论文标题
双向建模和大脑老化的分析,并通过标准化流量
Bidirectional Modeling and Analysis of Brain Aging with Normalizing Flows
论文作者
论文摘要
大脑衰老是一个广泛研究的纵向过程,在该过程中,大脑经历了相当大的形态变化,并提出了各种机器学习方法来分析它。在这种情况下,结构性MR图像和年龄特异性脑形态模板产生的大脑年龄预测是两个引起了很多关注的问题。尽管大多数方法都独立处理这些任务,但我们认为它们是大脑形态与年龄变量之间相同功能双向关系的反向方向。在本文中,我们建议将这种关系与单个条件归一化流程建模,该流程将大脑年龄预测和年龄条件的生成建模以新颖的方式统一。在对这一想法的初步评估中,我们表明,正常的流量脑老化模型可以准确预测脑年龄,同时还能够产生年龄特异性的脑形态模板,这些模板实际上代表了健康人群中典型的衰老趋势。这项工作是迈向统一建模3D脑形态和感兴趣的临床变量之间功能关系的一步。
Brain aging is a widely studied longitudinal process throughout which the brain undergoes considerable morphological changes and various machine learning approaches have been proposed to analyze it. Within this context, brain age prediction from structural MR images and age-specific brain morphology template generation are two problems that have attracted much attention. While most approaches tackle these tasks independently, we assume that they are inverse directions of the same functional bidirectional relationship between a brain's morphology and an age variable. In this paper, we propose to model this relationship with a single conditional normalizing flow, which unifies brain age prediction and age-conditioned generative modeling in a novel way. In an initial evaluation of this idea, we show that our normalizing flow brain aging model can accurately predict brain age while also being able to generate age-specific brain morphology templates that realistically represent the typical aging trend in a healthy population. This work is a step towards unified modeling of functional relationships between 3D brain morphology and clinical variables of interest with powerful normalizing flows.