CTLESS: A scatter-window projection and deep learning-based transmission-less attenuation compensation method for myocardial perfusion SPECT.

ArXiv Pub Date : 2024-09-12
Zitong Yu, Md Ashequr Rahman, Craig K Abbey, Richard Laforest, Nancy A Obuchowski, Barry A Siegel, Abhinav K Jha
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Abstract

Attenuation compensation (AC), while being beneficial for visual-interpretation tasks in myocardial perfusion imaging (MPI) by SPECT, typically requires the availability of a separate X-ray CT component, leading to additional radiation dose, higher costs, and potentially inaccurate diagnosis due to SPECT/CT misalignment. To address these issues, we developed a method for cardiac SPECT AC using deep learning and emission scatter-window photons without a separate transmission scan (CTLESS). In this method, an estimated attenuation map reconstructed from scatter-energy window projections is segmented into different regions using a multi-channel input multi-decoder network trained on CT scans. Pre-defined attenuation coefficients are assigned to these regions, yielding the attenuation map used for AC. We objectively evaluated this method in a retrospective study with anonymized clinical SPECT/CT stress MPI images on the clinical task of detecting defects with an anthropomorphic model observer. CTLESS yielded statistically non-inferior performance compared to a CT-based AC (CTAC) method and significantly outperformed a non-AC (NAC) method on this clinical task. Similar results were observed in stratified analyses with different sexes, defect extents and severities. The method was observed to generalize across two SPECT scanners, each with a different camera. In addition, CTLESS yielded similar performance as CTAC and outperformed NAC method on the metrics of root mean squared error and structural similarity index measure. Moreover, as we reduced the training dataset size, CTLESS yielded relatively stable AUC values and generally outperformed another DL-based AC method that directly estimated the attenuation coefficient within each voxel. These results demonstrate the capability of the CTLESS method for transmission-less AC in SPECT and motivate further clinical evaluation.

CTLESS:用于心肌灌注 SPECT 的散射窗投影和基于深度学习的无传输衰减补偿方法。
衰减补偿(AC)虽然有利于通过 SPECT 进行心肌灌注成像(MPI)的视觉解读任务,但通常需要单独的 X 射线 CT 组件,从而导致额外的辐射剂量、更高的成本,并可能因 SPECT/CT 错位而导致诊断不准确。为了解决这些问题,我们开发了一种使用深度学习和发射散射窗光子的心脏 SPECT AC 方法,无需单独的透射扫描(CTLESS)。在这种方法中,利用在 CT 扫描上训练的多通道输入多解码器网络,将从散射能量窗投影重建的估计衰减图分割成不同的区域。将预先确定的衰减系数分配给这些区域,得到用于 AC 的衰减图。在一项回顾性研究中,我们使用匿名临床 SPECT/CT 应力 MPI 图像对该方法进行了客观评估,该图像是通过拟人模型观察者检测缺陷的临床任务。与基于 CT 的 AC(CTAC)方法相比,CTLESS 在统计学上的表现并不逊色,而且在这项临床任务中的表现明显优于非 AC(NAC)方法。在对不同性别、缺陷范围和严重程度进行分层分析时,也观察到了类似的结果。据观察,该方法适用于两台 SPECT 扫描仪,每台扫描仪都配有不同的摄像头。此外,CTLESS 的性能与 CTAC 相似,在均方根误差和结构相似性指数测量指标上优于 NAC 方法。此外,随着训练数据集规模的缩小,CTLESS 的 AUC 值也相对稳定,总体上优于另一种基于 DL 的 AC 方法(该方法直接估计每个体素内的衰减系数)。这些结果证明了CTLESS方法在SPECT无透射AC方面的能力,并推动了进一步的临床评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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