Deep Residual Neural Network-based Standard CT Estimation from Ultra-Low Dose CT Imaging for COVID-19 Patients

Isaac Shiri, A. Akhavanallaf, Amirhossein Sanaat, Y. Salimi, D. Askari, Z. Mansouri, S. P. Shayesteh, M. Hasanian, K. Rezaei-Kalantari, A. Salahshour, S. Sandoughdaran, H. Abdollahi, H. Arabi, H. Zaidi
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引用次数: 3

Abstract

Chest computed tomography (CT) imaging was widely used for diagnosis and staging of severe acute respiratory syndrome coronavirus (SARS-CoV-2). CT can be utilized for initial diagnosis, severity scoring, serial monitoring, and patient status follow-up. For serial monitoring and follow-up, patients need to be scanned multiple times. The tendency in CT imaging is to minimize patient radiation dose. However, CT imaging is still considered as a high radiation dose modality. In this work, we proposed a deep residual neural network-based high quality (full dose) generation from ultra low-dose CT images to decrease the radiation dose for COVID-19 patients. In this multicenter study, we enrolled 1140 subjects with 313 PCR positive COVID-19 patients. The ultra low-dose CT images were analytically simulated, and then a deep residual neural network employed to estimate/generate full-dose images from the corresponding ultra-low-dose images. Various quantitative parameters, including the root mean square error (RMSE), structural similarity index (SSIM), and qualitative visual scoring were implemented to evaluate image quality of the generated CT images. The mean CTDIvol for full-dose images were 6.5 Gy (4.16-10.5 mGy), while, the simulated low-dose images were intended for a mean CTDIvol of 0.72 mGy (0.66-1.02 mGy). Regarding the external validation set (test set), the RMSE declined from 0.16±0.06 to 0.08±0.02 in low-dose and predicted standard-dose CT images, while the SSIM metric increased from 0.89±0.07 to 0.97±0.01, respectively. The highest visual scores (out of 5) were achieved by full-dose images (4.72±0.57) and predicted full-dose images (4.42±0.08). Conversely, ultra-low-dose images received the lowest score (2.78±0.9). In can be concluded that the proposed deep residual network improved image quality of ultra low-dose CT images, thus recovering their diagnostic value.
基于深度残差神经网络的新冠肺炎超低剂量CT图像标准CT估计
胸部计算机断层扫描(CT)成像被广泛用于严重急性呼吸综合征冠状病毒(SARS-CoV-2)的诊断和分期。CT可用于初始诊断、严重程度评分、连续监测和患者状态随访。对于串行监测和随访,患者需要多次扫描。CT成像的趋势是尽量减少病人的辐射剂量。然而,CT成像仍然被认为是一种高辐射剂量的方式。在这项工作中,我们提出了一种基于深度残差神经网络的超低剂量CT图像高质量(全剂量)生成方法,以降低COVID-19患者的辐射剂量。在这项多中心研究中,我们招募了1140名受试者,其中313名PCR阳性的COVID-19患者。对超低剂量CT图像进行分析模拟,然后利用深度残差神经网络从相应的超低剂量图像中估计/生成全剂量图像。采用各种定量参数,包括均方根误差(RMSE)、结构相似指数(SSIM)和定性视觉评分来评价生成的CT图像的图像质量。全剂量图像的平均CTDIvol为6.5 Gy (4.16-10.5 mGy),而模拟低剂量图像的平均CTDIvol为0.72 mGy (0.66-1.02 mGy)。对于外部验证集(测试集),低剂量和预测标准剂量CT图像的RMSE分别从0.16±0.06下降到0.08±0.02,而SSIM度量分别从0.89±0.07上升到0.97±0.01。全剂量图像的视觉评分最高(4.72±0.57),预测全剂量图像的视觉评分最高(4.42±0.08)。反之,超低剂量影像得分最低(2.78±0.9)。由此可见,所提出的深度残差网络提高了超低剂量CT图像的图像质量,恢复了其诊断价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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