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基于深度学习的 PET/CT 脑淀粉样变扫描时间缩短的可行性研究

PET/CT for Brain Amyloid: A Feasibility Study for Scan Time Reduction by Deep Learning.

机构信息

From the Department of Nuclear Medicine, Yonsei University College of Medicine.

Department of Electronic Engineering, Sogang University, Seoul, Korea.

出版信息

Clin Nucl Med. 2021 Mar 1;46(3):e133-e140. doi: 10.1097/RLU.0000000000003471.

Abstract

PURPOSE

This study was to develop a convolutional neural network (CNN) model with a residual learning framework to predict the full-time 18F-florbetaben (18F-FBB) PET/CT images from corresponding short-time scans.

METHODS

In this retrospective study, we enrolled 22 cognitively normal subjects, 20 patients with mild cognitive impairment, and 42 patients with Alzheimer disease. Twenty minutes of list-mode PET/CT data were acquired and reconstructed as the ground-truth images. The short-time scans were made in either 1, 2, 3, 4, or 5 minutes. The CNN with a residual learning framework was implemented to predict the ground-truth images of 18F-FBB PET/CT using short-time scans with either a single-slice or a 3-slice input layer. Model performance was evaluated by quantitative and qualitative analyses. Additionally, we quantified the amyloid load in the ground-truth and predicted images using the SUV ratio.

RESULTS

On quantitative analyses, with increasing scan time, the normalized root-mean-squared error and the SUV ratio differences between predicted and ground-truth images gradually decreased, and the peak signal-to-noise ratio increased. On qualitative analysis, the predicted images from the 3-slice CNN model showed better image quality than those from the single-slice model. The 3-slice CNN model with a short-time scan of at least 2 minutes achieved comparable, quantitative prediction of full-time 18F-FBB PET/CT images, with adequate to excellent image quality.

CONCLUSIONS

The 3-slice CNN model with a residual learning framework is promising for the prediction of full-time 18F-FBB PET/CT images from short-time scans.

摘要

目的

本研究旨在开发一种具有残差学习框架的卷积神经网络(CNN)模型,以从相应的短时间扫描中预测全时 18F-氟比他滨(18F-FBB)PET/CT 图像。

方法

在这项回顾性研究中,我们纳入了 22 名认知正常的受试者、20 名轻度认知障碍患者和 42 名阿尔茨海默病患者。采集 20 分钟的列表模式 PET/CT 数据,并重建为真实图像。进行短时间扫描,时间分别为 1、2、3、4 或 5 分钟。使用具有残差学习框架的 CNN 实现,使用单层面或 3 层面输入层的短时间扫描预测 18F-FBB PET/CT 的真实图像。通过定量和定性分析评估模型性能。此外,我们使用 SUV 比定量地评估了真实和预测图像中的淀粉样蛋白负荷。

结果

在定量分析中,随着扫描时间的增加,预测图像与真实图像之间的归一化均方根误差和 SUV 比差异逐渐减小,而峰值信噪比增加。在定性分析中,3 层面 CNN 模型预测的图像质量优于单层面模型。至少 2 分钟的短时间扫描的 3 层面 CNN 模型可以实现全时 18F-FBB PET/CT 图像的可比较、定量预测,同时具有足够到优秀的图像质量。

结论

具有残差学习框架的 3 层面 CNN 模型有望从短时间扫描中预测全时 18F-FBB PET/CT 图像。

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