Quality Enhancement of Dynamic Brain PET Images via unsupervised learning

S. Kaviani, Mersedeh Mokri, C. Cohalan, D. Juneau, J. Carrier
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引用次数: 3

Abstract

Dynamic Positron Emission Tomography (PET) imaging modality is of great importance in nuclear medicine by measuring quantitive parameters to support clinical decisions. However, limitation in time acquisition due to low count rates causes increased noise levels. Furthermore, conventional denoising methods, including filtration, has the disadvantage of decreasing image resolution. Additionally, methods using supervised deep learning require a big dataset for high accuracy. In this paper, we used unsupervised deep learning to enhance the quality of the dynamic brain PET images by noise reduction while preserving spatial resolution.In this method, ten patients’dynamic 18F-FDG brain PET images were assessed. The Images with 10-sec frame reconstruction were considered noisy images, while 60-sec frame reconstruction was appointed as ground truth. A 3D U-Net architecture with skip connections considering optimized parameters was designed, and training was carried out using static PET and CT images as inputs. The results were compared with Gaussian and NLM filtering methods.The results show the Mean PSNR of 18.35(dB) in our proposed method of using DIP with CT images and 18.29(dB) with static images as priors compared to 16.21 and 16.02 for NLM and Gaussian filtering denoising method respectively. Mean SSIM in our framework is 0.711 in DIP by static PET images and 0.744 by CT images while NLM and Gaussian filtering display values of 0.44 and 0.45.Our proposed algorithm and designed 3D-UNet model is capable of enhancing dynamic PET/CT images quality using only its single static PET and CT images. This unsupervised learning method is time-efficient which could be applied clinically.
通过无监督学习提高动态脑PET图像的质量
动态正电子发射断层扫描(PET)成像方式通过测量定量参数来支持临床决策,在核医学中具有重要意义。然而,由于低计数率导致的时间采集限制导致噪声水平增加。此外,传统的去噪方法,包括滤波,具有降低图像分辨率的缺点。此外,使用监督深度学习的方法需要一个大的数据集来实现高精度。在本文中,我们使用无监督深度学习在保持空间分辨率的同时,通过降噪来提高动态脑PET图像的质量。本方法对10例患者的动态18F-FDG脑PET图像进行评估。将帧重建时间为10秒的图像作为噪声图像,将帧重建时间为60秒的图像作为ground truth。设计了考虑优化参数的带跳跃连接的三维U-Net结构,并以静态PET和CT图像为输入进行训练。结果与高斯滤波和NLM滤波方法进行了比较。结果表明,与NLM和高斯滤波去噪方法的平均PSNR分别为16.21和16.02相比,CT图像和静态图像的DIP去噪方法的平均PSNR分别为18.35(dB)和18.29(dB)。在我们的框架中,静态PET图像的DIP平均SSIM为0.711,CT图像为0.744,而NLM和高斯滤波的显示值分别为0.44和0.45。我们提出的算法和设计的3D-UNet模型能够仅使用其单个静态PET和CT图像来增强动态PET/CT图像的质量。这种无监督学习方法具有时间效率高,可应用于临床。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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