Feng Yixue, Villalón-Reina Julio E, Nir Talia M, Chandio Bramsh Q, Jahanshad Neda, Thompson Paul M
Imaging Genetics Center, Mark and Mary Stevens Institute for Neuroimaging and Informatics, Keck School of Medicine, University of Southern California, Marina del Rey, CA, United States.
bioRxiv. 2024 Aug 19:2024.08.16.608347. doi: 10.1101/2024.08.16.608347.
Brain Age Gap Estimation (BrainAGE) is an estimate of the gap between a person's chronological age (CA) and a measure of their brain's 'biological age' (BA). This metric is often used as a marker of accelerated aging, albeit with some caveats. Age prediction models trained on brain structural and functional MRI have been employed to derive BrainAGE biomarkers, for predicting the risk of neurodegeneration. While voxel-based and along-tract microstructural maps from diffusion MRI have been used to study brain aging, no studies have evaluated along-tract microstructure for computing BrainAGE. In this study, we train machine learning models to predict a person's age using along-tract microstructural profiles from diffusion tensor imaging. We were able to demonstrate differential aging patterns across different white matter bundles and microstructural measures. The novel Bundle Age Gap Estimation (BundleAGE) biomarker shows potential in quantifying risk factors for neurodegenerative diseases and aging, while incorporating finer scale information throughout white matter bundles.
脑年龄差距估计(BrainAGE)是对一个人的实际年龄(CA)与其大脑“生物学年龄”(BA)的衡量指标之间差距的估计。尽管存在一些注意事项,但该指标常被用作加速衰老的标志物。基于脑结构和功能磁共振成像训练的年龄预测模型已被用于推导BrainAGE生物标志物,以预测神经退行性变的风险。虽然基于体素的和来自扩散磁共振成像的沿束微观结构图谱已被用于研究脑衰老,但尚无研究评估沿束微观结构用于计算BrainAGE。在本研究中,我们训练机器学习模型,使用来自扩散张量成像的沿束微观结构轮廓来预测一个人的年龄。我们能够证明不同白质束和微观结构测量中的差异衰老模式。新型的束年龄差距估计(BundleAGE)生物标志物在量化神经退行性疾病和衰老的风险因素方面显示出潜力,同时纳入了整个白质束更精细尺度的信息。