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Multi-atlas based neonatal brain extraction using atlas library clustering and local label fusion

机译:基于多标准的新生脑提取使用阿特拉斯库聚类和局部标签融合

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摘要

Brain extraction is one of the most important preprocessing steps in cerebral magnetic resonance (MR) image analysis. Brain extraction from neonatal MR images is particularly challenging due to significant differences in head size and shape between neonates and rapid changes in neonatal brain structure in the weeks and months after birth. In this work, a multi-atlas-based neonatal brain extraction method using atlas library clustering and local label fusion (NOBELL) is presented. In NOBELL, an affinity propagation (AP) approach is first applied to cluster images of an atlas library into clusters represented by exemplars, which are used to select best matching clusters for target images. A local weighted voting strategy based on Jacobian determinant ranking is then employed to extract brain from target images using training images in best matching clusters. The performance of NOBELL was evaluated on T2- and T1-weighted scans of 40 neonates aged between 37 and 44 weeks. NOBELL outperformed two popular brain extraction tools, FSL's Brain Extraction Tool (BET) and BrainSuite's Brain Surface Extractor (BSE), and achieved higher accuracy with brain masks very close to manually extracted ones. NOBELL showed an average Jaccard coefficient of 0.974 (0.942) on T2 (T1)-weighted images in comparison with 0.908 (0.602) and 0.845 (0.762) achieved by BSE, and BET, respectively. NOBELL allows for accurate and efficient brain extraction, a crucial step in brain MRI applications such as accurate brain tissue segmentation and volume estimation as well as accurate cortical surface delineation in neonates.
机译:脑提取是脑磁共振(MR)图像分析中最重要的预处理步骤之一。由于头部大小和新生儿脑结构之间的头部尺寸和形状的显着差异,新生儿MR图像的脑提取尤其具有挑战性。在这项工作中,提出了一种使用阿特拉斯库聚类和局部标签融合(Nobell)的基于多地图集的新生脑提取方法。在诺贝尔中,首先将亲和力传播(AP)方法应用于由示例的示例表示的群集的集群,用于选择目标图像的最佳匹配群集。然后采用基于雅可比决定簇排名的局部加权投票策略从最佳匹配簇中使用训练图像从目标图像中提取大脑。诺贝尔的表现是在37至44周之间的40名新生儿的T2和T1加权扫描上进行评估。 Nobell优于两种流行的脑提取工具,FSL的脑提取工具(BET)和BRISSUITE的脑表面提取器(BSE),并通过脑面罩实现更高的准确性,非常接近手动提取的脑面罩。 Nobell在T2(T1)上的平均Jaccard系数为0.974(0.942),与BSE的0.908(0.602)和0.845(0.762)相比,分别进行了0.908(0.602)和0.845(0.762)。诺贝尔允许精确高效的脑提取,脑MRI应用中的一个关键步骤,例如精确的脑组织分割和体积估计以及新生儿中的精确皮质表面描绘。

著录项

  • 来源
    《Multimedia Tools and Applications》 |2020年第28期|19411-19433|共23页
  • 作者单位

    Department of Electrical and Electronics Engineering Shiraz University of Technology Shiraz Iran;

    Department of Electrical and Electronics Engineering Shiraz University of Technology Shiraz Iran;

    Department of Electrical and Electronics Engineering Shiraz University of Technology Shiraz Iran;

    Department of Pediatrics University of Tennessee Health Science Center Memphis TN USA Department of Anatomy and Neurobiology University of Tennessee Health Science Center Memphis TN USA Neuroscience Institute Le Bonheur Children's Hospital Memphis TN USA;

    Laboratory of Functional Neuroscience and Pathologies (LNFP EA4559) University Research Center (CURS) University Hospital of Amiens Amiens France Faculty of Medicine University of Picardie Jules Verne Amiens France;

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

    Neonatal brain MRI; Brain extraction; Multi-atlas; Affinity propagation; Label fusion; Jacobian determinant;

    机译:新生儿脑MRI;脑提取;多atlas;繁殖;标签融合;雅各比奥的决定簇;

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