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首页> 外文期刊>Psychiatry Research. Neuroimaging >A semi-automated algorithm for hypothalamus volumetry in 3 Tesla magnetic resonance images
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A semi-automated algorithm for hypothalamus volumetry in 3 Tesla magnetic resonance images

机译:3特斯拉磁共振图像中的下丘脑体积的半自动算法

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摘要

The hypothalamus, a small diencephalic gray matter structure, is part of the limbic system. Volumetric changes of this structure occur in psychiatric diseases, therefore there is increasing interest in precise volumetry. Based on our detailed volumetry algorithm for 7 Tesla magnetic resonance imaging (MRI), we developed a method for 3 Tesla MRI, adopting anatomical landmarks and work in triplanar view. We overlaid T1-weighted MR images with gray matter-tissue probability maps to combine anatomical information with tissue class segmentation. Then, we outlined regions of interest (ROIs) that covered potential hypothalamus voxels. Within these ROIs, seed growing technique helped define the hypothalamic volume using gray matter probabilities from the tissue probability maps. This yielded a semi-automated method with short processing times of 20-40 min per hypothalamus. In the MRIs of ten subjects, reliabilities were determined as intraclass correlations (ICC) and volume overlaps in percent. Three raters achieved very good intra-rater reliabilities (ICC 0.82-0.97) and good inter-rater reliabilities (ICC 0.78 and 0.82). Overlaps of intra- and inter-rater runs were very good (= 89.7%). We present a fast, semi-automated method for in vivo hypothalamus volumetry in 3 Tesla MRI.
机译:下丘脑,一个小的Diencephalic灰质结构,是肢体系统的一部分。这种结构的体积变化发生在精神疾病中,因此对精确体积增加了兴趣。基于我们的7特斯拉磁共振成像(MRI)的详细体积算法,我们开发了一种用于3个Tesla MRI的方法,采用解剖标志和在Triplanar视图中工作。我们将T1加权MR图像与灰质 - 组织概率图覆盖以将解剖学信息与组织类分割组合。然后,我们概述了涵盖了潜在的下丘脑体素的兴趣区域(ROI)。在这些ROI中,种子生长技术有助于使用来自组织概率图的灰质概率来定义下丘脑体积。这产生了一种半自动方法,每次下丘脑的处理时间短20-40分钟。在十个受试者的MRIS中,可靠性被确定为腹部相关性(ICC)和体积重叠百分比。三名评估者实现了非常好的反复内可靠性(ICC 0.82-0.97)和良好的税率可靠性(ICC 0.78和0.82)。帧内间跨越的重叠非常好(& = 89.7%)。我们在3个Tesla MRI中为体内下丘脑体积提供了一种快速,半自动方法。

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