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Abdominal, multi-organ, auto-contouring method for online adaptive magnetic resonance guided radiotherapy: An intelligent, multi-level fusion approach

机译:在线自适应磁共振引导放射治疗的腹部,多器官自动轮廓方法:一种智能的多级融合方法

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摘要

BackgroundManual contouring remains the most laborious task in radiation therapy planning and is a major barrier to implementing routine Magnetic Resonance Imaging (MRI) Guided Adaptive Radiation Therapy (MR-ART). To address this, we propose a new artificial intelligence-based, auto-contouring method for abdominal MR-ART modeled after human brain cognition for manual contouring.Methods/MaterialsOur algorithm is based on two types of information flow, i.e. top-down and bottom-up. Top-down information is derived from simulation MR images. It grossly delineates the object based on its high-level information class by transferring the initial planning contours onto daily images. Bottom-up information is derived from pixel data by a supervised, self-adaptive, active learning based support vector machine. It uses low-level pixel features, such as intensity and location, to distinguish each target boundary from the background. The final result is obtained by fusing top-down and bottom-up outputs in a unified framework through artificial intelligence fusion. For evaluation, we used a dataset of four patients with locally advanced pancreatic cancer treated with MR-ART using a clinical system (MRIdian, Viewray, Oakwood Village, OH, USA). Each set included the simulation MRI and onboard T1 MRI corresponding to a randomly selected treatment session. Each MRI had 144 axial slices of 266 × 266 pixels. Using the Dice Similarity Index (DSI) and the Hausdorff Distance Index (HDI), we compared the manual and automated contours for the liver, left and right kidneys, and the spinal cord.ResultsThe average auto-segmentation time was two minutes per set. Visually, the automatic and manual contours were similar. Fused results achieved better accuracy than either the bottom-up or top-down method alone. The DSI values were above 0.86. The spinal canal contours yielded a low HDI value.ConclusionWith a DSI significantly higher than the usually reported 0.7, our novel algorithm yields a high segmentation accuracy. To our knowledge, this is the first fully automated contouring approach using T1 MRI images for adaptive radiotherapy.
机译:背景技术手动轮廓化仍然是放射治疗计划中最费力的任务,并且是实施常规磁共振成像(MRI)引导的自适应放射治疗(MR-ART)的主要障碍。为解决此问题,我们提出了一种新的基于人工智能的,针对腹部MR-ART的自动轮廓方法,该方法以人的大脑认知为基础进行人工轮廓建模。 n方法/材料我们的算法基于两种信息流,即自上而下和信息流。自下而上。自上而下的信息是从模拟MR图像得出的。通过将初始计划轮廓转移到每日图像上,它根据其高级信息类别大致描绘了对象。自下而上的信息是通过有监督的,自适应的,基于主动学习的支持向量机从像素数据中得出的。它使用诸如强度和位置之类的低级像素特征来将每个目标边界与背景区分开。最终结果是通过人工智能融合在一个统一的框架中融合自上而下和自下而上的输出而获得的。为了进行评估,我们使用了四名使用临床系统(MRIdian,Viewray,Oakwood Village,美国俄亥俄州)接受MR-ART治疗的局部晚期胰腺癌患者的数据集。每组包括对应于随机选择的治疗阶段的模拟MRI和机载T1 MRI。每个MRI具有144个266××266像素的轴向切片。使用骰子相似性指数(DSI)和Hausdorff距离指数(HDI),我们比较了肝脏,左右肾脏和脊髓的手动和自动轮廓。 n结果平均自动分段时间为每套2分钟。在视觉上,自动和手动轮廓相似。融合结果比单独使用自下而上或自上而下的方法获得了更好的精度。 DSI值高于0.86。椎管轮廓产生的HDI值较低。 n结论DSI显着高于通常报道的0.7,因此我们的新算法产生了很高的分割精度。据我们所知,这是第一个使用T1 MRI图像进行自适应放射治疗的全自动轮廓绘制方法。

著录项

  • 来源
    《Artificial intelligence in medicine》 |2018年第8期|34-41|共8页
  • 作者单位

    Department of Radiology, Case Western Reserve University School of Medicine,Case Center for Imaging Research, University Hospitals Case Medical Center, Case Western Reserve University,Tianjin Key Laboratory of Information Sensing & Intelligent Control, Tianjin University of Technology and Education;

    School of Digital Media, Jiangnan University;

    Department of Radiology, Case Western Reserve University School of Medicine,Case Center for Imaging Research, University Hospitals Case Medical Center, Case Western Reserve University;

    Department of Internal Medicine, Case Western Reserve University School of Medicine,Department of Internal Medicine, Louis Stokes VA Medical Center,Department of Biomedical Engineering, Case Western Reserve University;

    Department of Radiology, Case Western Reserve University School of Medicine,Case Center for Imaging Research, University Hospitals Case Medical Center, Case Western Reserve University,Department of Biomedical Imaging and Image-guided Therapy, Medical University of Vienna;

    Department of Radiology, Case Western Reserve University School of Medicine,Case Center for Imaging Research, University Hospitals Case Medical Center, Case Western Reserve University,Department of Radiology, UZ Brussel (VUB);

    Department of Radiology, Case Western Reserve University School of Medicine,Case Center for Imaging Research, University Hospitals Case Medical Center, Case Western Reserve University;

    School of Digital Media, Jiangnan University;

    Department of Radiation Oncology, Washington University School of Medicine;

    Department of Radiation Oncology, Washington University School of Medicine;

    Case Center for Imaging Research, University Hospitals Case Medical Center, Case Western Reserve University,Department of Radiation Oncology, Case Western Reserve University School of Medicine,Department of Radiation Oncology, University Hospitals Seidman Cancer Center;

    Department of Radiology, Case Western Reserve University School of Medicine,Case Center for Imaging Research, University Hospitals Case Medical Center, Case Western Reserve University,Department of Biomedical Engineering, Case Western Reserve University,Department of Radiology, University Hospitals Cleveland Medical Center;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Auto-Contouring; Machine learning; Adaptive radiotherapy; Image-guided; Radiotherapy;

    机译:自动轮廓;机器学习;自适应放射治疗;图像引导;放射治疗;
  • 入库时间 2022-08-18 04:08:36

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