• 文献检索
  • 文档翻译
  • 深度研究
  • 学术资讯
  • Suppr Zotero 插件Zotero 插件
  • 邀请有礼
  • 套餐&价格
  • 历史记录
应用&插件
Suppr Zotero 插件Zotero 插件浏览器插件Mac 客户端Windows 客户端微信小程序
定价
高级版会员购买积分包购买API积分包
服务
文献检索文档翻译深度研究API 文档MCP 服务
关于我们
关于 Suppr公司介绍联系我们用户协议隐私条款
关注我们

Suppr 超能文献

核心技术专利:CN118964589B侵权必究
粤ICP备2023148730 号-1Suppr @ 2026

文献检索

告别复杂PubMed语法,用中文像聊天一样搜索,搜遍4000万医学文献。AI智能推荐,让科研检索更轻松。

立即免费搜索

文件翻译

保留排版,准确专业,支持PDF/Word/PPT等文件格式,支持 12+语言互译。

免费翻译文档

深度研究

AI帮你快速写综述,25分钟生成高质量综述,智能提取关键信息,辅助科研写作。

立即免费体验

基于模型的深度学习PET图像重建:使用前向-后向分裂期望最大化算法

Model-Based Deep Learning PET Image Reconstruction Using Forward-Backward Splitting Expectation-Maximization.

作者信息

Mehranian Abolfazl, Reader Andrew J

机构信息

School of Biomedical Engineering and Imaging Sciences, Department of Biomedical Engineering, King's College London, London SE1 7EH, U.K.

出版信息

IEEE Trans Radiat Plasma Med Sci. 2020 Jun 23;5(1):54-64. doi: 10.1109/TRPMS.2020.3004408.

DOI:10.1109/TRPMS.2020.3004408
PMID:34056150
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC7610859/
Abstract

We propose a forward-backward splitting algorithm to integrate deep learning into maximum- (MAP) positron emission tomography (PET) image reconstruction. The MAP reconstruction is split into regularization, expectation-maximization (EM), and a weighted fusion. For regularization, the use of either a Bowsher prior (using Markov-random fields) or a residual learning unit (using convolutional-neural networks) were considered. For the latter, our proposed forward-backward splitting EM (FBSEM), accelerated with ordered subsets (OS), was unrolled into a recurrent-neural network in which network parameters (including regularization strength) are shared across all states and learned during PET reconstruction. Our network was trained and evaluated using PET-only (FBSEM-p) and PET-MR (FBSEM-pm) datasets for low-dose simulations and short-duration brain imaging. It was compared to OSEM, Bowsher MAPEM, and a post-reconstruction U-Net denoising trained on the same PET-only (Unet-p) or PET-MR (Unet-pm) datasets. For simulations, FBSEM-p(m) and Unet-p(m) nets achieved a comparable performance, on average, 14.4% and 13.4% normalized root-mean square error (NRMSE), respectively; and both outperformed OSEM and MAPEM methods (with 20.7% and 17.7% NRMSE, respectively). For datasets, FBSEM-p(m), Unet-p(m), MAPEM, and OSEM methods achieved average root-sum-of-squared errors of 3.9%, 5.7%, 5.9%, and 7.8% in different brain regions, respectively. In conclusion, the studied U-Net denoising method achieved a comparable performance to a representative implementation of the FBSEM net.

摘要

我们提出了一种前向-后向分裂算法,将深度学习集成到最大后验概率(MAP)正电子发射断层扫描(PET)图像重建中。MAP重建被分解为正则化、期望最大化(EM)和加权融合。对于正则化,考虑使用鲍舍尔先验(使用马尔可夫随机场)或残差学习单元(使用卷积神经网络)。对于后者,我们提出的前向-后向分裂EM(FBSEM)算法,通过有序子集(OS)加速,被展开为一个递归神经网络,其中网络参数(包括正则化强度)在所有状态之间共享,并在PET重建过程中进行学习。我们的网络使用仅PET(FBSEM-p)和PET-MR(FBSEM-pm)数据集进行训练和评估,用于低剂量模拟和短时间脑成像。将其与OSEM、鲍舍尔MAPEM以及在相同的仅PET(Unet-p)或PET-MR(Unet-pm)数据集上训练的重建后U-Net去噪方法进行比较。对于模拟,FBSEM-p(m)和Unet-p(m)网络平均分别实现了14.4%和13.4%的归一化均方根误差(NRMSE),性能相当;并且两者均优于OSEM和MAPEM方法(分别为20.7%和17.7%的NRMSE)。对于数据集,FBSEM-p(m)、Unet-p(m)、MAPEM和OSEM方法在不同脑区分别实现了3.9%、5.7%、5.9%和7.8%的平均均方根误差。总之,所研究的U-Net去噪方法与FBSEM网络的代表性实现具有相当的性能。

相似文献

1
Model-Based Deep Learning PET Image Reconstruction Using Forward-Backward Splitting Expectation-Maximization.基于模型的深度学习PET图像重建:使用前向-后向分裂期望最大化算法
IEEE Trans Radiat Plasma Med Sci. 2020 Jun 23;5(1):54-64. doi: 10.1109/TRPMS.2020.3004408.
2
Image reconstruction using UNET-transformer network for fast and low-dose PET scans.基于 UNET-Transformer 网络的快速低剂量 PET 扫描图像重建。
Comput Med Imaging Graph. 2023 Dec;110:102315. doi: 10.1016/j.compmedimag.2023.102315. Epub 2023 Nov 23.
3
Memory-Efficient Training for Fully Unrolled Deep Learned PET Image Reconstruction with Iteration-Dependent Targets.基于迭代相关目标的全展开深度学习PET图像重建的内存高效训练
IEEE Trans Radiat Plasma Med Sci. 2022 May;6(5):552-563. doi: 10.1109/TRPMS.2021.3101947. Epub 2021 Aug 2.
4
Intercomparison of MR-informed PET image reconstruction methods.MR 信息引导的 PET 图像重建方法的比较。
Med Phys. 2019 Nov;46(11):5055-5074. doi: 10.1002/mp.13812. Epub 2019 Oct 4.
5
Micro-Networks for Robust MR-Guided Low Count PET Imaging.用于稳健的磁共振引导低计数正电子发射断层成像的微网络
IEEE Trans Radiat Plasma Med Sci. 2020 Apr 8;5(2):202-212. doi: 10.1109/TRPMS.2020.2986414. eCollection 2021 Mar.
6
Comparison of deep learning-based denoising methods in cardiac SPECT.基于深度学习的心脏单光子发射计算机断层扫描去噪方法比较
EJNMMI Phys. 2023 Feb 8;10(1):9. doi: 10.1186/s40658-023-00531-0.
7
Clinical and Deep-Learned Evaluation of MR-Guided Self-Supervised PET Reconstruction.磁共振引导下自监督正电子发射断层显像重建的临床与深度学习评估
IEEE Trans Radiat Plasma Med Sci. 2025 Mar;9(3):337-346. doi: 10.1109/TRPMS.2024.3496779.
8
Comparison of post reconstruction- and reconstruction-based deep learning denoising methods in cardiac SPECT.基于重建的和基于重建后的深度学习去噪方法在心脏 SPECT 中的比较。
Biomed Phys Eng Express. 2023 Sep 13;9(6). doi: 10.1088/2057-1976/acf66c.
9
Deep learning generation of preclinical positron emission tomography (PET) images from low-count PET with task-based performance assessment.基于任务的性能评估的从低计数正电子发射断层扫描(PET)数据深度学习生成临床前 PET 图像。
Med Phys. 2024 Jun;51(6):4324-4339. doi: 10.1002/mp.17105. Epub 2024 May 6.
10
Image reconstruction for positron emission tomography based on patch-based regularization and dictionary learning.基于基于补丁正则化和字典学习的正电子发射断层成像图像重建。
Med Phys. 2019 Nov;46(11):5014-5026. doi: 10.1002/mp.13804. Epub 2019 Sep 20.

引用本文的文献

1
Innovations in clinical PET image reconstruction: advances in Bayesian penalized likelihood algorithm and deep learning.临床正电子发射断层显像(PET)图像重建的创新:贝叶斯惩罚似然算法与深度学习的进展
Ann Nucl Med. 2025 Jul 18. doi: 10.1007/s12149-025-02088-7.
2
Likelihood-Scheduled Score-Based Generative Modeling for Fully 3D PET Image Reconstruction.基于似然调度分数的全三维PET图像重建生成模型
IEEE Trans Med Imaging. 2025 Jun 4;PP:1. doi: 10.1109/TMI.2025.3576483.
3
Energy estimation methods for positron emission tomography detectors composed of multiple scintillators.

本文引用的文献

1
Machine Learning in PET: from Photon Detection to Quantitative Image Reconstruction.正电子发射断层扫描中的机器学习:从光子探测到定量图像重建
Proc IEEE Inst Electr Electron Eng. 2020 Jan;108(1):51-68. doi: 10.1109/JPROC.2019.2936809. Epub 2019 Sep 19.
2
PET Image Denoising Using a Deep Neural Network Through Fine Tuning.通过微调深度学习网络实现PET图像去噪
IEEE Trans Radiat Plasma Med Sci. 2019 Mar;3(2):153-161. doi: 10.1109/TRPMS.2018.2877644. Epub 2018 Oct 23.
3
PET image denoising using unsupervised deep learning.使用无监督深度学习进行 PET 图像去噪。
用于由多个闪烁体组成的正电子发射断层扫描探测器的能量估计方法。
Biomed Eng Lett. 2025 Mar 4;15(3):489-496. doi: 10.1007/s13534-025-00464-w. eCollection 2025 May.
4
Deep learning image enhancement algorithms in PET/CT imaging: a phantom and sarcoma patient radiomic evaluation.PET/CT成像中的深度学习图像增强算法:体模和肉瘤患者的影像组学评估
Eur J Nucl Med Mol Imaging. 2025 Feb 27. doi: 10.1007/s00259-025-07149-7.
5
Clinical and Deep-Learned Evaluation of MR-Guided Self-Supervised PET Reconstruction.磁共振引导下自监督正电子发射断层显像重建的临床与深度学习评估
IEEE Trans Radiat Plasma Med Sci. 2025 Mar;9(3):337-346. doi: 10.1109/TRPMS.2024.3496779.
6
Deep learning-based time-of-flight (ToF) enhancement of non-ToF PET scans for different radiotracers.基于深度学习的非飞行时间(ToF)正电子发射断层扫描(PET)扫描对不同放射性示踪剂的飞行时间(ToF)增强
Eur J Nucl Med Mol Imaging. 2025 Feb 18. doi: 10.1007/s00259-025-07119-z.
7
Strategies for mitigating inter-crystal scattering effects in positron emission tomography: a comprehensive review.正电子发射断层扫描中减轻晶体间散射效应的策略:全面综述
Biomed Eng Lett. 2024 Sep 17;14(6):1243-1258. doi: 10.1007/s13534-024-00427-7. eCollection 2024 Nov.
8
A Review on Low-Dose Emission Tomography Post-Reconstruction Denoising with Neural Network Approaches.基于神经网络方法的低剂量发射断层成像重建后去噪综述
IEEE Trans Radiat Plasma Med Sci. 2024 Apr;8(4):333-347. doi: 10.1109/trpms.2023.3349194. Epub 2024 Jan 2.
9
PARALLELPROJ-an open-source framework for fast calculation of projections in tomography.PARALLELPROJ——一种用于断层扫描投影快速计算的开源框架。
Front Nucl Med. 2024 Jan 8;3:1324562. doi: 10.3389/fnume.2023.1324562. eCollection 2023.
10
Reconstruction-free positron emission imaging: Fact or fiction?无需重建的正电子发射成像:事实还是虚构?
Front Nucl Med. 2022 Jul 28;2:936091. doi: 10.3389/fnume.2022.936091. eCollection 2022.
Eur J Nucl Med Mol Imaging. 2019 Dec;46(13):2780-2789. doi: 10.1007/s00259-019-04468-4. Epub 2019 Aug 29.
4
An investigation of quantitative accuracy for deep learning based denoising in oncological PET.基于深度学习的肿瘤 PET 去噪定量准确性研究。
Phys Med Biol. 2019 Aug 21;64(16):165019. doi: 10.1088/1361-6560/ab3242.
5
DeepPET: A deep encoder-decoder network for directly solving the PET image reconstruction inverse problem.深度正电子发射断层扫描(DeepPET):一种用于直接解决正电子发射断层扫描图像重建逆问题的深度编解码器网络。
Med Image Anal. 2019 May;54:253-262. doi: 10.1016/j.media.2019.03.013. Epub 2019 Mar 30.
6
Higher SNR PET image prediction using a deep learning model and MRI image.基于深度学习模型和 MRI 图像的高信噪比 PET 图像预测。
Phys Med Biol. 2019 May 23;64(11):115004. doi: 10.1088/1361-6560/ab0dc0.
7
PET Image Reconstruction Using Deep Image Prior.基于深度图像先验的 PET 图像重建。
IEEE Trans Med Imaging. 2019 Jul;38(7):1655-1665. doi: 10.1109/TMI.2018.2888491. Epub 2018 Dec 19.
8
Spatially-Compact MR-Guided Kernel EM for PET Image Reconstruction.用于PET图像重建的空间紧凑式磁共振引导内核期望最大化算法
IEEE Trans Radiat Plasma Med Sci. 2018 Sep;2(5):470-482. doi: 10.1109/TRPMS.2018.2844559. Epub 2018 Jun 6.
9
Iterative PET Image Reconstruction Using Convolutional Neural Network Representation.基于卷积神经网络表示的迭代 PET 图像重建。
IEEE Trans Med Imaging. 2019 Mar;38(3):675-685. doi: 10.1109/TMI.2018.2869871. Epub 2018 Sep 12.
10
MoDL: Model-Based Deep Learning Architecture for Inverse Problems.MoDL:基于模型的深度学习架构用于反问题。
IEEE Trans Med Imaging. 2019 Feb;38(2):394-405. doi: 10.1109/TMI.2018.2865356. Epub 2018 Aug 13.