Medical Image and Signal Processing (MEDISIP), Department of Electronics and Information Systems, Faculty of Engineering and Architecture, Ghent University, 9000, Ghent, Belgium.
Department of Radiology, Perelman School of Medicine, University of Pennsylvania, Philadelphia, PA19104, USA.
Mol Imaging Biol. 2024 Feb;26(1):101-113. doi: 10.1007/s11307-023-01866-x. Epub 2023 Oct 24.
Positron emission tomography (PET) image quality can be improved by higher injected activity and/or longer acquisition time, but both may often not be practical in preclinical imaging. Common preclinical radioactive doses (10 MBq) have been shown to cause deterministic changes in biological pathways. Reducing the injected tracer activity and/or shortening the scan time inevitably results in low-count acquisitions which poses a challenge because of the inherent noise introduction. We present an image-based deep learning (DL) framework for denoising lower count micro-PET images.
For 36 mice, a 15-min [F]FDG (8.15 ± 1.34 MBq) PET scan was acquired at 40 min post-injection on the Molecubes β-CUBE (in list mode). The 15-min acquisition (high-count) was parsed into smaller time fractions of 7.50, 3.75, 1.50, and 0.75 min to emulate images reconstructed at 50, 25, 10, and 5% of the full counts, respectively. A 2D U-Net was trained with mean-squared-error loss on 28 high-low count image pairs.
The DL algorithms were visually and quantitatively compared to spatial and edge-preserving denoising filters; the DL-based methods effectively removed image noise and recovered image details much better while keeping quantitative (SUV) accuracy. The largest improvement in image quality was seen in the images reconstructed with 10 and 5% of the counts (equivalent to sub-1 MBq or sub-1 min mouse imaging). The DL-based denoising framework was also successfully applied on the NEMA-NU4 phantom and different tracer studies ([F]PSMA, [F]FAPI, and [ Ga]FAPI).
Visual and quantitative results support the superior performance and robustness in image denoising of the implemented DL models for low statistics micro-PET. This offers much more flexibility in optimizing preclinical, longitudinal imaging protocols with reduced tracer doses or shorter durations.
正电子发射断层扫描(PET)图像质量可以通过更高的注射活性和/或更长的采集时间来提高,但在临床前成像中,这两者往往都不切实际。已经证明,常见的临床前放射性剂量(10 MBq)会导致生物途径的确定性变化。减少注射示踪剂的活性和/或缩短扫描时间不可避免地会导致低计数采集,这是一个挑战,因为固有噪声的引入。我们提出了一种基于图像的深度学习(DL)框架,用于对低计数微 PET 图像进行去噪。
对 36 只小鼠进行 15 分钟[F]FDG(8.15±1.34 MBq)PET 扫描,在注射后 40 分钟在 Molecubes β-CUBE(列表模式)上进行。将 15 分钟采集(高计数)分成更小的时间分数,分别为 7.50、3.75、1.50 和 0.75 分钟,以模拟重建时分别为全计数的 50%、25%、10%和 5%的图像。使用均方误差损失在 28 对高低计数图像对上对 2D U-Net 进行训练。
通过空间和边缘保持去噪滤波器对 DL 算法进行了视觉和定量比较;基于 DL 的方法有效地去除了图像噪声,并在保持定量(SUV)准确性的同时更好地恢复了图像细节。在使用 10%和 5%计数(相当于亚 1 MBq 或亚 1 分钟的小鼠成像)重建的图像中,图像质量的改善最大。基于 DL 的去噪框架也成功应用于 NEMA-NU4 体模和不同示踪剂研究([F]PSMA、[F]FAPI 和[Ga]FAPI)。
视觉和定量结果支持所实现的 DL 模型在低统计量微 PET 图像去噪方面的卓越性能和鲁棒性。这为优化具有减少示踪剂剂量或缩短持续时间的临床前、纵向成像方案提供了更大的灵活性。