Hsu Ko-Tsung, Guan Steven, Chitnis Parag V
Department of Bioengineering, George Mason University, VA 22030, United States.
Photoacoustics. 2023 Jan 13;29:100452. doi: 10.1016/j.pacs.2023.100452. eCollection 2023 Feb.
Iterative reconstruction has demonstrated superior performance in medical imaging under compressed, sparse, and limited-view sensing scenarios. However, iterative reconstruction algorithms are slow to converge and rely heavily on hand-crafted parameters to achieve good performance. Many iterations are usually required to reconstruct a high-quality image, which is computationally expensive due to repeated evaluations of the physical model. While learned iterative reconstruction approaches such as model-based learning (MBLr) can reduce the number of iterations through convolutional neural networks, it still requires repeated evaluations of the physical models at each iteration. Therefore, the goal of this study is to develop a Fast Iterative Reconstruction (FIRe) algorithm that incorporates a learned physical model into the learned iterative reconstruction scheme to further reduce the reconstruction time while maintaining robust reconstruction performance. We also propose an efficient training scheme for FIRe, which releases the enormous memory footprint required by learned iterative reconstruction methods through the concept of recursive training. The results of our proposed method demonstrate comparable reconstruction performance to learned iterative reconstruction methods with a 9x reduction in computation time and a 620x reduction in computation time compared to variational reconstruction.
迭代重建在压缩、稀疏和有限视角传感场景下的医学成像中已展现出卓越性能。然而,迭代重建算法收敛速度慢,且在很大程度上依赖手工设定的参数来实现良好性能。通常需要多次迭代才能重建出高质量图像,由于对物理模型的反复评估,这在计算上代价高昂。虽然基于模型学习(MBLr)等基于学习的迭代重建方法可通过卷积神经网络减少迭代次数,但每次迭代仍需对物理模型进行反复评估。因此,本研究的目标是开发一种快速迭代重建(FIRe)算法,该算法将学习到的物理模型纳入基于学习的迭代重建方案中,以在保持稳健重建性能的同时进一步缩短重建时间。我们还为FIRe提出了一种高效的训练方案,该方案通过递归训练的概念,消除了基于学习的迭代重建方法所需的巨大内存占用。我们提出的方法的结果表明,其重建性能与基于学习的迭代重建方法相当,计算时间减少了9倍,与变分重建相比计算时间减少了620倍。