Rahman Md Ashequr, Yu Zitong, Laforest Richard, Abbey Craig K, Siegel Barry A, Jha Abhinav K
ArXiv. 2023 Oct 26:arXiv:2306.04249v3.
There is an important need for methods to process myocardial perfusion imaging (MPI) SPECT images acquired at lower radiation dose and/or acquisition time such that the processed images improve observer performance on the clinical task of detecting perfusion defects. To address this need, we build upon concepts from model-observer theory and our understanding of the human visual system to propose a Detection task-specific deep-learning-based approach for denoising MPI SPECT images (DEMIST). The approach, while performing denoising, is designed to preserve features that influence observer performance on detection tasks. We objectively evaluated DEMIST on the task of detecting perfusion defects using a retrospective study with anonymized clinical data in patients who underwent MPI studies across two scanners (N = 338). The evaluation was performed at low-dose levels of 6.25%, 12.5% and 25% and using an anthropomorphic channelized Hotelling observer. Performance was quantified using area under the receiver operating characteristics curve (AUC). Images denoised with DEMIST yielded significantly higher AUC compared to corresponding low-dose images and images denoised with a commonly used task-agnostic DL-based denoising method. Similar results were observed with stratified analysis based on patient sex and defect type. Additionally, DEMIST improved visual fidelity of the low-dose images as quantified using root mean squared error and structural similarity index metric. A mathematical analysis revealed that DEMIST preserved features that assist in detection tasks while improving the noise properties, resulting in improved observer performance. The results provide strong evidence for further clinical evaluation of DEMIST to denoise low-count images in MPI SPECT.
迫切需要能够处理以较低辐射剂量和/或采集时间获取的心肌灌注成像(MPI)单光子发射计算机断层扫描(SPECT)图像的方法,以便处理后的图像能够提高观察者在检测灌注缺损临床任务中的表现。为满足这一需求,我们基于模型观察者理论的概念以及对人类视觉系统的理解,提出一种针对检测任务的基于深度学习的MPI SPECT图像去噪方法(DEMIST)。该方法在执行去噪时,旨在保留影响观察者检测任务表现的特征。我们使用一项回顾性研究,对338例在两台扫描仪上接受MPI检查的患者的匿名临床数据进行分析,客观评估了DEMIST在检测灌注缺损任务中的表现。评估在6.25%、12.5%和25%的低剂量水平下进行,并使用拟人化通道化霍特林观察者。使用受试者操作特征曲线下面积(AUC)对性能进行量化。与相应的低剂量图像以及使用常用的基于深度学习的通用去噪方法去噪的图像相比,用DEMIST去噪的图像产生的AUC显著更高。基于患者性别和缺损类型的分层分析也观察到了类似结果。此外,使用均方根误差和结构相似性指数度量进行量化的结果表明,DEMIST提高了低剂量图像的视觉保真度。数学分析表明,DEMIST在改善噪声特性的同时保留了有助于检测任务的特征,从而提高了观察者的表现。这些结果为进一步临床评估DEMIST用于MPI SPECT低计数图像去噪提供了有力证据。