Department of Radiology, Molecular Imaging Program at Stanford, Stanford University, 725 Welch Road, CA, 94304, Stanford, USA.
Department of Pediatrics, Pediatric Oncology, Lucile Packard Children's Hospital, Stanford University, Stanford, CA, 94304, USA.
Eur J Nucl Med Mol Imaging. 2021 Aug;48(9):2771-2781. doi: 10.1007/s00259-021-05197-3. Epub 2021 Feb 1.
To generate diagnostic F-FDG PET images of pediatric cancer patients from ultra-low-dose F-FDG PET input images, using a novel artificial intelligence (AI) algorithm.
We used whole-body F-FDG-PET/MRI scans of 33 children and young adults with lymphoma (3-30 years) to develop a convolutional neural network (CNN), which combines inputs from simulated 6.25% ultra-low-dose F-FDG PET scans and simultaneously acquired MRI scans to produce a standard-dose F-FDG PET scan. The image quality of ultra-low-dose PET scans, AI-augmented PET scans, and clinical standard PET scans was evaluated by traditional metrics in computer vision and by expert radiologists and nuclear medicine physicians, using Wilcoxon signed-rank tests and weighted kappa statistics.
The peak signal-to-noise ratio and structural similarity index were significantly higher, and the normalized root-mean-square error was significantly lower on the AI-reconstructed PET images compared to simulated 6.25% dose images (p < 0.001). Compared to the ground-truth standard-dose PET, SUV values of tumors and reference tissues were significantly higher on the simulated 6.25% ultra-low-dose PET scans as a result of image noise. After the CNN augmentation, the SUV values were recovered to values similar to the standard-dose PET. Quantitative measures of the readers' diagnostic confidence demonstrated significantly higher agreement between standard clinical scans and AI-reconstructed PET scans (kappa = 0.942) than 6.25% dose scans (kappa = 0.650).
Our CNN model could generate simulated clinical standard F-FDG PET images from ultra-low-dose inputs, while maintaining clinically relevant information in terms of diagnostic accuracy and quantitative SUV measurements.
利用一种新的人工智能(AI)算法,从超低剂量 F-FDG PET 输入图像生成儿科癌症患者的诊断 F-FDG PET 图像。
我们使用 33 例淋巴瘤儿童和青少年(3-30 岁)的全身 F-FDG-PET/MRI 扫描来开发卷积神经网络(CNN),该网络结合了来自模拟 6.25%超低剂量 F-FDG PET 扫描的输入以及同时采集的 MRI 扫描,以生成标准剂量 F-FDG PET 扫描。使用传统的计算机视觉指标和专家放射科医生和核医学医生,通过 Wilcoxon 符号秩检验和加权 Kappa 统计,评估超低剂量 PET 扫描、AI 增强 PET 扫描和临床标准 PET 扫描的图像质量。
与模拟 6.25%剂量图像相比,AI 重建的 PET 图像的峰值信噪比和结构相似性指数显著更高,归一化均方根误差显著更低(p<0.001)。与真实标准剂量 PET 相比,由于图像噪声,肿瘤和参考组织的 SUV 值在模拟的 6.25%超低剂量 PET 扫描中显著更高。经过 CNN 增强后,SUV 值恢复到与标准剂量 PET 相似的值。读者诊断信心的定量测量显示,标准临床扫描与 AI 重建的 PET 扫描之间的一致性显著更高(kappa=0.942),而不是 6.25%剂量扫描(kappa=0.650)。
我们的 CNN 模型可以从超低剂量输入生成模拟的临床标准 F-FDG PET 图像,同时在诊断准确性和定量 SUV 测量方面保持与临床相关的信息。