IEEE Trans Med Imaging. 2022 Dec;41(12):3636-3648. doi: 10.1109/TMI.2022.3192072. Epub 2022 Dec 2.
Acoustic resolution photoacoustic micros- copy (AR-PAM) can achieve deeper imaging depth in biological tissue, with the sacrifice of imaging resolution compared with optical resolution photoacoustic microscopy (OR-PAM). Here we aim to enhance the AR-PAM image quality towards OR-PAM image, which specifically includes the enhancement of imaging resolution, restoration of micro-vasculatures, and reduction of artifacts. To address this issue, a network (MultiResU-Net) is first trained as generative model with simulated AR-OR image pairs, which are synthesized with physical transducer model. Moderate enhancement results can already be obtained when applying this model to in vivo AR imaging data. Nevertheless, the perceptual quality is unsatisfactory due to domain shift. Further, domain transfer learning technique under generative adversarial network (GAN) framework is proposed to drive the enhanced image's manifold towards that of real OR image. In this way, perceptually convincing AR to OR enhancement result is obtained, which can also be supported by quantitative analysis. Peak Signal to Noise Ratio (PSNR) and Structural Similarity Index (SSIM) values are significantly increased from 14.74 dB to 19.01 dB and from 0.1974 to 0.2937, respectively, validating the improvement of reconstruction correctness and overall perceptual quality. The proposed algorithm has also been validated across different imaging depths with experiments conducted in both shallow and deep tissue. The above AR to OR domain transfer learning with GAN (AODTL-GAN) framework has enabled the enhancement target with limited amount of matched in vivo AR-OR imaging data.
声分辨率光声显微镜(AR-PAM)可以在生物组织中实现更深的成像深度,但其成像分辨率相对于光学分辨率光声显微镜(OR-PAM)有所牺牲。在这里,我们旨在提高 AR-PAM 图像质量,使其接近 OR-PAM 图像,具体包括提高成像分辨率、恢复微血管和减少伪影。为了解决这个问题,我们首先使用物理换能器模型合成的模拟 AR-OR 图像对训练一个网络(MultiResU-Net)作为生成模型。当将该模型应用于体内 AR 成像数据时,已经可以获得适度的增强效果。然而,由于域转移,感知质量仍然不尽如人意。进一步提出了基于生成对抗网络(GAN)框架的域转移学习技术,以驱动增强图像的流形向真实 OR 图像的流形靠拢。通过这种方式,获得了令人信服的 AR 到 OR 增强效果,也可以通过定量分析来支持。峰值信噪比(PSNR)和结构相似性指数(SSIM)值分别从 14.74dB 显著增加到 19.01dB 和从 0.1974 增加到 0.2937,验证了重建正确性和整体感知质量的提高。所提出的算法也已经在不同的成像深度进行了验证,在浅层和深层组织中都进行了实验。基于 GAN(AODTL-GAN)框架的 AR 到 OR 域转移学习使增强目标可以使用有限数量的匹配体内 AR-OR 成像数据。