Yousefzadeh Farnaz, Yazdi Mehran, Entezarmahdi Seyed Mohammad, Faghihi Reza, Ghasempoor Sadegh, Shahamiri Negar, Mehrizi Zahra Abuee, Haghighatafshar Mahdi
Department of Computer Science and Engineering and IT, School of Electrical and Computer Engineering, Shiraz University, Shiraz, Iran.
School of Electrical and Computer Engineering, Shiraz University, Shiraz, Iran.
EJNMMI Phys. 2024 Oct 8;11(1):82. doi: 10.1186/s40658-024-00687-3.
The problem of image denoising in single-photon emission computed tomography (SPECT) myocardial perfusion imaging (MPI) is a fundamental challenge. Although various image processing techniques have been presented, they may degrade the contrast of denoised images. The proposed idea in this study is to use a deep neural network as the denoising procedure during the iterative reconstruction process rather than the post-reconstruction phase. This method could decrease the background coefficient of variation (COV_bkg) of the final reconstructed image, which represents the amount of random noise, while improving the contrast-to-noise ratio (CNR).
In this study, a generative adversarial network is used, where its generator is trained by a two-phase approach. In the first phase, the network is trained by a confined image region around the heart in transverse view. The second phase improves the network's generalization by tuning the network weights with the full image size as the input. The network was trained and tested by a dataset of 247 patients who underwent two immediate serially high- and low-noise SPECT-MPI.
Quantitative results show that compared to post-reconstruction low pass filtering and post-reconstruction deep denoising methods, our proposed method can decline the COV_bkg of the images by up to 10.28% and 12.52% and enhance the CNR by up to 54.54% and 45.82%, respectively.
The iterative deep denoising method outperforms 2D low-pass Gaussian filtering with an 8.4-mm FWHM and post-reconstruction deep denoising approaches.
单光子发射计算机断层扫描(SPECT)心肌灌注成像(MPI)中的图像去噪问题是一项根本性挑战。尽管已经提出了各种图像处理技术,但它们可能会降低去噪后图像的对比度。本研究提出的想法是在迭代重建过程而非重建后阶段使用深度神经网络进行去噪处理。这种方法可以降低最终重建图像的背景变异系数(COV_bkg),其代表随机噪声量,同时提高对比度噪声比(CNR)。
在本研究中,使用了生成对抗网络,其生成器通过两阶段方法进行训练。在第一阶段,网络通过横向视图中心脏周围的受限图像区域进行训练。第二阶段通过以全图像尺寸作为输入来调整网络权重,从而提高网络的泛化能力。该网络通过247例接受两次连续的即时高噪声和低噪声SPECT-MPI检查的患者数据集进行训练和测试。
定量结果表明,与重建后低通滤波和重建后深度去噪方法相比,我们提出的方法可使图像的COV_bkg分别降低高达10.28%和12.52%,并使CNR分别提高高达54.54%和45.82%。
迭代深度去噪方法优于半高宽为8.4毫米的二维低通高斯滤波和重建后深度去噪方法。