Baron Giorgia, Silvestri Erica, Benozzo Danilo, Chiuso Alessandro, Bertoldo Alessandra
Department of Information Engineering, University of Padova, Padova 35131, Italy.
Department of Information Engineering, University of Padova, Padova 35131, Italy
J Neurosci. 2025 Jan 1;45(1):e1940232024. doi: 10.1523/JNEUROSCI.1940-23.2024.
Age-related changes in the BOLD response could reflect neurovascular coupling modifications rather than simply impairments in neural functioning. In this study, we propose the use of a sparse dynamic causal model (sDCM) to decouple neuronal and vascular factors in the BOLD signal, with the aim of characterizing the whole-brain spatial pattern of hemodynamic sensitivity to healthy aging, as well as to test the role of hemodynamic features as independent predictors in an age-classification model. sDCM was applied to the resting-state functional magnetic resonance imaging data of a cohort of 126 healthy individuals in a wide age range (31 females), providing reliable estimates of the hemodynamic response function (HRF) for each subject and each region of interest. Then, some features characterizing each HRF curve were extracted and used to fit a multivariate logistic regression model predicting the age class of each individual. Ultimately, we tested the final predictive model on an independent dataset of 338 healthy subjects (173 females) selected from the Human Connectome Project in Aging and Development cohorts. Our results entail the spatial heterogeneity of the age effects on the hemodynamic component, since its impact resulted to be strongly region- and population-specific, discouraging any space-invariant-corrective procedures that attempt to correct for vascular factors when carrying out functional studies involving groups with different ages. Moreover, we demonstrated that a strong interaction exists between certain right-hemisphere hemodynamic features and age, further supporting the essential role of the hemodynamic factor as independent predictor of biological aging, rather than a simple confounding variable.
与年龄相关的血氧水平依赖(BOLD)反应变化可能反映神经血管耦合的改变,而不仅仅是神经功能的损伤。在本研究中,我们建议使用稀疏动态因果模型(sDCM)来分离BOLD信号中的神经元和血管因素,目的是描绘全脑对健康衰老的血流动力学敏感性的空间模式,以及测试血流动力学特征在年龄分类模型中作为独立预测因子的作用。sDCM被应用于126名年龄范围广泛的健康个体(31名女性)的静息态功能磁共振成像数据,为每个受试者和每个感兴趣区域提供了血流动力学反应函数(HRF)的可靠估计。然后,提取表征每个HRF曲线的一些特征,并用于拟合预测每个个体年龄类别的多元逻辑回归模型。最终,我们在从人类连接组计划衰老与发育队列中选取的338名健康受试者(173名女性)的独立数据集上测试了最终预测模型。我们的结果表明年龄对血流动力学成分的影响存在空间异质性,因为其影响在很大程度上具有区域和人群特异性,这使得在进行涉及不同年龄组的功能研究时,任何试图校正血管因素的空间不变校正程序都不可取。此外,我们证明了某些右半球血流动力学特征与年龄之间存在强烈的相互作用,进一步支持了血流动力学因素作为生物衰老独立预测因子而非简单混杂变量的重要作用。