首页> 外文期刊>Journal of radiation oncology >A fiducial-less tracking method for radiation therapy of liver tumors by diaphragm disparity analysis part 1: simulation study using machine learning through artificial neural network
【24h】

A fiducial-less tracking method for radiation therapy of liver tumors by diaphragm disparity analysis part 1: simulation study using machine learning through artificial neural network

机译:膜片差异分析第1部分的肝脏肿瘤放射治疗的基准跟踪方法第1部分:通过人工神经网络使用机器学习的仿真研究

获取原文
获取原文并翻译 | 示例
       

摘要

Objective The large respiratory-induced motion of the liver tumors can affect treatment planning and delivery in many ways. As a result, motion management techniques are necessary to mitigate these effects. An effective approach to reducing the effects of respiratory motion of liver tumors is real-time tracking of the tumor. The Cyberknife treatment modality uses a combination of kV X-ray images, LED markers, an optic camera, and surgically implanted fiducial markers to track liver tumors. However, the use of an invasive method for implanting fiducial markers can lead to complications. We propose a tracking method that requires no fiducial markers for liver tumors by using the projected location of the diaphragm to identify the 3D location of the liver tumor. With the use of the 4D extended cardiac-torso (XCAT) phantom, this simulation study aims to investigate the feasibility of localizing liver tumors through the tracking of the diaphragm-lung border. Methods An abdominal 4DCT dataset containing 20 phases of one breathing cycle was created by using the male model of the 4D XCAT phantom. One set of orthogonal DRR images (+?45°) was generated for each phase. On each DRR image, an outline of the lung-diaphragm border was detected using an edge detection algorithm. The simulated tumor’s gravity center was identified for each phase of the breathing cycle. Using artificial neural networks (ANNs), two respiratory scenarios correlating the diaphragm’s location with the corresponding 3D location of the tumor were compared: (1) lung-defined tumor motion (TL) and (2) user-defined tumor motion (TA). Additionally, using the user-defined tumor motion, we also examined the accuracy of using ANN to track the tumor under the mismatched conditions during 4DCT reconstruction. Results Evaluation of the ANN model was quantified by the root mean square error (RMSE) values through the leave-one-out (LOO) validation technique. The RMSE for the TL motion was 0.67?mm and for the TA motion was 0.32?mm. When the ANN model was applied to the mismatched data, it generated the RMSE of 1.63?mm, whereas applied to the ground-truth data, the RMSE is 0.88?mm. Conclusion This simulation study shows that the diaphragm and tumor position are closely related. The developed diaphragm disparity-analysis approach, featuring tracking capability and verified with clinically acceptable errors, has the potential to replace fiducial markers for clinical application. The tracking method will be further investigated in clinical datasets from patients.
机译:目的,肝脏肿瘤的大呼吸诱导运动可以在许多方面影响治疗计划和交付。结果,需要运动管理技术来减轻这些效果。一种有效的方法来减少肝脏肿瘤呼吸运动的影响是肿瘤的实时跟踪。 Cyber​​ Knife治疗方式使用KV X射线图像,LED标记,光电摄像机和手术植入的基准标记的组合来跟踪肝肿瘤。然而,使用侵入性方法来植入基准标记可以导致并发症。我们提出了一种跟踪方法,其通过使用隔膜的投影位置来确定肝肿瘤的3D位置,不需要对肝肿瘤的基准标记。通过使用4D扩展心脏躯干(Xcat)幻影,这种仿真研究旨在通过跟踪隔膜肺边界来研究定位肝肿瘤的可行性。方法采用4D Xcat Phantom的雄性模型产生含有20个呼吸循环阶段的腹部4DCT数据集。为每个阶段产生一组正交DRR图像(+Δ45°)。在每个DRR图像上,使用边缘检测算法检测肺隔膜边界的轮廓。为呼吸循环的每个阶段鉴定了模拟的肿瘤的重心。使用人工神经网络(ANNS),对肿瘤相应的3D位置进行两种与肿瘤的位置相关的两个呼吸情景:(1)肺定定义的肿瘤运动(TL)和(2)用户定义的肿瘤运动(TA)。另外,使用用户定义的肿瘤运动,我们还检查了在4DCT重建期间在不匹配的条件下跟踪肿瘤的准确性。结果通过休假(LOO)验证技术通过根均方误差(RMSE)值来量化ANN模型的评估。用于T1运动的RMSE为0.67Ωmm,对于TA运动为0.32Ωmm。当ANN模型应用于不匹配的数据时,它会产生1.63Ωmm的RMSE,而应用于地面真实数据,RMSE为0.88Ωmm。结论该仿真研究表明,隔膜和肿瘤的位置密切相关。开发的隔膜差距分析方法,具有跟踪能力并在临床上可接受的误差中验证,具有替代临床应用的基准标记。将进一步研究患者的临床数据集中的跟踪方法。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号