Journal Article10.1142/s1793545823500281
Triple-Path Feature Transform Network for Ring-Array Photoacoustic Tomography Image Reconstruction
Lingyu Ma
1
TL;DR: This paper proposes a triple-path feature transform network (TFT-Net) for ring-array photoacoustic tomography, enhancing imaging quality from limited-view data by combining raw signals, linear reconstruction images, and physical models, and achieving fast and high-quality image reconstruction.
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Abstract: Photoacoustic imaging (PAI) is a noninvasive emerging imaging method based on the photoacoustic effect, which provides necessary assistance for medical diagnosis. It has the characteristics of large imaging depth and high contrast. However, limited by the equipment cost and reconstruction time requirements, the existing PAI systems distributed with annular array transducers are difficult to take into account both the image quality and the imaging speed. In this paper, a triple-path feature transform network (TFT-Net) for ring-array photoacoustic tomography is proposed to enhance the imaging quality from limited-view and sparse measurement data. Specifically, the network combines the raw photoacoustic pressure signals and conventional linear reconstruction images as input data, and takes the photoacoustic physical model as a prior information to guide the reconstruction process. In addition, to enhance the ability of extracting signal features, the residual block and squeeze and excitation block are introduced into the TFT-Net. For further efficient reconstruction, the final output of photoacoustic signals uses ‘filter-then-upsample’ operation with a pixel-shuffle multiplexer and a max out module. Experiment results on simulated and in-vivo data demonstrate that the constructed TFT-Net can restore the target boundary clearly, reduce background noise, and realize fast and high-quality photoacoustic image reconstruction of limited view with sparse sampling.
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Citations
Sparse‐View Photoacoustic Reconstruction Method for Diabetic Retinopathy Using Feature Fusion Network
Xiaohan Chang,Lingbo Cai,Jianlei Wang,Hongyang Dong,Jing Han,Chun Wang +5 more
TL;DR: A sparse-view photoacoustic reconstruction method using a feature fusion network (SAMF-Net) is proposed for diabetic retinopathy imaging, demonstrating superior reconstruction capability under sparse detection views and potential for diabetic retinopathy diagnosis.
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