Farshchitabrizi Amir Hossein, Sadeghi Mohammad Hossein, Sina Sedigheh, Alavi Mehrosadat, Feshani Zahra Nasiri, Omidi Hamid
Namazi Hospital, Shiraz University of Medical Sciences, Shiraz, Iran.
Radiation Research Centre, School of Mechanical Engineering, Shiraz University, Shiraz, Iran.
Pol J Radiol. 2025 Jan 17;90:e26-e35. doi: 10.5114/pjr/196804. eCollection 2025.
Ovarian cancer is the fifth fatal cancer among women. Positron emission tomography (PET), which offers detailed metabolic data, can be effectively used for early cancer screening. However, proper attenuation correction is essential for interpreting the data obtained by this imaging modality. Computed tomography (CT) imaging is commonly performed alongside PET imaging for attenuation correction. This approach may introduce some issues in spatial alignment and registration of the images obtained by the two modalities. This study aims to perform PET image attenuation correction by using generative adversarial networks (GANs), without additional CT imaging.
The PET/CT data from 55 ovarian cancer patients were used in this study. Three GAN architectures: Conditional GAN, Wasserstein GAN, and CycleGAN, were evaluated for attenuation correction. The statistical performance of each model was assessed by calculating the mean squared error (MSE) and mean absolute error (MAE). The radiological performance assessments of the models were performed by comparing the standardised uptake value and the Hounsfield unit values of the whole body and selected organs, in the synthetic and real PET and CT images.
Based on the results, CycleGAN demonstrated effective attenuation correction and pseudo-CT generation, with high accuracy. The MAE and MSE for all images were 2.15 ± 0.34 and 3.14 ± 0.56, respectively. For CT reconstruction, such values were found to be 4.17 ± 0.96 and 5.66 ± 1.01, respectively.
The results showed the potential of deep learning in reducing radiation exposure and improving the quality of PET imaging. Further refinement and clinical validation are needed for full clinical applicability.
卵巢癌是女性中第五大致命癌症。正电子发射断层扫描(PET)可提供详细的代谢数据,能有效用于早期癌症筛查。然而,正确的衰减校正对于解释通过这种成像方式获得的数据至关重要。计算机断层扫描(CT)成像通常与PET成像一起进行以进行衰减校正。这种方法可能会在两种模式获得的图像的空间对齐和配准方面引入一些问题。本研究旨在使用生成对抗网络(GAN)进行PET图像衰减校正,而无需额外的CT成像。
本研究使用了55例卵巢癌患者的PET/CT数据。评估了三种GAN架构:条件GAN、瓦瑟斯坦GAN和循环GAN用于衰减校正。通过计算均方误差(MSE)和平均绝对误差(MAE)来评估每个模型的统计性能。通过比较合成的和真实的PET与CT图像中全身及选定器官的标准化摄取值和亨氏单位值,对模型进行放射学性能评估。
基于结果,循环GAN展示了有效的衰减校正和伪CT生成,具有高精度。所有图像的MAE和MSE分别为2.15±0.34和3.14±0.56。对于CT重建,这些值分别为4.17±0.96和5.66±1.01。
结果显示了深度学习在减少辐射暴露和提高PET成像质量方面的潜力。为实现全面的临床适用性,还需要进一步优化和临床验证。