Moqadam Roqaie, Dadar Mahsa, Zeighami Yashar
Department of Psychiatry, McGill University, Montreal, Quebec, Canada.
Douglas Mental Health University Institute, Montreal, Quebec, Canada.
Imaging Neurosci (Camb). 2024 Feb 5;2. doi: 10.1162/imag_a_00079. eCollection 2024.
Brain Age Gap (BAG) is defined as the difference between the brain's predicted age and the chronological age of an individual. Magnetic resonance imaging (MRI)-based BAG can quantify acceleration of brain aging, and is used to infer brain health as aging and disease interact. Motion in the scanner is a common occurrence that can affect the acquired MRI data and act as a major confound in the derived models. As such, age-related changes in head motion may impact the observed age-related differences. However, the relationship between head motion and BAG as estimated by structural MRI has not been systematically examined. The aim of this study is to assess the impact of motion on voxel-based morphometry (VBM) based BAG. Data were obtained from two sources: i) T1-weighted (T1w) MRIs from the Cambridge Centre for Ageing and Neuroscience (CamCAN) were used to train the brain age prediction model, and ii) T1w MRIs from the Movement-related artifacts (MR-ART) dataset were used to assess the impact of motion on BAG. MR-ART includes one motion-free and two motion-affected (one low and one high) 3D T1w MRIs. We also visually rated the motion levels of the MR-ART MRIs from 0 to 5, with 0 meaning no motion and 5 high motion levels. All images were pre-processed through a standard VBM pipeline. GM density across cortical and subcortical regions were then used to train the brain age prediction model and assess the relationship between BAG and MRI motion. Principal component analysis was used to perform dimension reduction and extract the VBM-based features. BAG was estimated by regressing out the portion of delta age explained by chronological age. Linear mixed-effects models were used to investigate the relationship between BAG and motion session as well as motion severity, including participant IDs as random effects. We repeated the same analysis using cortical thickness based on FreeSurfer 7.4.1 and to compare the results for volumetric versus surface-based measures of brain morphometry. In contrast with the session with no induced motion, predicted delta age was significantly higher for high motion sessions 2.35 years (t = 5.17, p < 0.0001), with marginal effect for low motion sessions 0.95 years (t = 2.11, p = 0.035) for VBM analysis as well as 3.46 years (t = 11.45, p < 0.0001) for high motion and 2.28 years (t = 7.54, p < 0.0001) for low motion based on cortical thickness. In addition, delta age was significantly associated with motion severity as evaluated by visual rating 0.45 years per rating level (t = 4.59, p < 0.0001) for VBM analysis and 0.83 years per motion level (t = 12.89, p < 0.0001) for cortical thickness analysis. Motion in the scanner can significantly impact brain age estimates, and needs to be accounted for as a confound, particularly when studying populations that are known to have higher levels of motion in the scanner. These results have significant implications for brain age studies in aging and neurodegeneration. Based on these findings, we recommend assessment and inclusion of visual motion ratings in such studies. In cases that the visual rating proves prohibitive, we recommend the inclusion of normalized Euler number from FreeSurfer as defined in the manuscript as a covariate in the models.
脑龄差距(BAG)被定义为大脑预测年龄与个体实际年龄之间的差异。基于磁共振成像(MRI)的BAG可以量化脑老化加速情况,并用于推断脑健康状况,因为老化与疾病相互作用。扫描仪中的运动是常见现象,会影响采集到的MRI数据,并成为推导模型中的主要混杂因素。因此,与年龄相关的头部运动变化可能会影响观察到的与年龄相关的差异。然而,结构MRI估计的头部运动与BAG之间的关系尚未得到系统研究。本研究的目的是评估运动对基于体素形态学(VBM)的BAG的影响。数据来自两个来源:i)来自剑桥衰老与神经科学中心(CamCAN)的T1加权(T1w)MRI用于训练脑龄预测模型,ii)来自运动相关伪影(MR-ART)数据集的T1w MRI用于评估运动对BAG的影响。MR-ART包括一个无运动和两个受运动影响(一个低运动和一个高运动)的3D T1w MRI。我们还从0到5对MR-ART MRI的运动水平进行了视觉评分,0表示无运动,5表示高运动水平。所有图像均通过标准VBM流程进行预处理。然后使用皮质和皮质下区域的灰质密度来训练脑龄预测模型,并评估BAG与MRI运动之间的关系。主成分分析用于进行降维并提取基于VBM的特征。通过回归去除实际年龄解释的年龄增量部分来估计BAG。线性混合效应模型用于研究BAG与运动时段以及运动严重程度之间的关系,将参与者ID作为随机效应。我们使用基于FreeSurfer 7.4.1的皮质厚度重复相同分析,并比较基于体积和基于表面的脑形态测量方法的结果。与无诱导运动的时段相比,高运动时段的预测年龄增量显著更高,VBM分析为2.35岁(t = 5.17,p < 0.0001),低运动时段为0.95岁(t = 2.11,p = 0.035);基于皮质厚度的分析中,高运动为3.46岁(t = 11.45,p < 0.0001),低运动为2.28岁(t = 7.54,p < 0.0001)。此外,年龄增量与视觉评分评估的运动严重程度显著相关,VBM分析中每个评分水平为0.45岁(t = 4.59,p < 0.0001),皮质厚度分析中每个运动水平为0.83岁(t = 12.89,p < 0.0001)。扫描仪中的运动可显著影响脑龄估计,需要将其作为混杂因素考虑,特别是在研究已知在扫描仪中有较高运动水平的人群时。这些结果对衰老和神经退行性变的脑龄研究具有重要意义。基于这些发现,我们建议在此类研究中评估并纳入视觉运动评分。在视觉评分不可行的情况下,我们建议在模型中纳入手稿中定义的来自FreeSurfer的归一化欧拉数作为协变量。