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首页> 外文期刊>Biomedical and Health Informatics, IEEE Journal of >Infant Brain Extraction in T1-Weighted MR Images Using BET and Refinement Using LCDG and MGRF Models
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Infant Brain Extraction in T1-Weighted MR Images Using BET and Refinement Using LCDG and MGRF Models

机译:使用BET在T1加权MR图像中提取婴儿大脑并使用LCDG和MGRF模型进行提炼

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摘要

In this paper, we propose a novel framework for the automated extraction of the brain from T1-weighted MR images. The proposed approach is primarily based on the integration of a stochastic model [a two-level Markov–Gibbs random field (MGRF)] that serves to learn the visual appearance of the brain texture, and a geometric model (the brain isosurfaces) that preserves the brain geometry during the extraction process. The proposed framework consists of three main steps: 1) Following bias correction of the brain, a new three-dimensional (3-D) MGRF having a 26-pairwise interaction model is applied to enhance the homogeneity of MR images and preserve the 3-D edges between different brain tissues. 2) The nonbrain tissue found in the MR images is initially removed using the brain extraction tool (BET), and then the brain is parceled to nested isosurfaces using a fast marching level set method. 3) Finally, a classification step is applied in order to accurately remove the remaining parts of the skull without distorting the brain geometry. The classification of each voxel found on the isosurfaces is made based on the first- and second-order visual appearance features. The first-order visual appearance is estimated using a linear combination of discrete Gaussians (LCDG) to model the intensity distribution of the brain signals. The second-order visual appearance is constructed using an MGRF model with analytically estimated parameters. The fusion of the LCDG and MGRF, along with their analytical estimation, allows the approach to be fast and accurate for use in clinical applications. The proposed approach was tested on data using 300 infant 3-D MR brain scans, which were qualitatively validated by an MR expert. In addition, it was quantitatively validated using 30 datasets based on three metrics: the Dice coefficient, the 95% modified Hausdorff distance, and absolute brain volume difference. Results showed the capability of the proposed a- proach, outperforming four widely used BETs: BET, BET2, brain surface extractor, and infant brain extraction and analysis toolbox. Experiments conducted also proved that the proposed framework can be generalized to adult brain extraction as well.
机译:在本文中,我们提出了一种从T1加权MR图像中自动提取大脑的新颖框架。所提出的方法主要基于一个随机模型[一个两级马尔可夫-吉布斯随机场(MGRF)]的集成,该模型用于学习大脑纹理的视觉外观,并保留一个几何模型(大脑等值面)。提取过程中的大脑几何形状。拟议的框架包括三个主要步骤:1)在对大脑进行偏向校正之后,采用具有26对交互模型的新型三维(3-D)MGRF,以增强MR图像的均匀性并保留3-不同脑组织之间的D边缘。 2)首先使用脑提取工具(BET)去除MR图像中发现的非脑组织,然后使用快速行进水平设置方法将脑分割成嵌套的等值面。 3)最后,应用分类步骤,以在不扭曲大脑几何形状的情况下准确去除头骨的其余部分。根据一阶和二阶视觉外观特征对在等值面上找到的每个体素进行分类。使用离散高斯(LCDG)的线性组合估算一阶视觉外观,以对大脑信号的强度分布进行建模。使用具有分析性估计参数的MGRF模型构造二阶视觉外观。 LCDG和MGRF的融合以及它们的分析估计使该方法可以快速,准确地用于临床应用。使用300名婴儿3-D MR脑部扫描对所提出的方法进行了数据测试,该扫描已由MR专家进行了定性验证。此外,它基于30个数据集进行了定量验证,该数据集基于以下三个指标:Dice系数,95%修正的Hausdorff距离和绝对大脑体积差异。结果显示了拟议方法的性能,胜过四种广泛使用的BET:BET,BET2,脑表面提取器和婴儿脑提取和分析工具箱。进行的实验还证明,提出的框架也可以推广到成人脑部提取。

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