Abstract

Photoacoustic tomography (PAT) is an emerging biomedical imaging technology that can realize high contrast imaging with a penetration depth of the acoustic. Recently, deep learning (DL) methods have also been successfully applied to PAT for improving the image reconstruction quality. However, the current DL-based PAT methods are implemented by the supervised learning strategy, and the imaging performance is dependent on the available ground-truth data. To overcome the limitation, this work introduces a new image domain transformation method based on cyclic generative adversarial network (CycleGAN), termed as PA-GAN, which is used to remove artifacts in PAT images caused by the use of the limited-view measurement data in an unsupervised learning way. A series of data from phantom and in vivo experiments are used to evaluate the performance of the proposed PA-GAN. The experimental results show that PA-GAN provides a good performance in removing artifacts existing in photoacoustic tomographic images. In particular, when dealing with extremely sparse measurement data (e.g., 8 projections in circle phantom experiments), higher imaging performance is achieved by the proposed unsupervised PA-GAN, with an improvement of ∼14% in structural similarity (SSIM) and ∼66% in peak signal to noise ratio (PSNR), compared with the supervised-learning U-Net method. With an increasing number of projections (e.g., 128 projections), U-Net, especially FD U-Net, shows a slight improvement in artifact removal capability, in terms of SSIM and PSNR. Furthermore, the computational time obtained by PA-GAN and U-Net is similar (∼60 ms/frame), once the network is trained. More importantly, PA-GAN is more flexible than U-Net that allows the model to be effectively trained with unpaired data. As a result, PA-GAN makes it possible to implement PAT with higher flexibility without compromising imaging performance.

Highlights

  • As a non-invasive multi-scale biomedical imaging technique that enables image deep tissues with high contrast, photoacoustic tomography (PAT) has become a new powerful pre-clinical and clinical tool [1,2,3,4,5,6]

  • In this paper, we propose an unsupervised deep learning (DL) method based on CycleGAN to improve the image quality in Photoacoustic tomography (PAT), i.e., to remove the artifacts in PAT images caused by using the limited-view measurement data

  • Photoacoustic tomography (PAT) enables image multi-scale objects with a high contrast, high resolution, and deep penetration, which is helpful for clinic diagnosis and evaluation

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Summary

Introduction

As a non-invasive multi-scale biomedical imaging technique that enables image deep tissues with high contrast, photoacoustic tomography (PAT) has become a new powerful pre-clinical and clinical tool [1,2,3,4,5,6]. To implement PAT, a biological object is first illuminated by short optical pulses and excited photoacoustic (PA) wave signal is detected by ultrasound probes [7,8]. In practice, ultrasound probes have limited detection bandwidths and finite apertures which hinder the acquisition of complete original waveform signals. Due to the use of sparsely sampled data, artifacts are inevitably introduced into the reconstructed PAT images, which leads to the problems of image blur, distortion, and low resolution. The reconstruction methods are important for PAT and directly affect the imaging performance. The reconstruction of PAT is a challenging task for most clinical applications because of the under-sampled data and inexact inverse model [11]

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