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首页> 外文期刊>IEEE Transactions on Medical Imaging >Non-Parametric Bayesian Registration (NParBR) of Body Tumors in DCE-MRI Data
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Non-Parametric Bayesian Registration (NParBR) of Body Tumors in DCE-MRI Data

机译:DCE-MRI数据中人体肿瘤的非参数贝叶斯配准(NParBR)

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摘要

The identification of tumors in the internal organs of chest, abdomen, and pelvis anatomic regions can be performed with the analysis of Dynamic Contrast Enhanced Magnetic Resonance Imaging (DCE-MRI) data. The contrast agent is accumulated differently by pathologic and healthy tissues and that results in a temporally varying contrast in an image series. The internal organs are also subject to potentially extensive movements mainly due to breathing, heart beat, and peristalsis. This contributes to making the analysis of DCE-MRI datasets challenging as well as time consuming. To address this problem we propose a novel pairwise non-rigid registration method with a Non-Parametric Bayesian Registration (NParBR) formulation. The NParBR method uses a Bayesian formulation that assumes a model for the effect of the distortion on the joint intensity statistics, a non-parametric prior for the restored statistics, and also applies a spatial regularization for the estimated registration with Gaussian filtering. A minimally biased intra-dataset atlas is computed for each dataset and used as reference for the registration of the time series. The time series registration method has been tested with 20 datasets of liver, lungs, intestines, and prostate. It has been compared to the B-Splines and to the SyN methods with results that demonstrate that the proposed method improves both accuracy and efficiency.
机译:可以通过分析动态对比增强磁共振成像(DCE-MRI)数据来鉴定胸部,腹部和骨盆解剖区域内脏中的肿瘤。造影剂在病理组织和健康组织中的积累方式不同,从而导致图像系列中的对比度随时间变化。主要由于呼吸,心跳和蠕动,内部器官也可能遭受广泛的运动。这有助于使DCE-MRI数据集的分析既困难又费时。为了解决这个问题,我们提出了一种新的基于非参数贝叶斯配准(NParBR)的成对非刚性配准方法。 NParBR方法使用贝叶斯公式,该公式假定了变形对联合强度统计量的影响的模型,对于恢复的统计量而言是非参数先验的,并且还对高斯滤波的估计配准应用了空间正则化。为每个数据集计算一个最小偏差的数据集内图集,并将其用作时间序列的注册参考。时间序列注册方法已通过20个肝脏,肺部,肠道和前列腺数据集进行了测试。将其与B样条曲线和SyN方法进行了比较,结果表明所提出的方法可以提高准确性和效率。

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