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Multi-atlas tool for automated segmentation of brain gray matter nuclei and quantification of their magnetic susceptibility

机译:用于脑灰质核的自动分割的多拟标工具及其磁敏度的定量

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摘要

Quantification of tissue magnetic susceptibility using MRI offers a non-invasive measure of important tissue components in the brain, such as iron and myelin, potentially providing valuable information about normal and pathological conditions during aging. Despite many advances made in recent years on imaging techniques of quantitative susceptibility mapping (QSM), accurate and robust automated segmentation tools for QSM images that can help generate universal and sharable susceptibility measures in a biologically meaningful set of structures are still not widely available. In the present study, we developed an automated process to segment brain nuclei and quantify tissue susceptibility in these regions based on a susceptibility multi-atlas library, consisting of 10 atlases with T1-weighted images, gradient echo (GRE) magnitude images and QSM images of brains with different anatomic patterns. For each atlas in this library, 10 regions of interest in iron-rich deep gray matter structures that are better defined by QSM contrast were manually labeled, including caudate, putamen, globus pallidus internal/external, thalamus, pulvinar, subthalamic nucleus, substantia nigra, red nucleus and dentate nucleus in both left and right hemispheres. We then tested different pipelines using different combinations of contrast channels to bring the set of labels from the multi-atlases to each target brain and compared them with the gold standard manual delineation. The results showed that the segmentation accuracy using dual contrasts QSM/T1 pipeline outperformed other dual-contrast or single-contrast pipelines. The dice values of 0.77 +/- 0.09 using the QSM/T1 multi-atlas pipeline rivaled with the segmentation reliability obtained from multiple evaluators with dice values of 0.79 +/- 0.07 and gave comparable or superior performance in segmenting subcortical nuclei in comparison with standard FSL FIRST or recent multi-atlas package of volBrain. The segmentation performance of the QSM/T1 multi-atlas was further tested on QSM images acquired using different acquisition protocols and platforms and showed good reliability and reproducibility with average dice of 0.79 +/- 0.08 to manual labels and 0.89 +/- 0.04 in an inter-protocol manner. The extracted quantitative magnetic susceptibility values in the deep gray matter nuclei also correlated well between different protocols with inter-protocol correlation constants all larger than 0.97. Such reliability and performance was ultimately validated in an external dataset acquired at another study site with consistent susceptibility measures obtained using the QSM/T1 multi-atlas approach in comparison to those using manual delineation. In summary, we designed a susceptibility multi-atlas tool for automated and reliable segmentation of QSM images and for quantification of magnetic susceptibilities. It is publicly available through our cloud-based platform (www.mricloud.org). Further improvement on the performance of this multi-atlas tool is expected by increasing the number of atlases in the future.
机译:使用MRI的组织磁化率的定量提供了大脑中重要组织成分的非侵入性测量,例如铁和髓鞘,可能在老化期间提供有关正常和病理条件的有价值的信息。尽管近年来近年来对定量敏感性映射的成像技术进行了许多进展(QSM),但QSM图像的准确和强大的自动分割工具,可以帮助在生物有意义的结构集中产生通用和可共同的易感性措施仍然不可用。在本研究中,我们在基于易感性多地图集文库中,在这些区域进行了自动化过程,并在这些区域中量化了这些区域的组织易感性,该区域由具有T1加权图像的10个atlase,梯度回波(GRE)幅度图像和QSM图像组成具有不同解剖模式的大脑。对于该图书馆的每个地图集,由QSM对比度更好地定义的铁富灰色物质结构的10个兴趣区域手动标记,包括尾部,腐败,Globus pallidus内部/外部,丘脑,脉冲,亚粒子核,ImplicaIa nigra ,左右半球中的红色核和牙齿核。然后,我们使用不同的对比度通道的不同组合测试了不同的管道,将这些标签从多地纳列带到每个目标大脑并将其与金标准手动描绘进行比较。结果表明,使用双对比度QSM / T1管道的分割精度优于其他双对比度或单个对比度管道。使用QSM / T1多ATLAS管道的骰子值为0.77 +/- 0.09,其竞争于从多个评估人员获得的分段可靠性,骰子值为0.79 +/- 0.07,并与标准相比,在分段的皮下核中产生了可比或优异的性能FSL第一或最近的Volbrain多阿特拉斯包。在使用不同采集协议和平台获取的QSM图像上进一步测试了QSM / T1多拟地图的分割性能,并显示出良好的可靠性和可再现性,平均骰子为0.79 +/- 0.08,在手动标签和0.89 +/- 0.04协议间的方式。深灰质核中提取的定量磁化率值也在不同方案之间的不同方案之间良好相关,所述协议间相关常数大于0.97。这种可靠性和性能最终在另一个研究现场获取的外部数据集中验证,其使用QSM / T1多拟标志方法与使用手动描绘相比获得的一致易感性测量。总之,我们设计了一种用于QSM图像的自动化和可靠分割的易感性多标准工具,以及用于量化磁性敏感性。它通过基于云的平台(www.mricloud.org)公开提供。通过增加未来的地图集数,进一步提高了这种多标准工具的性能。

著录项

  • 来源
    《NeuroImage 》 |2019年第2019期| 共13页
  • 作者单位

    Johns Hopkins Univ Sch Med Dept Radiol 217B Traylor Bldg 720 Rutland Ave Baltimore MD 21205 USA;

    Johns Hopkins Univ Sch Med Dept Radiol 217B Traylor Bldg 720 Rutland Ave Baltimore MD 21205 USA;

    Johns Hopkins Univ Ctr Imaging Sci Baltimore MD 21205 USA;

    Johns Hopkins Univ Ctr Imaging Sci Baltimore MD 21205 USA;

    Johns Hopkins Univ Sch Med Dept Radiol 217B Traylor Bldg 720 Rutland Ave Baltimore MD 21205 USA;

    Johns Hopkins Univ Sch Med Dept Radiol 217B Traylor Bldg 720 Rutland Ave Baltimore MD 21205 USA;

    Johns Hopkins Univ Sch Med Dept Radiol 217B Traylor Bldg 720 Rutland Ave Baltimore MD 21205 USA;

    Johns Hopkins Univ Sch Med Dept Radiol 217B Traylor Bldg 720 Rutland Ave Baltimore MD 21205 USA;

    Univ Calif Berkeley Dept Elect Engn &

    Comp Sci Berkeley CA 94720 USA;

    Univ Calif Berkeley Dept Elect Engn &

    Comp Sci Berkeley CA 94720 USA;

    Johns Hopkins Univ Ctr Imaging Sci Baltimore MD 21205 USA;

    Johns Hopkins Univ Sch Med Dept Radiol 217B Traylor Bldg 720 Rutland Ave Baltimore MD 21205 USA;

    Johns Hopkins Univ Sch Med Dept Radiol 217B Traylor Bldg 720 Rutland Ave Baltimore MD 21205 USA;

    Johns Hopkins Univ Sch Med Dept Radiol 217B Traylor Bldg 720 Rutland Ave Baltimore MD 21205 USA;

    Johns Hopkins Univ Sch Med Dept Radiol 217B Traylor Bldg 720 Rutland Ave Baltimore MD 21205 USA;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 诊断学 ;
  • 关键词

    QSM; SWI; Atlas; Automated segmentation; Susceptibility quantification;

    机译:QSM;SWI;地图集;自动分割;易感性量化;

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