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A Ct-Free Deep-Learning-Based Attenuation and Scatter Correction for Copper-64 Pet in Different Time-Point Scans Publisher Pubmed



Adeli Z1 ; Hosseini SA1 ; Salimi Y2 ; Vahidfar N3 ; Sheikhzadeh P3, 4, 5
Authors
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Authors Affiliations
  1. 1. Group of Medical Radiation Engineering, Department of Energy Engineering, Sharif University of Technology, Tehran, Iran
  2. 2. Division of Nuclear Medicine and Molecular Imaging, Geneva University Hospital, Geneva, Switzerland
  3. 3. Department of Nuclear Medicine, Faculty of Medicine, IKHC, Tehran University of Medical Sciences, Tehran, Iran
  4. 4. Department of Biomedical Physics and Engineering, Faculty of Medicine, Tehran University of Medical Sciences, Tehran, Iran
  5. 5. Research Center for Nuclear Medicine, Shariati Hospital, Tehran University of Medical Sciences, Tehran, Iran

Source: Radiological Physics and Technology Published:2025


Abstract

This study aimed to develop and evaluate a deep-learning model for attenuation and scatter correction in whole-body 64Cu-based PET imaging. A swinUNETR model was implemented using the MONAI framework. Whole-body PET-nonAC and PET-CTAC image pairs were used for training, where PET-nonAC served as the input and PET-CTAC as the output. Due to the limited number of Cu-based PET/CT images, a model pre-trained on 51 Ga-PSMA PET images was fine-tuned on 15 Cu-based PET images via transfer learning. The model was trained without freezing layers, adapting learned features to the Cu-based dataset. For testing, six additional Cu-based PET images were used, representing 1-h, 12-h, and 48-h time points, with two images per group. The model performed best at the 12-h time point, with an MSE of 0.002 ± 0.0004 SUV2, PSNR of 43.14 ± 0.08 dB, and SSIM of 0.981 ± 0.002. At 48 h, accuracy slightly decreased (MSE = 0.036 ± 0.034 SUV2), but image quality remained high (PSNR = 44.49 ± 1.09 dB, SSIM = 0.981 ± 0.006). At 1 h, the model also showed strong results (MSE = 0.024 ± 0.002 SUV2, PSNR = 45.89 ± 5.23 dB, SSIM = 0.984 ± 0.005), demonstrating consistency across time points. Despite the limited size of the training dataset, the use of fine-tuning from a previously pre-trained model yielded acceptable performance. The results demonstrate that the proposed deep learning model can effectively generate PET-DLAC images that closely resemble PET-CTAC images, with only minor errors. © The Author(s), under exclusive licence to Japanese Society of Radiological Technology and Japan Society of Medical Physics 2025.
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