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Fast spatiotemporal image reconstruction based on low-rank matrix estimation for dynamic photoacoustic computed tomography

机译:基于低秩矩阵估计的动态光声层析成像快速时空图像重建

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摘要

In order to monitor dynamic physiological events in near-real time, a variety of photoacoustic computed tomography (PACT) systems have been developed that can rapidly acquire data. Previously reported studies of dynamic PACT have employed conventional static methods to reconstruct a temporally ordered sequence of images on a frame-by-frame basis. Frame-by-frame image reconstruction (FBFIR) methods fail to exploit correlations between data frames and are known to be statistically and computationally suboptimal. In this study, a low-rank matrix estimation-based spatiotemporal image reconstruction (LRME-STIR) method is investigated for dynamic PACT applications. The LRME-STIR method is based on the observation that, in many PACT applications, the number of frames is much greater than the rank of the ideal noiseless data matrix. Using both computer-simulated and experimentally measured photoacoustic data, the performance of the LRME-STIR method is compared with that of conventional FBFIR method followed by image-domain filtering. The results demonstrate that the LRME-STIR method is not only computationally more efficient but also produces more accurate dynamic PACT images than a conventional FBFIR method followed by image-domain filtering.
机译:为了近实时地监视动态生理事件,已经开发了可以快速获取数据的各种光声计算机断层摄影(PACT)系统。先前报道的对动态PACT的研究已采用传统的静态方法在逐帧的基础上重建图像的时间顺序序列。逐帧图像重建(FBFIR)方法无法利用数据帧之间的相关性,并且在统计和计算上都不理想。在这项研究中,针对动态PACT应用研究了基于低秩矩阵估计的时空图像重建(LRME-STIR)方法。 LRME-STIR方法基于以下观察结果:在许多PACT应用中,帧数远大于理想无噪声数据矩阵的秩。使用计算机模拟和实验测量的光声数据,将LRME-STIR方法的性能与常规FBFIR方法的性能进行了比较,然后进行了图像域滤波。结果表明,LRME-STIR方法不仅计算效率更高,而且比传统的FBFIR方法紧随其后的是图像域滤波,它还能产生更准确的动态PACT图像。

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