Kim Kwang Hyeon, Lee Eun-Chong, Yoon Yeo Dong, Shin Dong-Won, Koo Hae-Won, Lee Byung-Jou
Clinical Research Support Center, Inje University Ilsan Paik Hospital, Goyang, Republic of Korea.
AI R&D center, Polestar Healthcare Inc, Seoul, Republic of Korea.
Sci Rep. 2025 May 26;15(1):18385. doi: 10.1038/s41598-025-03516-4.
This study aims to develop a generative adversarial networks (GAN)-based image translation model for synthesizing lumbar spine Computed Tomography (CT) to Magnetic Resonance (MR) images, focusing on sagittal images, and to evaluate its performance. A cycle-consistent GAN was used to translate lumbar spine CT slices into synthetic T2-weighted MR images. The model was trained on a dataset of 100 cases with co-registered CT and MR images in the sagittal plane from patients with degenerative disease. A qualitative analysis was performed with 30 cases, using a similarity score to evaluate anatomical features by neurosurgeons. Quantitative metrics, including mean absolute error (MAE), peak signal-to-noise ratio (PSNR), and structural similarity index (SSIM), were also computed. The GAN model successfully generated synthetic T2-weighted MR images that visually resembled real MR images. In qualitative evaluation, the similarity score for anatomical features (e.g., disc signal, paraspinal muscles, facet joints) averaged over 80%. The disc signal showed the highest similarity at 88.11% ± 4.47%. In the quantitative assessment of sagittal images, the results were: MAE = 43.32 ± 10.29, PSNR = 12.80 ± 1.55, and SSIM = 0.28 ± 0.07. This approach could be valuable in clinical settings where MR image is unavailable, potentially reducing healthcare costs.
本研究旨在开发一种基于生成对抗网络(GAN)的图像翻译模型,用于将腰椎计算机断层扫描(CT)图像合成磁共振(MR)图像,重点关注矢状面图像,并评估其性能。使用循环一致GAN将腰椎CT切片转换为合成的T2加权MR图像。该模型在一个包含100例患有退行性疾病患者的矢状面CT和MR图像配准数据集上进行训练。对30例病例进行了定性分析,由神经外科医生使用相似性评分来评估解剖特征。还计算了包括平均绝对误差(MAE)、峰值信噪比(PSNR)和结构相似性指数(SSIM)在内的定量指标。GAN模型成功生成了视觉上类似于真实MR图像的合成T2加权MR图像。在定性评估中,解剖特征(如椎间盘信号、椎旁肌、小关节)的相似性评分平均超过80%。椎间盘信号的相似性最高,为88.11%±4.47%。在矢状面图像的定量评估中,结果为:MAE = 43.32±10.29,PSNR = 12.80±1.55,SSIM = 0.28±0.07。这种方法在无法获得MR图像的临床环境中可能具有价值,有可能降低医疗成本。