Non-contrast CT-based pulmonary embolism detection using GAN-generated synthetic contrast enhancement: Development and validation of an AI frameworkopen access
- Authors
- Kim, Young-Tak; Bak, So Hyeon; Han, Seon-Sook; Son, Yunsik; Park, Jinkyeong
- Issue Date
- Nov-2025
- Publisher
- Elsevier Ltd
- Keywords
- Generative Artificial Intelligence; Non-contrast Ct Imaging; Pulmonary Embolism; Synthetic Contrast-enhanced Imaging; Artificial Intelligence; Computerized Tomography; Medical Imaging; Pulmonary Diseases; Acute Pulmonary Embolisms; Adversarial Networks; Contrast Enhancement; Contrast-enhanced Images; Contrast-enhanced Imaging; Ct Imaging; Generative Artificial Intelligence; Non-contrast Ct Imaging; Pulmonary Embolism; Synthetic Contrast-enhanced Imaging; Diagnosis
- Citation
- Computers in Biology and Medicine, v.198, pp 1 - 11
- Pages
- 11
- Indexed
- SCIE
SCOPUS
- Journal Title
- Computers in Biology and Medicine
- Volume
- 198
- Start Page
- 1
- End Page
- 11
- URI
- https://scholarworks.dongguk.edu/handle/sw.dongguk/61711
- DOI
- 10.1016/j.compbiomed.2025.111109
- ISSN
- 0010-4825
1879-0534
- Abstract
- Acute pulmonary embolism (PE) is a life-threatening condition often diagnosed using CT pulmonary angiography (CTPA). However, CTPA is contraindicated in patients with contrast allergies or at risk for contrast-induced nephropathy. This study explores an AI-driven approach to generate synthetic contrast-enhanced images from non-contrast CT scans for accurate diagnosis of acute PE without contrast agents. This retrospective study used dual-energy and standard CT datasets from two institutions. The internal dataset included 84 patients: 41 PE-negative cases for generative model training and 43 patients (30 PE-positive) for diagnostic evaluation. An external dataset of 62 patients (26 PE-positive) was used for further validation. We developed a generative adversarial network (GAN) based on U-Net, trained on paired non-contrast and contrast-enhanced images. The model was optimized using contrast-enhanced L1-loss with hyperparameter λ to improve anatomical accuracy. A ConvNeXt-based classifier trained on the RSNA dataset (N = 7,122) generated per-slice PE probabilities, which were aggregated for patient-level prediction via a Random Forest model. Diagnostic performance was assessed using five-fold cross-validation on both internal and external datasets. The GAN achieved optimal image similarity at λ = 0.5, with the lowest mean absolute error (0.0089) and highest MS-SSIM (0.9674). PE classification yielded AUCs of 0.861 and 0.836 in the internal dataset, and 0.787 and 0.680 in the external dataset, using real and synthetic images, respectively. No statistically significant differences were observed. Our findings demonstrate that synthetic contrast CT can serve as a viable alternative for PE diagnosis in patients contraindicated for CTPA, supporting safe and accessible imaging strategies. © 2025 Elsevier B.V., All rights reserved.
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