Sihag Saurabh, Mateos Gonzalo, McMillan Corey, Ribeiro Alejandro
University of Pennsylvania, Philadelphia, PA.
University of Rochester, Rochester, NY.
ArXiv. 2023 Oct 27:arXiv:2305.18370v3.
In computational neuroscience, there has been an increased interest in developing machine learning algorithms that leverage brain imaging data to provide estimates of "brain age" for an individual. Importantly, the discordance between brain age and chronological age (referred to as "brain age gap") can capture accelerated aging due to adverse health conditions and therefore, can reflect increased vulnerability towards neurological disease or cognitive impairments. However, widespread adoption of brain age for clinical decision support has been hindered due to lack of transparency and methodological justifications in most existing brain age prediction algorithms. In this paper, we leverage coVariance neural networks (VNN) to propose an explanation-driven and anatomically interpretable framework for brain age prediction using cortical thickness features. Specifically, our brain age prediction framework extends beyond the coarse metric of brain age gap in Alzheimer's disease (AD) and we make two important observations: (i) VNNs can assign anatomical interpretability to elevated brain age gap in AD by identifying contributing brain regions, (ii) the interpretability offered by VNNs is contingent on their ability to exploit specific eigenvectors of the anatomical covariance matrix. Together, these observations facilitate an explainable and anatomically interpretable perspective to the task of brain age prediction.
在计算神经科学领域,人们对开发利用脑成像数据为个体提供“脑龄”估计的机器学习算法越来越感兴趣。重要的是,脑龄与实际年龄之间的差异(称为“脑龄差距”)可以捕捉由于不良健康状况导致的加速衰老,因此可以反映出对神经疾病或认知障碍的易感性增加。然而,由于大多数现有的脑龄预测算法缺乏透明度和方法学依据,脑龄在临床决策支持中的广泛应用受到了阻碍。在本文中,我们利用协方差神经网络(VNN)提出了一个基于皮层厚度特征的、由解释驱动且具有解剖学可解释性的脑龄预测框架。具体而言,我们的脑龄预测框架超越了阿尔茨海默病(AD)中脑龄差距的粗略度量,并且我们有两个重要发现:(i)VNN可以通过识别有贡献的脑区,为AD中升高的脑龄差距赋予解剖学可解释性;(ii)VNN提供的可解释性取决于它们利用解剖协方差矩阵特定特征向量的能力。这些发现共同为脑龄预测任务提供了一个可解释且具有解剖学可解释性的视角。