National Physical Laboratory, Teddington, UK.
Biomedical Imaging Science Department, University of Leeds, Leeds, UK.
Philos Trans A Math Phys Eng Sci. 2021 Jun 28;379(2200):20200201. doi: 10.1098/rsta.2020.0201. Epub 2021 May 10.
Abdominal aortic aneurysm (AAA) monitoring and risk of rupture is currently assumed to be correlated with the aneurysm diameter. Aneurysm growth, however, has been demonstrated to be unpredictable. Using PET to measure uptake of [F]-NaF in calcified lesions of the abdominal aorta has been shown to be useful for identifying AAA and to predict its growth. The PET low spatial resolution, however, can affect the accuracy of the diagnosis. Advanced edge-preserving reconstruction algorithms can overcome this issue. The kernel method has been demonstrated to provide noise suppression while retaining emission and edge information. Nevertheless, these findings were obtained using simulations, phantoms and a limited amount of patient data. In this study, the authors aim to investigate the usefulness of the anatomically guided kernelized expectation maximization (KEM) and the hybrid KEM (HKEM) methods and to judge the statistical significance of the related improvements. Sixty-one datasets of patients with AAA and 11 from control patients were reconstructed with ordered subsets expectation maximization (OSEM), HKEM and KEM and the analysis was carried out using the target-to-blood-pool ratio, and a series of statistical tests. The results show that all algorithms have similar diagnostic power, but HKEM and KEM can significantly recover uptake of lesions and improve the accuracy of the diagnosis by up to 22% compared to OSEM. The same improvements are likely to be obtained in clinical applications based on the quantification of small lesions, like for example cancer. This article is part of the theme issue 'Synergistic tomographic image reconstruction: part 1'.
腹主动脉瘤(AAA)的监测和破裂风险目前被认为与动脉瘤直径相关。然而,已经证明动脉瘤的生长是不可预测的。使用 PET 测量腹部主动脉钙化病变中[F]-NaF 的摄取量,已被证明可用于识别 AAA 并预测其生长。然而,PET 的低空间分辨率会影响诊断的准确性。先进的边缘保持重建算法可以克服这个问题。核方法已被证明在保留发射和边缘信息的同时提供噪声抑制。然而,这些发现是通过模拟、体模和有限数量的患者数据获得的。在这项研究中,作者旨在研究解剖引导核最大期望(KEM)和混合 KEM(HKEM)方法的有用性,并判断相关改进的统计学意义。使用有序子集最大期望(OSEM)、HKEM 和 KEM 对 61 例 AAA 患者和 11 例对照患者的数据集进行重建,并使用靶血池比进行分析,同时进行一系列统计检验。结果表明,所有算法都具有相似的诊断能力,但 HKEM 和 KEM 可以显著恢复病变的摄取量,并将诊断的准确性提高 22%,而 OSEM 则不能。根据对小病变(如癌症)的定量分析,在临床应用中可能会获得相同的改善。本文是主题为“协同断层图像重建:第 1 部分”的一部分。