Department of Radiology, Kasugai-CyberKnife Rehabilitation Hospital, Fuefuki-city, Yamanashi, Japan.
Department of Radiology, University of Yamanashi, Chuo-city, Yamanashi, Japan.
J Appl Clin Med Phys. 2024 Jan;25(1):e14212. doi: 10.1002/acm2.14212. Epub 2023 Nov 20.
Lung tumor tracking during stereotactic radiotherapy with the CyberKnife can misrecognize tumor location under conditions where similar patterns exist in the search area. This study aimed to develop a technique for bone signal suppression during kV-x-ray imaging.
Paired CT images were created with or without bony structures using a 4D extended cardiac-torso phantom (XCAT phantom) in 56 cases. Subsequently, 3020 2D x-ray images were generated. Images with bone were input into cycle-consistent adversarial network (CycleGAN) and the bone suppressed images on the XCAT phantom (BSI ) were created. They were then compared to images without bone using the structural similarity index measure (SSIM) and peak signal-to-noise ratio (PSNR). Next, 1000 non-simulated treatment images from real cases were input into the training model, and bone-suppressed images of the patient (BSI ) were created. Zero means normalized cross correlation (ZNCC) by template matching between each of the actual treatment images and BSI were calculated.
BSI values were compared to their paired images without bone of the XCAT phantom test data; SSIM and PSNR were 0.90 ± 0.06 and 24.54 ± 4.48, respectively. It was visually confirmed that only bone was selectively suppressed without significantly affecting tumor visualization. The ZNCC values of the actual treatment images and BSI were 0.763 ± 0.136 and 0.773 ± 0.143, respectively. The BSI showed improved recognition accuracy over the actual treatment images.
The proposed bone suppression imaging technique based on CycleGAN improves image recognition, making it possible to achieve highly accurate motion tracking irradiation.
在使用 CyberKnife 进行立体定向放射治疗时,肺部肿瘤追踪可能会在搜索区域存在相似模式的情况下错误识别肿瘤位置。本研究旨在开发一种在千伏 X 射线成像过程中抑制骨信号的技术。
使用 4D 扩展心脏-胸部体模(XCAT 体模)对 56 例患者进行了有或无骨结构的 CT 图像配对。随后生成了 3020 张 2D X 射线图像。将带有骨的图像输入到循环一致性对抗网络(CycleGAN)中,生成 XCAT 体模上的骨抑制图像(BSI)。然后使用结构相似性指数测量(SSIM)和峰值信噪比(PSNR)对带有骨和不带骨的图像进行比较。接下来,将 1000 张来自真实病例的非模拟治疗图像输入到训练模型中,生成患者的骨抑制图像(BSI)。通过模板匹配计算每个实际治疗图像和 BSI 之间的零均值归一化互相关(ZNCC)。
将 BSI 值与 XCAT 体模测试数据的无骨配对图像进行比较;SSIM 和 PSNR 分别为 0.90±0.06 和 24.54±4.48。视觉上确认仅选择性地抑制了骨,而不会显著影响肿瘤可视化。实际治疗图像和 BSI 的 ZNCC 值分别为 0.763±0.136 和 0.773±0.143。BSI 显示出比实际治疗图像更高的识别准确率。
基于 CycleGAN 的提出的骨抑制成像技术提高了图像识别能力,从而实现了高精度的运动跟踪照射。