Shan Tianqi, Qi Jin, Jiang Max, Jiang Huabei
Appl Opt. 2017 May 20;56(15):4426-4432. doi: 10.1364/AO.56.004426.
Finite element method (FEM)-based time-domain quantitative photoacoustic tomography (TD-qPAT) is a powerful approach, as it provides highly accurate quantitative imaging capability by recovering absolute tissue absorption coefficients for functional imaging. However, this approach is extremely computationally demanding, and requires days for the reconstruction of one set of images, making it impractical to be used in clinical applications, where a large amount of data needs to be processed in a limited time scale. To address this challenge, here we present a graphic processing unit (GPU)-based parallelization method to accelerate the image reconstruction using FEM-based TD-qPAT. In addition, to further optimize FEM-based TD-qPAT reconstruction, an adaptive meshing technique, along with mesh density optimization, is adopted. Phantom experimental data are used in our study to evaluate the GPU-based TD-qPAT algorithm, as well as the adaptive meshing technique. The results show that our new approach can considerably reduce the computation time by at least 136-fold over the current central processing unit (CPU)-based algorithm. The quality of image reconstruction is also improved significantly when adaptive meshing and mesh density optimization are applied.
基于有限元方法(FEM)的时域定量光声断层扫描(TD-qPAT)是一种强大的方法,因为它通过恢复用于功能成像的绝对组织吸收系数来提供高度准确的定量成像能力。然而,这种方法在计算上要求极高,重建一组图像需要数天时间,这使得它在临床应用中不切实际,因为在临床应用中需要在有限的时间内处理大量数据。为应对这一挑战,我们在此提出一种基于图形处理单元(GPU)的并行化方法,以加速基于FEM的TD-qPAT的图像重建。此外,为进一步优化基于FEM的TD-qPAT重建,采用了自适应网格划分技术以及网格密度优化。在我们的研究中,使用体模实验数据来评估基于GPU的TD-qPAT算法以及自适应网格划分技术。结果表明,我们的新方法与当前基于中央处理器(CPU)的算法相比,可将计算时间大幅减少至少136倍。应用自适应网格划分和网格密度优化时,图像重建质量也显著提高。