Deep learning acceleration of iterative model-based light fluence correction for photoacoustic tomography

IF 7.1 1区 医学 Q1 ENGINEERING, BIOMEDICAL
Zhaoyong Liang , Shuangyang Zhang , Zhichao Liang , Zongxin Mo , Xiaoming Zhang , Yutian Zhong , Wufan Chen , Li Qi
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引用次数: 0

Abstract

Photoacoustic tomography (PAT) is a promising imaging technique that can visualize the distribution of chromophores within biological tissue. However, the accuracy of PAT imaging is compromised by light fluence (LF), which hinders the quantification of light absorbers. Currently, model-based iterative methods are used for LF correction, but they require extensive computational resources due to repeated LF estimation based on differential light transport models. To improve LF correction efficiency, we propose to use Fourier neural operator (FNO), a neural network specially designed for estimating partial differential equations, to learn the forward projection of light transport in PAT. Trained using paired finite-element-based LF simulation data, our FNO model replaces the traditional computational heavy LF estimator during iterative correction, such that the correction procedure is considerably accelerated. Simulation and experimental results demonstrate that our method achieves comparable LF correction quality to traditional iterative methods while reducing the correction time by over 30 times.

深度学习加速光声断层扫描中基于模型的迭代光通量校正
光声层析成像(PAT)是一种很有前途的成像技术,它能直观地显示生物组织内发色团的分布。然而,光通量(LF)会影响 PAT 成像的准确性,从而阻碍对光吸收体的量化。目前,基于模型的迭代法被用于校正 LF,但由于需要根据差分光传输模型重复估计 LF,因此需要大量的计算资源。为了提高低频校正效率,我们建议使用傅立叶神经算子(FNO)来学习 PAT 中光传输的正向投影。FNO 是一种专门用于估计偏微分方程的神经网络。我们的 FNO 模型利用成对的基于有限元的 LF 仿真数据进行训练,在迭代校正过程中取代了传统的计算繁重的 LF 估算器,从而大大加快了校正过程。仿真和实验结果表明,我们的方法实现了与传统迭代法相当的低频校正质量,同时将校正时间缩短了 30 多倍。
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来源期刊
Photoacoustics
Photoacoustics Physics and Astronomy-Atomic and Molecular Physics, and Optics
CiteScore
11.40
自引率
16.50%
发文量
96
审稿时长
53 days
期刊介绍: The open access Photoacoustics journal (PACS) aims to publish original research and review contributions in the field of photoacoustics-optoacoustics-thermoacoustics. This field utilizes acoustical and ultrasonic phenomena excited by electromagnetic radiation for the detection, visualization, and characterization of various materials and biological tissues, including living organisms. Recent advancements in laser technologies, ultrasound detection approaches, inverse theory, and fast reconstruction algorithms have greatly supported the rapid progress in this field. The unique contrast provided by molecular absorption in photoacoustic-optoacoustic-thermoacoustic methods has allowed for addressing unmet biological and medical needs such as pre-clinical research, clinical imaging of vasculature, tissue and disease physiology, drug efficacy, surgery guidance, and therapy monitoring. Applications of this field encompass a wide range of medical imaging and sensing applications, including cancer, vascular diseases, brain neurophysiology, ophthalmology, and diabetes. Moreover, photoacoustics-optoacoustics-thermoacoustics is a multidisciplinary field, with contributions from chemistry and nanotechnology, where novel materials such as biodegradable nanoparticles, organic dyes, targeted agents, theranostic probes, and genetically expressed markers are being actively developed. These advanced materials have significantly improved the signal-to-noise ratio and tissue contrast in photoacoustic methods.
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