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基于 k-Wave 方法的虚拟光分辨率光声显微镜。

Virtual optical-resolution photoacoustic microscopy using the k-Wave method.

出版信息

Appl Opt. 2021 Dec 20;60(36):11241-11246. doi: 10.1364/AO.444106.

Abstract

Deep learning has been widely used in image processing, quantitative analysis, and other applications in optical-resolution photoacoustic microscopy (OR-PAM). It requires a large amount of photoacoustic data for training and testing. However, due to the complex structure, high cost, slow imaging speed, and other factors of OR-PAM, it is difficult to obtain enough data required by deep learning, which limits the research of deep learning in OR-PAM to a certain extent. To solve this problem, a virtual OR-PAM based on k-Wave is proposed. The virtual photoacoustic microscopy mainly includes the setting of excitation light source and ultrasonic probe, scanning and signal processing, which can realize the common Gaussian-beam and Bessel-beam OR-PAMs. The system performance (lateral resolution, axial resolution, and depth of field) was tested by imaging a vertically tilted fiber, and the effectiveness and feasibility of the virtual simulation platform were verified by 3D imaging of the virtual vascular network. The ability to the generation of the dataset for deep learning was also verified. The construction of the virtual OR-PAM can promote the research of OR-PAM and the application of deep learning in OR-PAM.

摘要

深度学习已广泛应用于光学分辨率光声显微镜(OR-PAM)的图像处理、定量分析等领域。它需要大量的光声数据进行训练和测试。然而,由于 OR-PAM 结构复杂、成本高、成像速度慢等因素,很难获得深度学习所需的足够数据,这在一定程度上限制了深度学习在 OR-PAM 中的研究。为了解决这个问题,提出了一种基于 k-Wave 的虚拟 OR-PAM。虚拟光声显微镜主要包括激发光源和超声探头的设置、扫描和信号处理,可以实现常见的高斯光束和贝塞尔光束 OR-PAMs。通过对垂直倾斜光纤进行成像,测试了系统性能(横向分辨率、轴向分辨率和景深),并通过对虚拟血管网络的 3D 成像验证了虚拟仿真平台的有效性和可行性。还验证了其生成数据集用于深度学习的能力。虚拟 OR-PAM 的构建可以促进 OR-PAM 的研究和深度学习在 OR-PAM 中的应用。

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