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用于医学图像配准的复合局部不变特征和全局可变形几何

Compounding local invariant features and global deformable geometry for medical image registration.

作者信息

Zhang Jianhua, Chen Lei, Wang Xiaoyan, Teng Zhongzhao, Brown Adam J, Gillard Jonathan H, Guan Qiu, Chen Shengyong

机构信息

College of Computer Science, Zhejiang University of Technology, Hangzhou, Zhejiang, China.

Department of Radiology, University of Cambridge, Cambridge, United Kingdom.

出版信息

PLoS One. 2014 Aug 28;9(8):e105815. doi: 10.1371/journal.pone.0105815. eCollection 2014.

Abstract

Using deformable models to register medical images can result in problems of initialization of deformable models and robustness and accuracy of matching of inter-subject anatomical variability. To tackle these problems, a novel model is proposed in this paper by compounding local invariant features and global deformable geometry. This model has four steps. First, a set of highly-repeatable and highly-robust local invariant features, called Key Features Model (KFM), are extracted by an effective matching strategy. Second, local features can be matched more accurately through the KFM for the purpose of initializing a global deformable model. Third, the positional relationship between the KFM and the global deformable model can be used to precisely pinpoint all landmarks after initialization. And fourth, the final pose of the global deformable model is determined by an iterative process with a lower time cost. Through the practical experiments, the paper finds three important conclusions. First, it proves that the KFM can detect the matching feature points well. Second, the precision of landmark locations adjusted by the modeled relationship between KFM and global deformable model is greatly improved. Third, regarding the fitting accuracy and efficiency, by observation from the practical experiments, it is found that the proposed method can improve 6~8% of the fitting accuracy and reduce around 50% of the computational time compared with state-of-the-art methods.

摘要

使用可变形模型来配准医学图像可能会导致可变形模型的初始化问题以及主体间解剖变异匹配的鲁棒性和准确性问题。为了解决这些问题,本文提出了一种通过复合局部不变特征和全局可变形几何来构建的新型模型。该模型有四个步骤。首先,通过一种有效的匹配策略提取一组高度可重复且高度鲁棒的局部不变特征,称为关键特征模型(KFM)。其次,为了初始化全局可变形模型,通过KFM可以更精确地匹配局部特征。第三,KFM与全局可变形模型之间的位置关系可用于在初始化后精确确定所有地标点。第四,全局可变形模型的最终姿态通过一个时间成本较低的迭代过程来确定。通过实际实验,本文得出三个重要结论。第一,证明了KFM能够很好地检测出匹配特征点。第二,通过KFM与全局可变形模型之间的建模关系调整后的地标位置精度有了很大提高。第三,关于拟合精度和效率,从实际实验观察发现,与现有方法相比,所提出的方法可以提高6%至8%的拟合精度,并减少约50%的计算时间。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/566d/4148338/fc379d406b82/pone.0105815.g002.jpg

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