Thovinakere Nagashree, Ghosh Satrajit S, Itturia-Medina Yasser, Geddes Maiya R
The Neuro, Department of Neurology and Neurosurgery, Faculty of Medicine, McGill University, Montreal, QC, Canada.
Rotman Research Institute, University of Toronto, Toronto, Canada.
medRxiv. 2025 Jan 9:2024.09.30.24314678. doi: 10.1101/2024.09.30.24314678.
Physical activity is essential for preventing cognitive decline, stroke and dementia in older adults. A new cardiovascular diagnosis offers a critical window for positive lifestyle changes. However, sustaining physical activity behavior change remains challenging and the underlying mechanisms are poorly understood.
To identify the neural, behavioral and contextual predictors of successful longer-term behavior change after a new cardiovascular diagnosis, we used support vector machine learning to predict changes in moderate-to-vigorous physical activity over four years in 295 cognitively unimpaired older adults from the UK Biobank, testing three models that incorporated baseline: (i) demographic, cognitive, and contextual factors, (ii) baseline resting-state functional connectivity alone, and (iii) combined multimodal features across all predictors.
The combined multi-modal model had the highest predictive power (r=0.28, p=0.001). Key predictors included greenspace access, social support, retirement status, executive function, and between-network functional connectivity within the default mode, frontoparietal control and salience/ventral attention networks.
These findings underscore the importance of social and structural determinants of health and uncover neural mechanisms that may support lifestyle modifications. In addition to furthering our understanding of the mechanisms underlying successful physical activity behavior change, these findings help to guide the design of interventions and health policy with the ultimate goal of preventing cardiovascular disease burden and late-life cognitive decline.
体育活动对于预防老年人认知能力下降、中风和痴呆至关重要。新的心血管疾病诊断为积极的生活方式改变提供了关键契机。然而,维持体育活动行为改变仍然具有挑战性,其潜在机制也知之甚少。
为了确定新的心血管疾病诊断后长期成功行为改变的神经、行为和情境预测因素,我们使用支持向量机学习来预测英国生物银行中295名认知未受损老年人四年中中度至剧烈体育活动的变化,测试了三种纳入基线的模型:(i)人口统计学、认知和情境因素,(ii)仅基线静息态功能连接,以及(iii)所有预测因素的组合多模态特征。
组合多模态模型具有最高的预测能力(r = 0.28,p = 0.001)。关键预测因素包括绿地可达性、社会支持、退休状态、执行功能,以及默认模式、额顶叶控制和突显/腹侧注意网络内的网络间功能连接。
这些发现强调了健康的社会和结构决定因素的重要性,并揭示了可能支持生活方式改变的神经机制。除了加深我们对成功的体育活动行为改变潜在机制的理解之外,这些发现有助于指导干预措施和健康政策的设计,最终目标是预防心血管疾病负担和晚年认知能力下降。