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基于深度神经网络的数字重建断层图像的合成数字荧光透视。

Deep neural network-based synthetic image digital fluoroscopy using digitally reconstructed tomography.

机构信息

National Institutes for Quantum Science and Technology, Quantum Life and Medical Science Directorate, Institute for Quantum Medical Science, Inage-ku, Chiba, 263-8555, Japan.

Corporate Research and Development Center, Toshiba Corporation, Kanagawa, 212-8582, Japan.

出版信息

Phys Eng Sci Med. 2023 Sep;46(3):1227-1237. doi: 10.1007/s13246-023-01290-z. Epub 2023 Jun 22.

Abstract

We developed a deep neural network (DNN) to generate X-ray flat panel detector (FPD) images from digitally reconstructed radiographic (DRR) images. FPD and treatment planning CT images were acquired from patients with prostate and head and neck (H&N) malignancies. The DNN parameters were optimized for FPD image synthesis. The synthetic FPD images' features were evaluated to compare to the corresponding ground-truth FPD images using mean absolute error (MAE), peak signal-to-noise ratio (PSNR), and structural similarity index measure (SSIM). The image quality of the synthetic FPD image was also compared with that of the DRR image to understand the performance of our DNN. For the prostate cases, the MAE of the synthetic FPD image was improved (= 0.12 ± 0.02) from that of the input DRR image (= 0.35 ± 0.08). The synthetic FPD image showed higher PSNRs (= 16.81 ± 1.54 dB) than those of the DRR image (= 8.74 ± 1.56 dB), while SSIMs for both images (= 0.69) were almost the same. All metrics for the synthetic FPD images of the H&N cases were improved (MAE 0.08 ± 0.03, PSNR 19.40 ± 2.83 dB, and SSIM 0.80 ± 0.04) compared to those for the DRR image (MAE 0.48 ± 0.11, PSNR 5.74 ± 1.63 dB, and SSIM 0.52 ± 0.09). Our DNN successfully generated FPD images from DRR images. This technique would be useful to increase throughput when images from two different modalities are compared by visual inspection.

摘要

我们开发了一种深度神经网络(DNN),可以从数字重建射线照相(DRR)图像生成 X 射线平板探测器(FPD)图像。FPD 和治疗计划 CT 图像是从患有前列腺和头颈部(H&N)恶性肿瘤的患者中获取的。针对 FPD 图像合成优化了 DNN 参数。使用平均绝对误差(MAE)、峰值信噪比(PSNR)和结构相似性指数度量(SSIM)评估合成 FPD 图像的特征,以与相应的真实 FPD 图像进行比较。还比较了合成 FPD 图像和 DRR 图像的图像质量,以了解我们的 DNN 的性能。对于前列腺病例,与输入的 DRR 图像(=0.35±0.08)相比,合成 FPD 图像的 MAE(=0.12±0.02)得到了改善。合成 FPD 图像的 PSNR(=16.81±1.54 dB)高于 DRR 图像的 PSNR(=8.74±1.56 dB),而两者的 SSIM(=0.69)几乎相同。与 DRR 图像(MAE 0.48±0.11,PSNR 5.74±1.63 dB,SSIM 0.52±0.09)相比,H&N 病例的合成 FPD 图像的所有指标均得到改善(MAE 0.08±0.03,PSNR 19.40±2.83 dB,SSIM 0.80±0.04)。我们的 DNN 成功地从 DRR 图像生成了 FPD 图像。当通过目视检查比较两种不同模式的图像时,该技术将有助于提高吞吐量。

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