基于人工智能的多示踪剂全身 PET 联合衰减和散射校正策略。

IF 3 2区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Hao Sun, Yanchao Huang, Debin Hu, Xiaotong Hong, Yazdan Salimi, Wenbing Lv, Hongwen Chen, Habib Zaidi, Hubing Wu, Lijun Lu
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引用次数: 0

摘要

背景:低剂量非门控 CT 通常用于全身 PET 衰减和散射校正(ASC)。然而,基于 CT 的 ASC(CT-ASC)受限于 CT 检查的辐射剂量风险、基于 CT 的伪影传播以及 PET 和 CT 之间的潜在不匹配。我们展示了在图像域对多示踪剂全身 PET 进行直接 ASC 的可行性:本研究回顾性地纳入了uEXPLORER全身PET/CT数据集,包括[18F]FDG(52例)、[18F]FAPI(46例)和[68Ga]FAPI(60例)。我们开发了一种改进的三维条件生成对抗网络(cGAN),可从非衰减和散射校正(NASC)PET图像直接估计衰减和散射校正PET图像。使用四种训练策略验证了所提出的基于三维 cGAN 的 ASC 的可行性:(1) 将三种示踪剂的成对三维 NASC 和 CT-ASC PET 图像集中到一个中央服务器(CZ-ASC)。(2)单独使用每种示踪剂的配对 3D NASC 和 CT-ASC PET 图像(DL-ASC)。(3) 使用一种示踪剂([18F]FDG)的配对 NASC 和 CT-ASC PET 图像来训练网络,而使用另外两种示踪剂进行测试,不进行微调(NFT-ASC)。(4)用另外两种示踪剂分别对(3)中的预训练网络进行微调(FT-ASC)。我们对所有网络进行了五重交叉验证训练。以 CT-ASC 为参照,通过定性和定量指标对所有 ASC 方法的性能进行了评估:结果:对于所有示踪剂,CZ-ASC、DL-ASC 和 FT-ASC 显示出与 CT-ASC 相当的视觉质量。CZ-ASC 和 DL-ASC 的归一化平均绝对误差(NMAE)分别为 8.51 ± 7.32% 和 7.36 ± 6.77%(p 18F]FDG 数据集)。在[18F]FAPI 数据集中,CZ-ASC、FT-ASC 和 DL-ASC 的归一化平均绝对误差分别为 6.44 ± 7.02%、6.55 ± 5.89% 和 7.25 ± 6.33%;在[68Ga]FAPI 数据集中,归一化平均绝对误差分别为 5.53 ± 3.99%、5.60 ± 4.02% 和 5.68 ± 4.12%。CZ-ASC、FT-ASC 和 DL-ASC 均优于 NASC(p 结论:CZ-ASC、FT-ASC 和 DL-ASC 均优于 NASC):CZ-ASC、DL-ASC 和 FT-ASC 证明了为多示踪剂全身正电子发射计算机断层扫描提供准确、稳健的 ASC 的可行性,从而减少了多余的 CT 检查对患者造成的辐射危害。在交叉示踪剂全身 PET AC 方面,CZ-ASC 和 FT-ASC 优于 DL-ASC。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial intelligence-based joint attenuation and scatter correction strategies for multi-tracer total-body PET.

Background: Low-dose ungated CT is commonly used for total-body PET attenuation and scatter correction (ASC). However, CT-based ASC (CT-ASC) is limited by radiation dose risks of CT examinations, propagation of CT-based artifacts and potential mismatches between PET and CT. We demonstrate the feasibility of direct ASC for multi-tracer total-body PET in the image domain.

Methods: Clinical uEXPLORER total-body PET/CT datasets of [18F]FDG (N = 52), [18F]FAPI (N = 46) and [68Ga]FAPI (N = 60) were retrospectively enrolled in this study. We developed an improved 3D conditional generative adversarial network (cGAN) to directly estimate attenuation and scatter-corrected PET images from non-attenuation and scatter-corrected (NASC) PET images. The feasibility of the proposed 3D cGAN-based ASC was validated using four training strategies: (1) Paired 3D NASC and CT-ASC PET images from three tracers were pooled into one centralized server (CZ-ASC). (2) Paired 3D NASC and CT-ASC PET images from each tracer were individually used (DL-ASC). (3) Paired NASC and CT-ASC PET images from one tracer ([18F]FDG) were used to train the networks, while the other two tracers were used for testing without fine-tuning (NFT-ASC). (4) The pre-trained networks of (3) were fine-tuned with two other tracers individually (FT-ASC). We trained all networks in fivefold cross-validation. The performance of all ASC methods was evaluated by qualitative and quantitative metrics using CT-ASC as the reference.

Results: CZ-ASC, DL-ASC and FT-ASC showed comparable visual quality with CT-ASC for all tracers. CZ-ASC and DL-ASC resulted in a normalized mean absolute error (NMAE) of 8.51 ± 7.32% versus 7.36 ± 6.77% (p < 0.05), outperforming NASC (p < 0.0001) in [18F]FDG dataset. CZ-ASC, FT-ASC and DL-ASC led to NMAE of 6.44 ± 7.02%, 6.55 ± 5.89%, and 7.25 ± 6.33% in [18F]FAPI dataset, and NMAE of 5.53 ± 3.99%, 5.60 ± 4.02%, and 5.68 ± 4.12% in [68Ga]FAPI dataset, respectively. CZ-ASC, FT-ASC and DL-ASC were superior to NASC (p < 0.0001) and NFT-ASC (p < 0.0001) in terms of NMAE results.

Conclusions: CZ-ASC, DL-ASC and FT-ASC demonstrated the feasibility of providing accurate and robust ASC for multi-tracer total-body PET, thereby reducing the radiation hazards to patients from redundant CT examinations. CZ-ASC and FT-ASC could outperform DL-ASC for cross-tracer total-body PET AC.

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来源期刊
EJNMMI Physics
EJNMMI Physics Physics and Astronomy-Radiation
CiteScore
6.70
自引率
10.00%
发文量
78
审稿时长
13 weeks
期刊介绍: EJNMMI Physics is an international platform for scientists, users and adopters of nuclear medicine with a particular interest in physics matters. As a companion journal to the European Journal of Nuclear Medicine and Molecular Imaging, this journal has a multi-disciplinary approach and welcomes original materials and studies with a focus on applied physics and mathematics as well as imaging systems engineering and prototyping in nuclear medicine. This includes physics-driven approaches or algorithms supported by physics that foster early clinical adoption of nuclear medicine imaging and therapy.
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