Cone Beam Computed Tomography Image-Quality Improvement Using "One-Shot" Super-resolution.

Takumasa Tsuji, Soichiro Yoshida, Mitsuki Hommyo, Asuka Oyama, Shinobu Kumagai, Kenshiro Shiraishi, Jun'ichi Kotoku
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Abstract

Cone beam computed tomography (CBCT) images are convenient representations for obtaining information about patients' internal organs, but their lower image quality than those of treatment planning CT images constitutes an important shortcoming. Several proposed CBCT image-quality improvement methods based on deep learning require large amounts of training data. Our newly developed model using a super-resolution method, "one-shot" super-resolution (OSSR) based on the "zero-shot" super-resolution method, requires only small amounts of training data to improve CBCT image quality using only the target CBCT image and the paired treatment planning CT image. For this study, pelvic CBCT images and treatment planning CT images of 30 prostate cancer patients were used. We calculated the root mean squared error (RMSE), peak signal-to-noise ratio (PSNR), and structural similarity (SSIM) to evaluate image-quality improvement and normalized mutual information (NMI) as a quantitative evaluation of positional accuracy. Our proposed method can improve CBCT image quality without requiring large amounts of training data. After applying our proposed method, the resulting RMSE, PSNR, SSIM, and NMI between the CBCT images and the treatment planning CT images were as much as 0.86, 1.05, 1.03, and 1.31 times better than those obtained without using our proposed method. By comparison, CycleGAN exhibited values of 0.91, 1.03, 1.02, and 1.16. The proposed method achieved performance equivalent to that of CycleGAN, which requires images from approximately 30 patients for training. Findings demonstrated improvement of CBCT image quality using only the target CBCT images and the paired treatment planning CT images.

利用“一次性”超分辨率提高锥束计算机断层成像质量。
圆锥束CT (Cone beam computed tomography, CBCT)图像是获取患者内脏器官信息的方便表征,但其图像质量低于治疗计划CT图像是一个重要缺陷。目前提出的几种基于深度学习的CBCT图像质量改进方法需要大量的训练数据。我们新开发的模型使用了一种超分辨率方法,即基于“零镜头”超分辨率方法的“单镜头”超分辨率(OSSR),只需要少量的训练数据,就可以仅使用目标CBCT图像和配对的治疗计划CT图像来提高CBCT图像质量。本研究使用了30例前列腺癌患者的盆腔CBCT图像和治疗计划CT图像。我们计算了均方根误差(RMSE)、峰值信噪比(PSNR)和结构相似性(SSIM)来评估图像质量改善和归一化互信息(NMI)作为定位精度的定量评估。我们提出的方法可以在不需要大量训练数据的情况下提高CBCT图像质量。应用本文方法后,CBCT图像与治疗计划CT图像的RMSE、PSNR、SSIM和NMI分别比未应用本文方法的RMSE、PSNR、SSIM和NMI分别提高0.86、1.05、1.03和1.31倍。相比之下,CycleGAN的值分别为0.91、1.03、1.02和1.16。所提出的方法达到了与CycleGAN相当的性能,CycleGAN需要来自大约30名患者的图像进行训练。结果表明,仅使用目标CBCT图像和配对治疗计划CT图像可以改善CBCT图像质量。
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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