Li Zongyu, Jia Yixuan, Xu Xiaojian, Hu Jason, Fessler Jeffrey A, Dewaraja Yuni K
Department of Electrical Engineering and Computer Science, University of Michigan, Ann Arbor, MI, 48109-2122, USA.
Department of Radiology, University of Michigan, Ann Arbor, MI, USA.
EJNMMI Phys. 2025 May 20;12(1):47. doi: 10.1186/s40658-025-00762-3.
This study addresses the challenge of extended SPECT imaging duration under low-count conditions, as encountered in Lu-177 SPECT imaging, by developing a self-supervised learning approach to synthesize skipped SPECT projection views, thus shortening scan times in clinical settings.
We developed SpeRF, a SPECT reconstruction pipeline that integrates synthesized and measured projections, using a self-supervised coordinate-based learning framework inspired by Neural Radiance Fields (NeRF). For each single scan, SpeRF independently trains a multi-layer perceptron (MLP) to estimate skipped SPECT projection views. SpeRF was tested with various down-sampling factors (DFs = 2, 4, 8) on both Lu-177 phantom SPECT/CT measurements and clinical SPECT/CT datasets, from 11 patients undergoing [177Lu]Lu-DOTATATE and 6 patients undergoing [177Lu]Lu-PSMA-617 radiopharmaceutical therapy. Performance was evaluated both in projection space and by comparing reconstructed images using (1) all measured views ("Full"), (2) down-sampled measured views only ("Partial"), and partially measured views combined with skipped views (3) generated by linear interpolation ("LinInt") and (4) synthesized by our method ("SpeRF").
SpeRF projections demonstrated lower Normalized Root Mean Squared Difference (NRMSD) compared to the measured projections, than LinInt projections. Across various DFs, the NRMSD for SpeRF projections averaged 7% vs. 10% in phantom studies, 18% vs. 26% in DOTATATE patient studies, and 20% vs. 21% in PSMA-617 patient studies, compared to LinInt projections. For SPECT reconstructions, DF = 4 is recommended as the best trade-off between acquisition time and image quality. At DF = 4, in terms of Contrast-to-Noise Ratio relative to Full, SpeRF outperformed LinInt and Partial: (1) DOTATATE: 88% vs. 69% vs. 69% for lesions and 88% vs. 73% vs. 67% for kidney, (2) PSMA-617: 78% vs. 71% vs. 69% for lesions and 78% vs. 57% vs. 67% for organs, including kidneys, lacrimal glands, parotid glands, and submandibular glands. SpeRF slightly underestimated count recovery relative to Full, compared to Partial but still outperformed LinInt: (1) DOTATATE: 98% vs. 100% vs. 88% for lesions and 98% vs. 100% vs. 94% for kidney, (2) PSMA-617: 98% vs. 101% vs. 94% for lesions and 96% vs. 101% vs. 78% for organs.
The proposed method, SpeRF, shows potential for significant reduction in acquisition time (up to a factor of 4) while maintaining quantitative accuracy in clinical SPECT protocols by allowing for the collection of fewer projections. The self-supervised nature of SpeRF, with data processed independently on each patient's projection data, eliminates the need for extensive training datasets. The reduction in acquisition time is particularly relevant for imaging under low-count conditions and for protocols that require multiple-bed positions such as whole-body imaging.
本研究旨在应对在低计数条件下延长SPECT成像时间的挑战,这在Lu-177 SPECT成像中会遇到。通过开发一种自监督学习方法来合成跳过的SPECT投影视图,从而缩短临床环境中的扫描时间。
我们开发了SpeRF,这是一种SPECT重建流程,它使用受神经辐射场(NeRF)启发的基于坐标的自监督学习框架,整合合成投影和测量投影。对于每次单次扫描,SpeRF独立训练一个多层感知器(MLP)来估计跳过的SPECT投影视图。SpeRF在Lu-177体模SPECT/CT测量以及临床SPECT/CT数据集上,针对各种下采样因子(DFs = 2、4、8)进行了测试,这些数据集来自11例接受[177Lu]Lu-DOTATATE治疗的患者和6例接受[177Lu]Lu-PSMA-617放射性药物治疗的患者。在投影空间以及通过比较重建图像来评估性能,比较的情况包括:(1)使用所有测量视图(“完整”),(2)仅使用下采样后的测量视图(“部分”),以及部分测量视图与(3)通过线性插值生成的跳过视图(“线性插值”)和(4)通过我们的方法合成的视图(“SpeRF”)相结合。
与线性插值投影相比,SpeRF投影在与测量投影相比时显示出更低的归一化均方根差(NRMSD)。在各种DFs下,与线性插值投影相比,SpeRF投影在体模研究中的NRMSD平均为7% 对10%,在DOTATATE患者研究中为18% 对26%,在PSMA-617患者研究中为20% 对21%。对于SPECT重建,建议将DF = 4作为采集时间和图像质量之间的最佳权衡。在DF = 4时,相对于完整数据,在对比度噪声比方面,SpeRF优于线性插值和部分数据:(1)DOTATATE:病变的对比度噪声比分别为88% 对69% 对69%,肾脏的对比度噪声比分别为88% 对73% 对67%;(2)PSMA-617:病变的对比度噪声比分别为78% 对71% 对69%,包括肾脏、泪腺、腮腺和颌下腺等器官的对比度噪声比分别为78% 对57% 对67%。与部分数据相比,SpeRF相对于完整数据在计数恢复方面略有低估,但仍优于线性插值:(1)DOTATATE:病变的计数恢复分别为98% 对100% 对88%,肾脏的计数恢复分别为98% 对100% 对94%;(2)PSMA-617:病变的计数恢复分别为98% 对101% 对94%,器官的计数恢复分别为96% 对101% 对78%。
所提出的方法SpeRF显示出在显著减少采集时间(最多可达4倍)方面的潜力,同时通过允许采集更少的投影来在临床SPECT协议中保持定量准确性。SpeRF的自监督性质,即对每个患者的投影数据独立处理,消除了对大量训练数据集的需求。采集时间的减少对于低计数条件下的成像以及需要多个床位位置的协议(如全身成像)尤为重要。