Chen Xiongchao, Liu Chi
Department of Biomedical Engineering, Yale University, New Haven, CT, USA.
Department of Radiology and Biomedical Imaging, Yale University, PO Box 208048, New Haven, CT, 06520, USA.
J Nucl Cardiol. 2023 Oct;30(5):1859-1878. doi: 10.1007/s12350-022-03007-3. Epub 2022 Jun 9.
Attenuation correction (AC) is essential for quantitative analysis and clinical diagnosis of single-photon emission computed tomography (SPECT) and positron emission tomography (PET). In clinical practice, computed tomography (CT) is utilized to generate attenuation maps (μ-maps) for AC of hybrid SPECT/CT and PET/CT scanners. However, CT-based AC methods frequently produce artifacts due to CT artifacts and misregistration of SPECT-CT and PET-CT scans. Segmentation-based AC methods using magnetic resonance imaging (MRI) for PET/MRI scanners are inaccurate and complicated since MRI does not contain direct information of photon attenuation. Computational AC methods for SPECT and PET estimate attenuation coefficients directly from raw emission data, but suffer from low accuracy, cross-talk artifacts, high computational complexity, and high noise level. The recently evolving deep-learning-based methods have shown promising results in AC of SPECT and PET, which can be generally divided into two categories: indirect and direct strategies. Indirect AC strategies apply neural networks to transform emission, transmission, or MR images into synthetic μ-maps or CT images which are then incorporated into AC reconstruction. Direct AC strategies skip the intermediate steps of generating μ-maps or CT images and predict AC SPECT or PET images from non-attenuation-correction (NAC) SPECT or PET images directly. These deep-learning-based AC methods show comparable and even superior performance to non-deep-learning methods. In this article, we first discussed the principles and limitations of non-deep-learning AC methods, and then reviewed the status and prospects of deep-learning-based methods for AC of SPECT and PET.
衰减校正(AC)对于单光子发射计算机断层扫描(SPECT)和正电子发射断层扫描(PET)的定量分析和临床诊断至关重要。在临床实践中,计算机断层扫描(CT)用于生成混合SPECT/CT和PET/CT扫描仪AC的衰减图(μ图)。然而,基于CT的AC方法经常由于CT伪影以及SPECT-CT和PET-CT扫描的配准错误而产生伪影。用于PET/MRI扫描仪的基于磁共振成像(MRI)的基于分割的AC方法不准确且复杂,因为MRI不包含光子衰减的直接信息。用于SPECT和PET的计算AC方法直接从原始发射数据估计衰减系数,但存在精度低、串扰伪影、计算复杂度高和噪声水平高的问题。最近发展的基于深度学习的方法在SPECT和PET的AC中显示出有前景的结果,这些方法通常可分为两类:间接策略和直接策略。间接AC策略应用神经网络将发射、透射或MR图像转换为合成μ图或CT图像,然后将其纳入AC重建。直接AC策略跳过生成μ图或CT图像的中间步骤,直接从非衰减校正(NAC)SPECT或PET图像预测AC SPECT或PET图像。这些基于深度学习的AC方法显示出与非深度学习方法相当甚至更优的性能。在本文中,我们首先讨论了非深度学习AC方法的原理和局限性,然后回顾了基于深度学习的SPECT和PET AC方法现状和前景。