Department of Statistics, Stanford University, Stanford, CA, United States of America.
PLoS One. 2024 May 30;19(5):e0300720. doi: 10.1371/journal.pone.0300720. eCollection 2024.
Alterations in the brain's connectivity or the interactions among brain regions have been studied with the aid of resting state (rs)fMRI data attained from large numbers of healthy subjects of various demographics. This has been instrumental in providing insight into how a phenotype as fundamental as age affects the brain. Although machine learning (ML) techniques have already been deployed in such studies, novel questions are investigated in this work. We study whether young brains develop properties that progressively resemble those of aged brains, and if the aging dynamics of older brains provide information about the aging trajectory in young subjects. The degree of a prospective monotonic relationship will be quantified, and hypotheses of brain aging trajectories will be tested via ML. Furthermore, the degree of functional connectivity across the age spectrum of three datasets will be compared at a population level and across sexes. The findings scrutinize similarities and differences among the male and female subjects at greater detail than previously performed.
利用从大量不同人口统计学特征的健康受试者中获得的静息状态 (rs) fMRI 数据,研究了大脑连接或大脑区域之间相互作用的变化。这有助于深入了解年龄等基本表型如何影响大脑。尽管机器学习 (ML) 技术已经在这些研究中得到应用,但本工作中仍有新的问题需要研究。我们研究年轻人的大脑是否会发展出逐渐类似于老年人大脑的特性,以及老年人的衰老动态是否为年轻人的衰老轨迹提供信息。将定量评估这种预期的单调关系程度,并通过 ML 检验大脑衰老轨迹的假设。此外,将在人口水平上和跨性别比较三个数据集的整个年龄范围内的功能连接程度。研究结果比以前的研究更详细地研究了男性和女性受试者之间的相似性和差异。