深度学习
人工智能
迭代重建
计算机视觉
医学影像学
计算机科学
医学物理学
医学
作者
Shu Liao,Zhanhao Mo,Mengsu Zeng,Jiaojiao Wu,Yuning Gu,Guobin Li,Guotao Quan,Yang Lv,Lin Liu,Chun Yang,Xinglie Wang,Xiaoqian Huang,Yang Zhang,Wenjing Cao,Yun Dong,Ying Wei,Qing Zhou,Yongqin Xiao,Yiqiang Zhan,Xiang Sean Zhou
标识
DOI:10.1016/j.xcrm.2023.101119
摘要
Fast and low-dose reconstructions of medical images are highly desired in clinical routines. We propose a hybrid deep-learning and iterative reconstruction (hybrid DL-IR) framework and apply it for fast magnetic resonance imaging (MRI), fast positron emission tomography (PET), and low-dose computed tomography (CT) image generation tasks. First, in a retrospective MRI study (6,066 cases), we demonstrate its capability of handling 3- to 10-fold under-sampled MR data, enabling organ-level coverage with only 10- to 100-s scan time; second, a low-dose CT study (142 cases) shows that our framework can successfully alleviate the noise and streak artifacts in scans performed with only 10% radiation dose (0.61 mGy); and last, a fast whole-body PET study (131 cases) allows us to faithfully reconstruct tumor-induced lesions, including small ones (<4 mm), from 2- to 4-fold-accelerated PET acquisition (30-60 s/bp). This study offers a promising avenue for accurate and high-quality image reconstruction with broad clinical value.
科研通智能强力驱动
Strongly Powered by AbleSci AI