ReconU-Net: a direct PET image reconstruction using U-Net architecture with back projection-induced skip connection.
Fumio HashimotoKibo OtePublished in: Physics in medicine and biology (2024)
Objective. This study aims to introduce a novel back projection-induced U-Net-shaped architecture, called ReconU-Net, based on the original U-Net architecture for deep learning-based direct positron emission tomography (PET) image reconstruction. Additionally, our objective is to visualize the behavior of direct PET image reconstruction by comparing the proposed ReconU-Net architecture with the original U-Net architecture and existing DeepPET encoder-decoder architecture without skip connections. Approach . The proposed ReconU-Net architecture uniquely integrates the physical model of the back projection operation into the skip connection. This distinctive feature facilitates the effective transfer of intrinsic spatial information from the input sinogram to the reconstructed image via an embedded physical model. The proposed ReconU-Net was trained using Monte Carlo simulation data from the Brainweb phantom and tested on both simulated and real Hoffman brain phantom data. Main results . The proposed ReconU-Net method provided better reconstructed image in terms of the peak signal-to-noise ratio and contrast recovery coefficient than the original U-Net and DeepPET methods. Further analysis shows that the proposed ReconU-Net architecture has the ability to transfer features of multiple resolutions, especially non-abstract high-resolution information, through skip connections. Unlike the U-Net and DeepPET methods, the proposed ReconU-Net successfully reconstructed the real Hoffman brain phantom, despite limited training on simulated data. Significance . The proposed ReconU-Net can improve the fidelity of direct PET image reconstruction, even with small training datasets, by leveraging the synergistic relationship between data-driven modeling and the physics model of the imaging process.
Keyphrases
- deep learning
- positron emission tomography
- computed tomography
- high resolution
- pet ct
- healthcare
- magnetic resonance
- image quality
- physical activity
- electronic health record
- pet imaging
- mental health
- multiple sclerosis
- mass spectrometry
- monte carlo
- artificial intelligence
- white matter
- photodynamic therapy
- body composition
- convolutional neural network
- big data
- endothelial cells
- drug induced
- stress induced
- electron transfer