论文标题
针对医学超声成像中血流估计的公联盲解和鲁棒主成分分析
Joint Blind Deconvolution and Robust Principal Component Analysis for Blood Flow Estimation in Medical Ultrasound Imaging
论文作者
论文摘要
本文解决了超声图像超快序列的高分辨率多普勒血流估计的问题。在文献中表明,将混乱和血液成分的分离作为逆问题,是基于时空的奇异值分解(SVD)基于杂物的杂物过滤的良好替代方法。特别是,最近已经将反卷积步骤嵌入了这样一个问题中,以减轻成像系统实验测量点扩散功能(PSF)的影响。在这种情况下显示了反卷积,以提高血流重建的准确性。但是,测量PSF需要非平凡的实验设置。为了克服这一局限性,我们在此提出了一种盲目的反卷积方法,能够从多普勒数据中估算血液成分和PSF。与基于实验测量的PSF和其他两种其他最新方法相比,对模拟和体内数据进行的数值实验证明了拟议方法的有效性。
This paper addresses the problem of high-resolution Doppler blood flow estimation from an ultrafast sequence of ultrasound images. Formulating the separation of clutter and blood components as an inverse problem has been shown in the literature to be a good alternative to spatio-temporal singular value decomposition (SVD)-based clutter filtering. In particular, a deconvolution step has recently been embedded in such a problem to mitigate the influence of the experimentally measured point spread function (PSF) of the imaging system. Deconvolution was shown in this context to improve the accuracy of the blood flow reconstruction. However, measuring the PSF requires non-trivial experimental setups. To overcome this limitation, we propose herein a blind deconvolution method able to estimate both the blood component and the PSF from Doppler data. Numerical experiments conducted on simulated and in vivo data demonstrate qualitatively and quantitatively the effectiveness of the proposed approach in comparison with the previous method based on experimentally measured PSF and two other state-of-the-art approaches.