Tzoumas Stratis, Rosenthal Amir, Lutzweiler Christian, Razansky Daniel, Ntziachristos Vasilis
Institute for Biological and Medical Imaging, Helmholtz Zentrum München, German Research Center for Environment and Health, Ingolstädter Landstrasse 1, Neuherberg 85764, Germany and Chair for Biological Imaging, Technische Universität München, Arcisstrasse. 21 D-80333, Munich, Germany.
Institute for Biological and Medical Imaging, Helmholtz Zentrum München, German Research Center for Environment and Health, Ingolstädter Landstrasse 1, Neuherberg 85764, Germany and Faculty of Medicine, Technische Universität München, Ismaninger Strasse 22, 81675, Munich, Germany.
Med Phys. 2014 Nov;41(11):113301. doi: 10.1118/1.4893530.
One of the major challenges in dynamic multispectral optoacoustic imaging is its relatively low signal-to-noise ratio which often requires repetitive signal acquisition and averaging, thus limiting imaging rate. The development of denoising methods which prevent the need for signal averaging in time presents an important goal for advancing the dynamic capabilities of the technology.
In this paper, a denoising method is developed for multispectral optoacoustic imaging which exploits the implicit sparsity of multispectral optoacoustic signals both in space and in spectrum. Noise suppression is achieved by applying thresholding on a combined wavelet-Karhunen-Loève representation in which multispectral optoacoustic signals appear particularly sparse. The method is based on inherent characteristics of multispectral optoacoustic signals of tissues, offering promise for general application in different incarnations of multispectral optoacoustic systems.
The performance of the proposed method is demonstrated on mouse images acquired in vivo for two common additive noise sources: time-varying parasitic signals and white noise. In both cases, the proposed method shows considerable improvement in image quality in comparison to previously published denoising strategies that do not consider multispectral information.
The suggested denoising methodology can achieve noise suppression with minimal signal loss and considerably outperforms previously proposed denoising strategies, holding promise for advancing the dynamic capabilities of multispectral optoacoustic imaging while retaining image quality.
动态多光谱光声成像的主要挑战之一是其相对较低的信噪比,这通常需要重复采集信号并进行平均,从而限制了成像速度。开发能够避免在时间上进行信号平均的去噪方法是提升该技术动态能力的一个重要目标。
本文针对多光谱光声成像开发了一种去噪方法,该方法利用了多光谱光声信号在空间和光谱上的隐含稀疏性。通过对组合小波 - 卡尔胡宁 - 洛伊夫表示进行阈值处理来实现噪声抑制,在这种表示中多光谱光声信号显得特别稀疏。该方法基于组织多光谱光声信号的固有特性,有望在多光谱光声系统的不同形式中得到广泛应用。
在针对两种常见加性噪声源(时变寄生信号和白噪声)在小鼠体内采集的图像上验证了所提方法的性能。在这两种情况下,与之前未考虑多光谱信息的去噪策略相比,所提方法在图像质量上都有显著提升。
所建议的去噪方法能够在信号损失最小的情况下实现噪声抑制,并且明显优于之前提出的去噪策略,有望在保持图像质量的同时提升多光谱光声成像的动态能力。