Yagi Soya, Usui Keisuke, Ogawa Koichi
Department of Applied Informatics, Graduate School of Science and Engineering, Hosei University, 3-7-2 Kajinocho, Koganei, Tokyo, 184-0002, Japan.
Department of Radiological Technology, Faculty of Health Science, Juntendo University, 1-5-3 Yushima, Bunkyo-ku, Tokyo, 113-0034, Japan.
Radiol Phys Technol. 2025 Apr 4. doi: 10.1007/s12194-025-00896-0.
The aim of this study is to remove scattered photons and beam hardening effect in cone beam CT (CBCT) images and make an image available for treatment planning. To remove scattered photons and beam hardening effect, a convolutional neural network (CNN) was used, and trained with distorted projection data including scattered photons and beam hardening effect and supervised projection data calculated with monochromatic X-rays. The number of training projection data was 17,280 with data augmentation and that of test projection data was 540. The performance of the CNN was investigated in terms of the number of photons in the projection data used in the training of the network. Projection data of pelvic CBCT images (32 cases) were calculated with a Monte Carlo simulation with six different count levels ranging from 0.5 to 3 million counts/pixel. For the evaluation of corrected images, the peak signal-to-noise ratio (PSNR), the structural similarity index measure (SSIM), and the sum of absolute difference (SAD) were used. The results of simulations showed that the CNN could effectively remove scattered photons and beam hardening effect, and the PSNR, the SSIM, and the SAD significantly improved. It was also found that the number of photons in the training projection data was important in correction accuracy. Furthermore, a CNN model trained with projection data with a sufficient number of photons could yield good performance even though a small number of photons were used in the input projection data.
本研究的目的是去除锥束CT(CBCT)图像中的散射光子和束硬化效应,并生成可用于治疗计划的图像。为了去除散射光子和束硬化效应,使用了卷积神经网络(CNN),并用包括散射光子和束硬化效应的失真投影数据以及用单色X射线计算的监督投影数据进行训练。训练投影数据的数量为17280(采用数据增强),测试投影数据的数量为540。根据网络训练中使用的投影数据中的光子数量来研究CNN的性能。利用蒙特卡罗模拟计算了32例盆腔CBCT图像的投影数据,计数水平有6种,范围从0.5到300万计数/像素。为了评估校正后的图像,使用了峰值信噪比(PSNR)、结构相似性指数测量(SSIM)和绝对差之和(SAD)。模拟结果表明,CNN能够有效去除散射光子和束硬化效应,PSNR、SSIM和SAD均有显著改善。还发现训练投影数据中的光子数量对校正精度很重要。此外,即使输入投影数据中使用的光子数量较少,用具有足够光子数量的投影数据训练的CNN模型也能产生良好的性能。