The First College of Clinical Medical Science, China Three Gorges University, Yichang, 443000, China.
Yichang Central People's Hospital, Yichang, 443000, China.
Sci Rep. 2024 Sep 2;14(1):20382. doi: 10.1038/s41598-024-71288-4.
CT and MR tools are commonly used to diagnose lumbar fractures (LF). However, numerous limitations have been found in practice. The aims of this study were to innovate and develop a spinal disease-specific neural network and to evaluate whether synthetic MRI of the LF affected clinical diagnosis and treatment strategies. A total of 675 LF patients who met the inclusion and exclusion criteria were included in the study. For each participant, two mid-sagittal CT and T2-weighted MR images were selected; 1350 pairs of LF images were also included. A new Self-pix based on Pix2pix and Self-Attention was constructed. A total of 1350 pairs of CT and MR images, which were randomly divided into a training group (1147 pairs) and a test group (203 pairs), were fed into Pix2pix and Self-pix. The quantitative evaluation included PSNR and SSIM (PSNR1 and SSIM1: real MR images and Pix2pix-generated MR images; PSNR2 and SSIM2: real MR images and Self-pix-generated MR images). The qualitative evaluation, including accurate diagnosis of acute fractures and accurate selection of treatment strategies based on Self-pix-generated MRI, was performed by three spine surgeons. In the LF group, PSNR1 and PSNR2 were 10.884 and 11.021 (p < 0.001), and SSIM1 and SSIM2 were 0.766 and 0.771 (p < 0.001), respectively. In the ROI group, PSNR1 and PSNR2 were 12.350 and 12.670 (p = 0.004), and SSIM1 and SSIM2 were 0.816 and 0.832 (p = 0.005), respectively. According to the qualitative evaluation, Self-pix-generated MRI showed no significant difference from real MRI in identifying acute fractures (p = 0.689), with a good sensitivity of 84.36% and specificity of 96.65%. No difference in treatment strategy was found between the Self-pix-generated MRI group and the real MRI group (p = 0.135). In this study, a disease-specific GAN named Self-pix was developed, which demonstrated better image generation performance compared to traditional GAN. The spine surgeon could accurately diagnose LF and select treatment strategies based on Self-pix-generated T2 MR images.
CT 和 MR 工具常用于诊断腰椎骨折(LF)。然而,在实践中发现了许多局限性。本研究旨在创新和开发一种专门用于脊柱疾病的神经网络,并评估 LF 的合成 MRI 是否会影响临床诊断和治疗策略。共有 675 名符合纳入和排除标准的 LF 患者被纳入研究。对于每个参与者,选择了两个正中矢状面 CT 和 T2 加权 MR 图像;还包括 1350 对 LF 图像。构建了一个新的基于 Pix2pix 和 Self-Attention 的 Self-pix。共 1350 对 CT 和 MR 图像,随机分为训练组(1147 对)和测试组(203 对),输入到 Pix2pix 和 Self-pix 中。定量评估包括 PSNR 和 SSIM(PSNR1 和 SSIM1:真实 MR 图像和 Pix2pix 生成的 MR 图像;PSNR2 和 SSIM2:真实 MR 图像和 Self-pix 生成的 MR 图像)。三位脊柱外科医生进行了定性评估,包括根据 Self-pix 生成的 MRI 准确诊断急性骨折和准确选择治疗策略。在 LF 组中,PSNR1 和 PSNR2 分别为 10.884 和 11.021(p<0.001),SSIM1 和 SSIM2 分别为 0.766 和 0.771(p<0.001)。在 ROI 组中,PSNR1 和 PSNR2 分别为 12.350 和 12.670(p=0.004),SSIM1 和 SSIM2 分别为 0.816 和 0.832(p=0.005)。根据定性评估,Self-pix 生成的 MRI 在识别急性骨折方面与真实 MRI 无显著差异(p=0.689),具有 84.36%的高灵敏度和 96.65%的特异性。Self-pix 生成的 MRI 组和真实 MRI 组之间的治疗策略无差异(p=0.135)。在这项研究中,开发了一种名为 Self-pix 的疾病特异性 GAN,与传统 GAN 相比,它具有更好的图像生成性能。脊柱外科医生可以根据 Self-pix 生成的 T2 MR 图像准确诊断 LF 并选择治疗策略。