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Lung-DDPM: Semantic Layout-Guided Diffusion Models for Thoracic CT Image Synthesis.

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IEEE transactions on bio-medical engineering 📖 저널 OA 33.3% 2021: 1/1 OA 2024: 1/2 OA 2025: 1/4 OA 2026: 4/14 OA 2021~2026 2026 Vol.73(3) p. 1134-1145
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Jiang Y, Lemarechal Y, Plante S, Bafaro J, Abi-Rjeile J, Joubert P

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With the rapid development of artificial intelligence (AI), AI-assisted medical imaging analysis demonstrates remarkable performance in early lung cancer screening.

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APA Jiang Y, Lemarechal Y, et al. (2026). Lung-DDPM: Semantic Layout-Guided Diffusion Models for Thoracic CT Image Synthesis.. IEEE transactions on bio-medical engineering, 73(3), 1134-1145. https://doi.org/10.1109/TBME.2025.3599011
MLA Jiang Y, et al.. "Lung-DDPM: Semantic Layout-Guided Diffusion Models for Thoracic CT Image Synthesis.." IEEE transactions on bio-medical engineering, vol. 73, no. 3, 2026, pp. 1134-1145.
PMID 40811297 ↗

Abstract

With the rapid development of artificial intelligence (AI), AI-assisted medical imaging analysis demonstrates remarkable performance in early lung cancer screening. However, the costly annotation process and privacy concerns limit the construction of large-scale medical datasets, hampering the further application of AI in healthcare. To address the data scarcity in lung cancer screening, we propose Lung-DDPM, a thoracic CT image synthesis approach that effectively generates high-fidelity 3D synthetic CT images, which prove helpful in downstream lung nodule segmentation tasks. Our method is based on semantic layout-guided denoising diffusion probabilistic models (DDPM), enabling anatomically reasonable, seamless, and consistent sample generation even from incomplete semantic layouts. Our results suggest that the proposed method outperforms other state-of-the-art (SOTA) generative models in image quality evaluation and downstream lung nodule segmentation tasks. Specifically, Lung-DDPM achieved superior performance on our large validation cohort, with a Fréchet inception distance (FID) of 0.0047, maximum mean discrepancy (MMD) of 0.0070, and mean squared error (MSE) of 0.0024. These results were 7.4×, 3.1×, and 29.5× better than the second-best competitors, respectively. Furthermore, the lung nodule segmentation model, trained on a dataset combining real and Lung-DDPM-generated synthetic samples, attained a Dice Coefficient (Dice) of 0.3914 and sensitivity of 0.4393. This represents 8.8% and 18.6% improvements in Dice and sensitivity compared to the model trained solely on real samples. The experimental results highlight Lung-DDPM's potential for a broader range of medical imaging applications, such as general tumor segmentation, cancer survival estimation, and risk prediction.

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