Han Hyunkyung, Choo Kyobin, Jeon Tae Joo, Lee Sangwon, Seo Seungbeom, Kim Dongwoo, Kim Sun Jung, Lee Suk Hyun, Yun Mijin
Departments of Artificial Intelligence.
Computer Science, Yonsei University.
Clin Nucl Med. 2025 Oct 1;50(10):e580-e588. doi: 10.1097/RLU.0000000000006040. Epub 2025 Jul 1.
AI-driven scan time reduction is rapidly transforming medical imaging with benefits such as improved patient comfort and enhanced efficiency. A Dual Contrastive Learning Generative Adversarial Network (DCLGAN) was developed to predict full-time PET scans from shorter, noisier scans, improving challenges in imaging patients with movement disorders.
18 F FP-CIT PET/CT data from 391 patients with suspected Parkinsonism were used [250 training/validation, 141 testing (hospital A)]. Ground truth (GT) images were reconstructed from 15-minute scans, while denoised images (DIs) were generated from 1-, 3-, 5-, and 10-minute scans. Image quality was assessed using normalized root mean square error (NRMSE), peak signal-to-noise ratio (PSNR), structural similarity index measure (SSIM), visual analysis, and clinical metrics like BP ND and ISR for diagnosis of non-neurodegenerative Parkinson disease (NPD), idiopathic PD (IPD), and atypical PD (APD). External validation used data from 2 hospitals with different scanners (hospital B: 1-, 3-, 5-, and 10-min; hospital C: 1-, 3-, and 5-min). In addition, motion artifact reduction was evaluated using the Dice similarity coefficient (DSC).
In hospital A, NRMSE, PSNR, and SSIM values improved with scan duration, with the 5-minute DIs achieving optimal quality (NRMSE 0.008, PSNR 42.13, SSIM 0.98). Visual analysis rated DIs from scans ≥3 minutes as adequate or higher. The mean BP ND differences (95% CI) for each DIs were 0.19 (-0.01, 0.40), 0.11 (-0.02, 0.24), 0.08 (-0.03, 0.18), and 0.01 (-0.06, 0.07), with the CIs significantly decreasing. ISRs with the highest effect sizes for differentiating NPD, IPD, and APD (PP/AP, PP/VS, PC/VP) remained stable post-denoising. External validation showed 10-minute DIs (hospital B) and 1-minute DIs (hospital C) reached benchmarks of hospital A's image quality metrics, with similar trends in visual analysis and BP ND CIs. Furthermore, motion artifact correction in 9 patients yielded DSC improvements from 0.89 to 0.95 in striatal regions.
The DL-model is capable of generating high-quality 18 F FP-CIT PET images from shorter scans to enhance patient comfort, minimize motion artifacts, and maintain diagnostic precision. Furthermore, our study plays an important role in providing insights into how imaging quality assessment metrics can be used to determine the appropriate scan duration for different scanners with varying sensitivities.
人工智能驱动的扫描时间缩短正在迅速改变医学成像,带来诸如提高患者舒适度和增强效率等益处。开发了一种双对比学习生成对抗网络(DCLGAN),以从更短、噪声更大的扫描中预测全时PET扫描,改善对患有运动障碍患者进行成像时面临的挑战。
使用了391例疑似帕金森病患者的18F FP - CIT PET/CT数据[250例用于训练/验证,141例用于测试(医院A)]。从15分钟扫描重建出真实图像(GT),而从1分钟、3分钟、5分钟和10分钟扫描生成去噪图像(DI)。使用归一化均方根误差(NRMSE)、峰值信噪比(PSNR)、结构相似性指数测量(SSIM)、视觉分析以及用于诊断非神经退行性帕金森病(NPD)、特发性帕金森病(IPD)和非典型帕金森病(APD)的临床指标如BP ND和ISR来评估图像质量。外部验证使用了来自两家配备不同扫描仪的医院的数据(医院B:1分钟、3分钟、5分钟和10分钟;医院C:1分钟、3分钟和5分钟)。此外,使用骰子相似系数(DSC)评估运动伪影减少情况。
在医院A中,NRMSE、PSNR和SSIM值随扫描持续时间而改善,5分钟的DI达到最佳质量(NRMSE 0.008,PSNR 42.13,SSIM 0.98)。视觉分析将≥3分钟扫描的DI评为足够或更高。每个DI的平均BP ND差异(95%置信区间)分别为0.19(-0.01,0.40)、0.11(-0.02,0.24)、0.08(-0.03,0.18)和0.