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首页> 外文期刊>Scientific reports. >Dictionary learning-based reverberation removal enables depth-resolved photoacoustic microscopy of cortical microvasculature in the mouse brain
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Dictionary learning-based reverberation removal enables depth-resolved photoacoustic microscopy of cortical microvasculature in the mouse brain

机译:字典基于学习的混响移除可以在小鼠脑中实现皮质微血管结构的深度分辨光声显微镜

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Photoacoustic microscopy (PAM) capitalizes on the optical absorption of blood hemoglobin to enable label-free high-contrast imaging of the cerebral microvasculature in vivo. Although time-resolved ultrasonic detection equips PAM with depth-sectioning capability, most of the data at depths are often obscured by acoustic reverberant artifacts from superficial cortical layers and thus unusable. In this paper, we present a first-of-a-kind dictionary learning algorithm to remove the reverberant signal while preserving underlying microvascular anatomy. This algorithm was validated in vitro, using dyed beads embedded in an optically transparent polydimethylsiloxane phantom. Subsequently, we demonstrated in the live mouse brain that the algorithm can suppress reverberant artifacts by 21.0?±?5.4?dB, enabling depth-resolved PAM up to 500?μm from the brain surface.
机译:光声显微镜(PAM)大写血液血红蛋白的光学吸收,使体内脑微血管系统的无标记高对比度成像。尽管时间分辨超声波检测具有深度切片能力的PAM,但深度处的大多数数据通常由来自浅表皮层层的声学混响伪像而模糊,因此无法使用。在本文中,我们介绍了一种初始的字典学习算法,以在保持潜在的微血管解剖学的同时去除混响信号。在体外验证该算法,使用嵌入光学透明的聚二甲基硅氧烷模丝的染色珠粒验证。随后,我们在实时鼠标大脑中证明了算法可以抑制混响伪像21.0?±5.4?DB,从脑表面使深度分辨的PAM高达500?μm。

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