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Longitudinal characterization of brain atrophy of a Huntington's disease mouse model by automated morphological analyses of magnetic resonance images.

机译:通过磁共振图像的自动形态分析,对亨廷顿舞蹈病小鼠模型的脑萎缩进行纵向表征。

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Mouse models of human diseases play crucial roles in understanding disease mechanisms and developing therapeutic measures. Huntington's disease (HD) is characterized by striatal atrophy that begins long before the onset of motor symptoms. In symptomatic HD, striatal volumes decline predictably with disease course. Thus, imaging based volumetric measures have been proposed as outcomes for presymptomatic as well as symptomatic clinical trials of HD. Magnetic resonance imaging of the mouse brain structures is becoming widely available and has been proposed as one of the biomarkers of disease progression and drug efficacy testing. However, three-dimensional and quantitative morphological analyses of the brains are not straightforward. In this paper, we describe a tool for automated segmentation and voxel-based morphological analyses of the mouse brains. This tool was applied to a well-established mouse model of Huntington's disease, the R6/2 transgenic mouse strain. Comparison between the automated and manual segmentation results showed excellent agreement in most brain regions. The automated method was able to sensitively detect atrophy as early as 4 weeks of age and accurately follow disease progression. Comparison between ex vivo and in vivo MRI suggests that the ex vivo end-point measurement of brain morphology is also a valid approach except for the morphology of the ventricles. This is the first report of longitudinal characterization of brain atrophy in a mouse model of Huntington's disease by using automatic morphological analysis.
机译:人类疾病的小鼠模型在理解疾病机制和制定治疗措施中起着至关重要的作用。亨廷顿舞蹈病(HD)的特征是纹状体萎缩开始于运动症状发作之前很久。在有症状的高清中,纹状体体积随疾病进程而降低。因此,已提出基于影像的体积测量作为HD的症状前和对症临床试验的结果。小鼠脑结构的磁共振成像已变得广泛可用,并且已被提议作为疾病进展和药物功效测试的生物标记之一。然而,对大脑的三维和定量形态学分析并不简单。在本文中,我们描述了一种自动分割和基于体素的小鼠大脑形态分析工具。该工具被用于亨廷顿氏病的成熟小鼠模型,R6 / 2转基因小鼠品系。自动和手动分割结果之间的比较表明,在大多数大脑区域中,一致性极佳。自动化方法能够早在4周龄时灵敏地检测出萎缩,并准确跟踪疾病的进展。体内MRI与离体MRI的比较表明,脑室形态的离体端点测量也是有效的方法。这是通过使用自动形态学分析在亨廷顿氏病小鼠模型中脑萎缩的纵向表征的首次报道。

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