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The Changing Brain in Healthy Aging: a multi-MRI machine and multicenter surface-based morphometry study

机译:健康衰老中不断变化的大脑:多核磁共振成像机和基于表面的多中心形态计量学研究

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Clinical practice on magnetic resonance imaging of the brain has been historically based on a comparative analysis using a well-trained eye to see whether different features corresponded to a healthy pattern or not. Several studies have described that healthy aging is associated with loss in tissue volume and expansion of cerebrospinal fluid cavities, making this healthy pattern a dynamical and complex model. For these reasons we propose that structural neurorradiology should be assisted by a quantitative and statistical model that can give meaning to a patient's brain morphometric measurements, giving additional information to the clinician about possible deviations from health. With this aim we obtained normative brain morphometric values by applying an automated voxel and surface-based processing pipeline using the well-known software package PreeSurfer. Employing the publicly available IXI Dataset created by Imperial College London we obtained 135 metrics of the aging process from 538 participant between 20 and 86 years old. In concordance with previous studies we found evidence of change in almost all analyzed features, for both brain's volumes and thicknesses, reproducing findings from several previous brain's morphometric studies. Finally, we explored how different stratified percentiles evolve with age, finding that aging is not a process that can be described by a mean descriptor but on the contrary should be analyzed by considering different percentile layers with its own specific aging dynamic.
机译:历史上,大脑的磁共振成像的临床实践是基于使用训练有素的眼睛进行的比较分析,以查看不同的特征是否对应于健康模式。几项研究描述了健康的衰老与组织体积的减少和脑脊液腔的扩张有关,从而使这种健康的模式成为动态而复杂的模型。由于这些原因,我们建议结构性神经放射学应辅之以定量和统计模型,该模型可以为患者的大脑形态测量提供意义,并为临床医生提供有关可能偏离健康状况的更多信息。为此,我们使用知名软件包PreeSurfer应用了自动体素和基于表面的处理流水线,从而获得了规范的大脑形态学值。利用伦敦帝国理工学院创建的IXI数据集,我们从538名20至86岁的参与者中获得了135个老化过程指标。与以前的研究一致,我们发现了几乎所有分析过的特征都有变化的证据,包括大脑的体积和厚度,都再现了先前几次大脑形态测量研究的发现。最后,我们探索了不同的分层百分位数如何随年龄而变化,发现衰老不是一个可以用均值描述符描述的过程,相反,应通过考虑具有其自​​身特定衰老动态的不同百分位数层来进行分析。

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