在肾脏单光子发射计算机断层扫描中生成基于深度学习的衰减图。

IF 3 2区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Kyounghyoun Kwon, Dongkyu Oh, Ji Hye Kim, Jihyung Yoo, Won Woo Lee
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引用次数: 0

摘要

背景:准确的衰减校正(AC)在核医学中至关重要,尤其是对于定量单光子发射计算机断层扫描/计算机断层扫描(SPECT/CT)成像。本研究旨在利用深度学习从SPECT数据中生成合成衰减图(μ图),从而减少辐射暴露并消除对CT扫描的需求,在肾脏SPECT成像中建立一种无CT量化技术:使用改进的深度学习三维 U-Net 对 1000 个 Tc-99m DTPA SPECT/CT 扫描数据集进行了训练(n = 800)、验证(n = 100)和测试(n = 100)分析。研究调查了原发辐射和散射 SPECT 数据的使用、归一化方法、损失函数优化和上采样技术,以优化 μ 地图的生成。研究还评估了从SPECT信号生成μ图所特有的棋盘伪影问题,以及碘造影剂的影响。在原发SPECT成像中加入散射SPECT、对数最大值归一化、绝对差值损耗(L1)和三倍绝对梯度差值损耗(3 × LGDL)的组合以及最近邻插值显著提高了人工智能生成μ图的性能(p < 0.00001)。最近邻插值技术有效消除了棋盘伪影。所开发的人工智能算法生成的μ图对碘对比度的存在呈中性,对定量 SPECT 测量(如肾小球滤过率)的对比度影响可忽略不计。通过过渡到基于 AI 的无 CT SPECT 成像,辐射暴露可能减少 45.3% 到 78.8%:该研究成功开发并优化了一种深度学习算法,用于生成肾脏SPECT图像中的合成μ图,证明了从传统SPECT/CT过渡到无CT SPECT成像进行GFR测量的潜力。这一进步标志着核医学在提高患者安全和效率方面迈出了重要一步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep-learning-based attenuation map generation in kidney single photon emission computed tomography.

Background: Accurate attenuation correction (AC) is vital in nuclear medicine, particularly for quantitative single-photon emission computed tomography/computed tomography (SPECT/CT) imaging. This study aimed to establish a CT-free quantification technology in kidney SPECT imaging using deep learning to generate synthetic attenuation maps (μ-maps) from SPECT data, thereby reducing radiation exposure and eliminating the need for CT scans.

Results: A dataset of 1000 Tc-99m DTPA SPECT/CT scans was analyzed for training (n = 800), validation (n = 100), and testing (n = 100) using a modified 3D U-Net for deep learning. The study investigated the use of primary emission and scattering SPECT data, normalization methods, loss function optimization, and up-sampling techniques for optimal μ-map generation. The problem of checkerboard artifacts, unique to μ-map generation from SPECT signals, and the effects of iodine contrast media were evaluated. The addition of scattering SPECT to primary emission SPECT imaging, logarithmic maximum normalization, the combination of absolute difference loss (L1) and three times the absolute gradient difference loss (3 × LGDL), and the nearest-neighbor interpolation significantly enhanced AI performance in μ-map generation (p < 0.00001). Checkerboard artifacts were effectively eliminated using the nearest-neighbor interpolation technique. The developed AI algorithm produced μ-maps neutral to the presence of iodine contrast and showed negligible contrast effects on quantitative SPECT measurement, such as glomerular filtration rate (GFR). The potential reduction in radiation exposure by transitioning to AI-based CT-free SPECT imaging ranges from 45.3 to 78.8%.

Conclusion: The study successfully developed and optimized a deep learning algorithm for generating synthetic μ-maps in kidney SPECT images, demonstrating the potential to transition from conventional SPECT/CT to CT-free SPECT imaging for GFR measurement. This advancement represents a significant step towards enhancing patient safety and efficiency in nuclear medicine.

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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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