Department of Health and Functioning, Western Norway University of Applied Sciences, Bergen, Norway.
Norwegian Centre for Mental Disorders Research (NORMENT), Oslo University Hospital & Institute of Clinical Medicine, University of Oslo, Oslo, Norway.
Brain Behav. 2023 Oct;13(10):e3219. doi: 10.1002/brb3.3219. Epub 2023 Aug 16.
Brain age, the estimation of a person's age from magnetic resonance imaging (MRI) parameters, has been used as a general indicator of health. The marker requires however further validation for application in clinical contexts. Here, we show how brain age predictions perform for the same individual at various time points and validate our findings with age-matched healthy controls.
We used densely sampled T1-weighted MRI data from four individuals (from two densely sampled datasets) to observe how brain age corresponds to age and is influenced by acquisition and quality parameters. For validation, we used two cross-sectional datasets. Brain age was predicted by a pretrained deep learning model.
We found small within-subject correlations between age and brain age. We also found evidence for the influence of field strength on brain age which replicated in the cross-sectional validation data and inconclusive effects of scan quality.
The absence of maturation effects for the age range in the presented sample, brain age model bias (including training age distribution and field strength), and model error are potential reasons for small relationships between age and brain age in densely sampled longitudinal data. Clinical applications of brain age models should consider of the possibility of apparent biases caused by variation in the data acquisition process.
大脑年龄是根据磁共振成像(MRI)参数来估计一个人的年龄,它已被用作健康的一般指标。然而,该标志物需要进一步验证,才能在临床环境中应用。在这里,我们展示了同一个体在不同时间点的大脑年龄预测表现,并使用与年龄匹配的健康对照组验证了我们的发现。
我们使用来自四个个体(来自两个密集采样数据集)的密集采样 T1 加权 MRI 数据,观察大脑年龄与年龄的对应关系,并受采集和质量参数的影响。为了验证,我们使用了两个横截面数据集。大脑年龄是由经过预训练的深度学习模型预测的。
我们发现年龄和大脑年龄之间存在较小的个体内相关性。我们还发现了磁场强度对大脑年龄的影响的证据,这种影响在横断面验证数据中得到了复制,而扫描质量的影响则不确定。
在呈现的样本中,年龄范围内没有成熟效应,大脑年龄模型偏差(包括训练年龄分布和磁场强度)以及模型误差是在密集采样的纵向数据中年龄和大脑年龄之间关系较小的潜在原因。大脑年龄模型的临床应用应考虑到数据采集过程变化引起的明显偏差的可能性。