Department of Radiology and Imaging Sciences, University of Utah, 30 N. 1900 E. #1A71, Salt Lake City, UT, 84132-2140, USA.
Future Design Lab, New Concept Design, Global Strategic Challenge Center, Hamamatsu Photonics K.K, 5000, Hirakuchi, Hamakita-ku, Hamamatsu-City, 434-8601, Japan.
Ann Nucl Med. 2022 Oct;36(10):913-921. doi: 10.1007/s12149-022-01775-z. Epub 2022 Aug 1.
While the use of biomarkers for the detection of early and preclinical Alzheimer's Disease has become essential, the need to wait for over an hour after injection to obtain sufficient image quality can be challenging for patients with suspected dementia and their caregivers. This study aimed to develop an image-based deep-learning technique to generate delayed uptake patterns of amyloid positron emission tomography (PET) images using only early-phase images obtained from 0-20 min after radiotracer injection.
We prepared pairs of early and delayed [C]PiB dynamic images from 253 patients (cognitively normal n = 32, fronto-temporal dementia n = 39, mild cognitive impairment n = 19, Alzheimer's disease n = 163) as a training dataset. The neural network was trained with the early images as the input, and the output was the corresponding delayed image. A U-net convolutional neural network (CNN) and a conditional generative adversarial network (C-GAN) were used for the deep-learning architecture and the data augmentation methods, respectively. Then, an independent test data set consisting of early-phase amyloid PET images (n = 19) was used to generate corresponding delayed images using the trained network. Two nuclear medicine physicians interpreted the actual delayed images and predicted delayed images for amyloid positivity. In addition, the concordance of the actual delayed and predicted delayed images was assessed statistically.
The concordance of amyloid positivity between the actual versus AI-predicted delayed images was 79%(κ = 0.60) and 79% (κ = 0.59) for each physician, respectively. In addition, the physicians' agreement rate was at 89% (κ = 0.79) when the same image was interpreted. And, the actual versus AI-predicted delayed images were not readily distinguishable (correct answer rate, 55% and 47% for each physician, respectively). The statistical comparison of the actual versus the predicted delated images indicated that the peak signal-to-noise ratio (PSNR) was 21.8 dB ± 2.2 dB, and the structural similarity index (SSIM) was 0.45 ± 0.04.
This study demonstrates the feasibility of an image-based deep-learning framework to predict delayed patterns of Amyloid PET uptake using only the early phase images. This AI-based image generation method has the potential to reduce scan time for amyloid PET and increase the patient throughput, without sacrificing diagnostic accuracy for amyloid positivity.
虽然使用生物标志物来检测早期和临床前阿尔茨海默病已经变得至关重要,但对于疑似痴呆症的患者及其护理人员来说,需要在注射后等待一个多小时才能获得足够的图像质量,这可能具有挑战性。本研究旨在开发一种基于图像的深度学习技术,使用仅在放射性示踪剂注射后 0-20 分钟获得的早期相图像生成淀粉样蛋白正电子发射断层扫描 (PET) 图像的延迟摄取模式。
我们从 253 名患者(认知正常 n=32、额颞叶痴呆 n=39、轻度认知障碍 n=19、阿尔茨海默病 n=163)中准备了早期和延迟[C]PiB 动态图像对作为训练数据集。神经网络以早期图像作为输入进行训练,输出为相应的延迟图像。使用 U 型网络卷积神经网络(CNN)和条件生成对抗网络(C-GAN)分别作为深度学习架构和数据增强方法。然后,使用训练好的网络从独立的早期淀粉样蛋白 PET 图像测试数据集(n=19)生成相应的延迟图像。两位核医学医师对实际的延迟图像和预测的延迟图像进行淀粉样蛋白阳性的解读。此外,还对实际的延迟图像和预测的延迟图像进行了统计学上的一致性评估。
两名医师对实际与 AI 预测的延迟图像的淀粉样蛋白阳性的一致性分别为 79%(κ=0.60)和 79%(κ=0.59)。此外,当同一幅图像被解释时,医师的一致性率为 89%(κ=0.79)。并且,实际的与 AI 预测的延迟图像不容易区分(每位医师的正确答案率分别为 55%和 47%)。对实际的与预测的延迟图像的统计学比较表明,峰值信噪比(PSNR)为 21.8 dB±2.2 dB,结构相似性指数(SSIM)为 0.45±0.04。
本研究证明了基于图像的深度学习框架使用仅早期相图像预测淀粉样蛋白 PET 摄取的延迟模式是可行的。这种基于人工智能的图像生成方法有可能减少淀粉样蛋白 PET 的扫描时间,增加患者吞吐量,而不会牺牲淀粉样蛋白阳性的诊断准确性。