层扫描(SPECT)心肌灌注成像(MPI),以评估不同类型的冠状动脉疾病(CAD)。除了成像特征的广泛变异性外,左心室(LV)形状的先验“学习”信息会影响成像方案的最终诊断。本研究评估了与深度学习(DL)方法相比,将先验信息纳入分割过程的效果,以及4种准直技术在5个不同数据集上的差异。
本研究在80例患者数据库上实施。40例患者来自混合黑箱准直器,每种准直器各10例,分别来自多针孔(MPH)、低能高分辨率(LEHR)、CardioC和CardioD准直器。测试采用一种新的基于连续图的方法进行评估,该方法利用心脏几何结构的先验信息自动分割左心室容积。该技术基于连续最大流(CMF)最小割算法,其性能通过精度、召回率、交并比(IoU)和骰子系数(Dice score)指标进行评估。
测试表明,所开发的方法与深度学习相比有显著改进,在大多数评估指标中得分更高。进一步研究不同的准直技术,接收器操作特征(ROC)曲线的评估显示了各种准直器上不同的稳定性。对左心室轮廓进行威尔科克森符号秩检验显示,准直程序之间存在差异。为了进一步研究这些现象,通过均匀流形近似和投影(UMAP)方法对左心室的模型参数进行了重建和评估,这进一步证明了仅基于投影的左心室形状就可以区分准直器。
结果表明,纳入先验信息可以提高分割方法的性能,并且准直策略对投影的心脏几何形状有很大影响。