Lan Hengrong, Zhang Juze, Yang Changchun, Gao Fei
Hybrid Imaging System Laboratory, Shanghai Engineering Research Center of Intelligent Vision and Imaging, School of Information Science and Technology, ShanghaiTech University, Shanghai 201210, China.
Chinese Academy of Sciences, Shanghai Institute of Microsystem and Information Technology, Shanghai 200050, China.
Biomed Opt Express. 2021 Nov 29;12(12):7835-7848. doi: 10.1364/BOE.441901. eCollection 2021 Dec 1.
Photoacoustic (PA) computed tomography (PACT) shows great potential in various preclinical and clinical applications. A great number of measurements are the premise that obtains a high-quality image, which implies a low imaging rate or a high system cost. The artifacts or sidelobes could pollute the image if we decrease the number of measured channels or limit the detected view. In this paper, a novel compressed sensing method for PACT using an untrained neural network is proposed, which decreases a half number of the measured channels and recovers enough details. This method uses a neural network to reconstruct without the requirement for any additional learning based on the deep image prior. The model can reconstruct the image only using a few detections with gradient descent. As an unlearned strategy, our method can cooperate with other existing regularization, and further improve the quality. In addition, we introduce a shape prior to easily converge the model to the image. We verify the feasibility of untrained network-based compressed sensing in PA image reconstruction and compare this method with a conventional method using total variation minimization. The experimental results show that our proposed method outperforms 32.72% (SSIM) with the traditional compressed sensing method in the same regularization. It could dramatically reduce the requirement for the number of transducers, by sparsely sampling the raw PA data, and improve the quality of PA image significantly.
光声(PA)计算机断层扫描(PACT)在各种临床前和临床应用中显示出巨大潜力。大量测量是获得高质量图像的前提,这意味着成像速度低或系统成本高。如果我们减少测量通道数量或限制检测视角,伪影或旁瓣可能会污染图像。本文提出了一种使用未经训练的神经网络的新型PACT压缩感知方法,该方法减少了一半的测量通道数量并恢复了足够的细节。该方法使用神经网络进行重建,无需基于深度图像先验进行任何额外学习。该模型仅使用几次带有梯度下降的检测就能重建图像。作为一种无学习策略,我们的方法可以与其他现有的正则化方法配合使用,并进一步提高质量。此外,我们引入形状先验以使模型更容易收敛到图像。我们验证了基于未经训练网络的压缩感知在PA图像重建中的可行性,并将该方法与使用总变分最小化的传统方法进行了比较。实验结果表明,在相同正则化条件下,我们提出的方法比传统压缩感知方法的性能提升了32.72%(结构相似性指数)。通过对原始PA数据进行稀疏采样,该方法可以显著降低对换能器数量的要求,并显著提高PA图像的质量。