A Generalizable 3D Diffusion Framework for Low-Dose and Few-View Cardiac SPECT
Huidong Xie, Weijie Gan, Wei Ji, Xiongchao Chen, Alaa Alashi,, Stephanie L. Thorn, Bo Zhou, Qiong Liu, Menghua Xia, Xueqi Guo, Yi-Hwa Liu,, Hongyu An, Ulugbek S. Kamilov, Ge Wang, Albert J. Sinusas, Chi Liu

TL;DR
This paper introduces DiffSPECT-3D, a diffusion-based framework that generalizes across various low-dose and few-view cardiac SPECT imaging settings, improving image quality without additional re-training.
Contribution
The work presents a novel diffusion framework that adapts to different acquisition settings using a consistency strategy and a 2.5D conditional approach, enabling broad clinical applicability.
Findings
Achieved high-quality reconstructions across 1,325 clinical studies with varying dose/view levels.
Validated the method's effectiveness against clinical standards and expert assessments.
Demonstrated potential to enhance full-dose SPECT images in low-dose protocols.
Abstract
Myocardial perfusion imaging using SPECT is widely utilized to diagnose coronary artery diseases, but image quality can be negatively affected in low-dose and few-view acquisition settings. Although various deep learning methods have been introduced to improve image quality from low-dose or few-view SPECT data, previous approaches often fail to generalize across different acquisition settings, limiting their applicability in reality. This work introduced DiffSPECT-3D, a diffusion framework for 3D cardiac SPECT imaging that effectively adapts to different acquisition settings without requiring further network re-training or fine-tuning. Using both image and projection data, a consistency strategy is proposed to ensure that diffusion sampling at each step aligns with the low-dose/few-view projection measurements, the image data, and the scanner geometry, thus enabling generalization to…
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Taxonomy
TopicsMedical Imaging Techniques and Applications · Cardiac Imaging and Diagnostics · Radiomics and Machine Learning in Medical Imaging
MethodsDiffusion
