IEEE Trans Med Imaging. 2023 May;42(5):1325-1336. doi: 10.1109/TMI.2022.3226604. Epub 2023 May 2.
In nuclear imaging, limited resolution causes partial volume effects (PVEs) that affect image sharpness and quantitative accuracy. Partial volume correction (PVC) methods incorporating high-resolution anatomical information from CT or MRI have been demonstrated to be effective. However, such anatomical-guided methods typically require tedious image registration and segmentation steps. Accurately segmented organ templates are also hard to obtain, particularly in cardiac SPECT imaging, due to the lack of hybrid SPECT/CT scanners with high-end CT and associated motion artifacts. Slight mis-registration/mis-segmentation would result in severe degradation in image quality after PVC. In this work, we develop a deep-learning-based method for fast cardiac SPECT PVC without anatomical information and associated organ segmentation. The proposed network involves a densely-connected multi-dimensional dynamic mechanism, allowing the convolutional kernels to be adapted based on the input images, even after the network is fully trained. Intramyocardial blood volume (IMBV) is introduced as an additional clinical-relevant loss function for network optimization. The proposed network demonstrated promising performance on 28 canine studies acquired on a GE Discovery NM/CT 570c dedicated cardiac SPECT scanner with a 64-slice CT using Technetium-99m-labeled red blood cells. This work showed that the proposed network with densely-connected dynamic mechanism produced superior results compared with the same network without such mechanism. Results also showed that the proposed network without anatomical information could produce images with statistically comparable IMBV measurements to the images generated by anatomical-guided PVC methods, which could be helpful in clinical translation.
在核医学成像中,有限的分辨率会导致部分容积效应(PVE),从而影响图像的清晰度和定量准确性。已经证明,结合 CT 或 MRI 高分辨率解剖学信息的部分容积校正(PVC)方法是有效的。然而,这种基于解剖结构的方法通常需要繁琐的图像配准和分割步骤。由于缺乏具有高端 CT 和相关运动伪影的混合 SPECT/CT 扫描仪,准确分割的器官模板也难以获得,尤其是在心脏 SPECT 成像中。轻微的配准/分割错误会导致 PVC 后图像质量严重下降。在这项工作中,我们开发了一种基于深度学习的快速心脏 SPECT PVC 方法,无需解剖学信息和相关器官分割。所提出的网络涉及一个密集连接的多维动态机制,允许卷积核根据输入图像进行自适应,即使在网络完全训练后也是如此。引入心肌内血容量(IMBV)作为网络优化的附加临床相关损失函数。该网络在 28 项使用Technetium-99m 标记的红细胞在 GE Discovery NM/CT 570c 专用心脏 SPECT 扫描仪上进行的犬科研究中表现出了有前景的性能,该扫描仪配备了 64 层 CT。这项工作表明,具有密集连接动态机制的所提出的网络产生的结果优于没有这种机制的相同网络。结果还表明,无需解剖学信息的所提出的网络可以生成与基于解剖结构的 PVC 方法生成的图像具有统计学可比的 IMBV 测量值的图像,这可能有助于临床转化。