Kocar Thomas D, Behler Anna, Leinert Christoph, Denkinger Michael, Ludolph Albert C, Müller Hans-Peter, Kassubek Jan
Department of Neurology, University of Ulm, Ulm, Germany.
Geriatric Center Ulm, Agaplesion Bethesda Ulm, University of Ulm, Ulm, Germany.
Front Aging Neurosci. 2022 Oct 20;14:999787. doi: 10.3389/fnagi.2022.999787. eCollection 2022.
Human aging is characterized by progressive loss of physiological functions. To assess changes in the brain that occur with increasing age, the concept of brain aging has gained momentum in neuroimaging with recent advancements in statistical regression and machine learning (ML). A common technique to assess the brain age of a person is, first, fitting a regression model to neuroimaging data from a group of healthy subjects, and then, using the resulting model for age prediction. Although multiparametric MRI-based models generally perform best, models solely based on diffusion tensor imaging have achieved similar results, with the benefits of faster data acquisition and better replicability across scanners and field strengths. In the present study, we developed an artificial neural network (ANN) for brain age prediction based upon tract-based fractional anisotropy (FA). Consequently, we investigated if this age-prediction model could also be used for non-linear age correction of white matter diffusion metrics in healthy adults. The brain age prediction accuracy of the ANN ( = 0.47) was similar to established multimodal models. The comparison of the ANN-based age-corrected FA with the tract-wise linear age-corrected FA resulted in an value of 0.90 [0.82; 0.93] and a mean difference of 0.00 [-0.04; 0.05] for all tract systems combined. In conclusion, this study demonstrated the applicability of complex ANN models to non-linear age correction of tract-based diffusion metrics as a proof of concept.
人类衰老的特征是生理功能逐渐丧失。为了评估随着年龄增长大脑发生的变化,随着统计回归和机器学习(ML)的最新进展,大脑衰老的概念在神经影像学中得到了越来越多的关注。评估一个人脑年龄的常用技术是,首先,将回归模型拟合到一组健康受试者的神经影像数据,然后,使用所得模型进行年龄预测。尽管基于多参数MRI的模型通常表现最佳,但仅基于扩散张量成像的模型也取得了类似的结果,具有数据采集更快以及在不同扫描仪和场强下更好的可重复性的优点。在本研究中,我们基于基于纤维束的分数各向异性(FA)开发了一种用于脑年龄预测的人工神经网络(ANN)。因此,我们研究了这种年龄预测模型是否也可用于健康成年人白质扩散指标的非线性年龄校正。ANN的脑年龄预测准确性(= 0.47)与已建立的多模态模型相似。将基于ANN的年龄校正后的FA与基于纤维束的线性年龄校正后的FA进行比较,所有纤维束系统组合的相关系数值为0.90 [0.82; 0.93],平均差异为0.00 [-0.04; 0.05]。总之,本研究证明了复杂的ANN模型作为概念验证可用于基于纤维束的扩散指标的非线性年龄校正。