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基于非局部深度图像先验的动态 PET 线性参数图像直接重建

Direct Reconstruction of Linear Parametric Images From Dynamic PET Using Nonlocal Deep Image Prior.

出版信息

IEEE Trans Med Imaging. 2022 Mar;41(3):680-689. doi: 10.1109/TMI.2021.3120913. Epub 2022 Mar 2.

DOI:10.1109/TMI.2021.3120913
PMID:34652998
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC8956450/
Abstract

Direct reconstruction methods have been developed to estimate parametric images directly from the measured PET sinograms by combining the PET imaging model and tracer kinetics in an integrated framework. Due to limited counts received, signal-to-noise-ratio (SNR) and resolution of parametric images produced by direct reconstruction frameworks are still limited. Recently supervised deep learning methods have been successfully applied to medical imaging denoising/reconstruction when large number of high-quality training labels are available. For static PET imaging, high-quality training labels can be acquired by extending the scanning time. However, this is not feasible for dynamic PET imaging, where the scanning time is already long enough. In this work, we proposed an unsupervised deep learning framework for direct parametric reconstruction from dynamic PET, which was tested on the Patlak model and the relative equilibrium Logan model. The training objective function was based on the PET statistical model. The patient's anatomical prior image, which is readily available from PET/CT or PET/MR scans, was supplied as the network input to provide a manifold constraint, and also utilized to construct a kernel layer to perform non-local feature denoising. The linear kinetic model was embedded in the network structure as a 1 ×1 ×1 convolution layer. Evaluations based on dynamic datasets of F-FDG and C-PiB tracers show that the proposed framework can outperform the traditional and the kernel method-based direct reconstruction methods.

摘要

直接重建方法已经被开发出来,可以通过将 PET 成像模型和示踪剂动力学结合在一个集成框架中,直接从测量的 PET 正弦图中估计参数图像。由于接收到的计数有限,直接重建框架产生的参数图像的信噪比 (SNR) 和分辨率仍然有限。最近,当有大量高质量的训练标签时,监督深度学习方法已成功应用于医学图像去噪/重建。对于静态 PET 成像,可以通过延长扫描时间来获取高质量的训练标签。然而,对于动态 PET 成像来说,这是不可行的,因为扫描时间已经足够长了。在这项工作中,我们提出了一种用于从动态 PET 进行直接参数重建的无监督深度学习框架,该框架在 Patlak 模型和相对平衡 Logan 模型上进行了测试。训练目标函数基于 PET 统计模型。患者的解剖先验图像,可从 PET/CT 或 PET/MR 扫描中获得,作为网络输入提供流形约束,并用于构建核层执行非局部特征去噪。线性动力学模型作为 1×1×1 卷积层嵌入网络结构中。基于 F-FDG 和 C-PiB 示踪剂的动态数据集的评估表明,所提出的框架可以优于传统的和基于核方法的直接重建方法。

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