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基于多层超体素的肺部补丁式通气估计。

Patch-based lung ventilation estimation using multi-layer supervoxels.

机构信息

Institute of Biomedical Engineering, Department of Engineering Science, University of Oxford, UK.

Department of Radiology, Oxford University Hospitals NHS FT, Oxford, UK.

出版信息

Comput Med Imaging Graph. 2019 Jun;74:49-60. doi: 10.1016/j.compmedimag.2019.04.002. Epub 2019 Apr 5.

Abstract

Patch-based approaches have received substantial attention over the recent years in medical imaging. One of their potential applications may be to provide more anatomically consistent ventilation maps estimated on dynamic lung CT. An assessment of regional lung function may act as a guide for radiotherapy, ensuring a more accurate treatment plan. This in turn, could spare well-functioning parts of the lungs. We present a novel method for lung ventilation estimation from dynamic lung CT imaging, combining a supervoxel-based image representation with deformations estimated during deformable image registration, performed between peak breathing phases. For this we propose a method that tracks changes of the intensity of previously extracted supervoxels. For the evaluation of the method we calculate correlation of the estimated ventilation maps with static ventilation images acquired from hyperpolarized Xenon129 MRI. We also investigate the influence of different image registration methods used to estimate deformations between the peak breathing phases in the dynamic CT imaging. We show that our method performs favorably to other ventilation estimation methods commonly used in the field, independently of the image registration method applied to dynamic CT. Due to the patch-based approach of our method, it may be physiologically more consistent with lung anatomy than previous methods relying on voxel-wise relationships. In our method the ventilation is estimated for supervoxels, which tend to group spatially close voxels with similar intensity values. The proposed method was evaluated on a dataset consisting of three lung cancer patients undergoing radiotherapy treatment, and this resulted in a correlation of 0.485 with XeMRI ventilation images, compared with 0.393 for the intensity-based approach, 0.231 for the Jacobian-based method and 0.386 for the Hounsfield units averaging method, on average. Within the limitation of the small number of cases analyzed, results suggest that the presented technique may be advantageous for CT-based ventilation estimation. The results showing higher values of correlation of the proposed method demonstrate the potential of our method to more accurately mimic the lung physiology.

摘要

基于补丁的方法在医学成像领域近年来受到了广泛关注。它们的潜在应用之一可能是提供更符合解剖结构的动态肺部 CT 估计通气图。对区域性肺功能的评估可以作为放射治疗的指南,确保更准确的治疗计划。这反过来又可以保护肺部功能良好的部分。我们提出了一种从动态肺部 CT 成像中估计肺部通气的新方法,该方法将基于超体素的图像表示与在峰值呼吸阶段之间进行的可变形图像配准中估计的变形相结合。为此,我们提出了一种跟踪先前提取的超体素强度变化的方法。为了评估该方法,我们计算了估计的通气图与从氙气 129 MRI 获得的静态通气图像之间的相关性。我们还研究了用于估计动态 CT 成像中峰值呼吸阶段之间变形的不同图像配准方法的影响。我们表明,我们的方法优于该领域常用的其他通气估计方法,而与应用于动态 CT 的图像配准方法无关。由于我们的方法是基于补丁的方法,因此它可能比以前依赖体素关系的方法在生理上更符合肺部解剖结构。在我们的方法中,通气是针对超体素来估计的,超体素倾向于将空间上接近的具有相似强度值的体素分组。所提出的方法在由三名接受放射治疗的肺癌患者组成的数据集上进行了评估,结果与 XeMRI 通气图像的相关性为 0.485,而基于强度的方法为 0.393,基于雅可比矩阵的方法为 0.231,基于 Hounsfield 单位平均值的方法为 0.386。在分析的病例数量有限的情况下,结果表明,所提出的技术可能有利于基于 CT 的通气估计。所提出的方法的相关性值较高的结果表明,该方法具有更准确地模拟肺部生理学的潜力。

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