Discovery of High-Risk Clinical Factors That Accelerate Brain Aging in Adults: A Population-Based Machine Learning Study.

IF 11 1区 综合性期刊 Q1 Multidisciplinary Research Pub Date : 2024-10-21 eCollection Date: 2024-01-01 DOI:10.34133/research.0500
Jing Sun, Luyao Wang, Yiwen Gao, Ying Hui, Shuohua Chen, Shouling Wu, Zhenchang Wang, Jiehui Jiang, Han Lv
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Abstract

Introduction: Brain age prediction using neuroimaging data and machine learning algorithms holds significant promise for gaining insights into the development of neurodegenerative diseases. The estimation of brain age may be influenced not only by the imaging modality but also by multidomain clinical factors. However, the degree to which various clinical factors in individuals are associated with brain structure, as well as the comprehensive relationship between these factors and brain aging, is not yet clear. Methods: In this study, multimodal brain magnetic resonance imaging data and longitudinal clinical information were collected from 964 participants in a population-based cohort with 16 years of follow-up in northern China. We developed a machine learning-based algorithm to predict multimodal brain age and compared the estimated brain age gap (BAG) differences among the 5 groups characterized by varying exposures to these high-risk clinical factors. We then estimated modality-specific brain age in the hypertension group based on hypertension-related regional imaging metrics. Results: The results revealed a significantly larger BAG estimated from multimodal neuroimaging in subjects with 4 or 5 risk factors compared to other groups, suggesting an acceleration of brain aging under cumulative exposure to multiple risk factors. The estimated T1-based BAG exhibited a significantly higher level in the hypertensive subjects compared to the normotensive individuals. Conclusion: Our study provides valuable insights into a range of health factors across lifestyle, metabolism, and social context that are reflective of brain aging and also contributes to the advancement of interventions and public health initiatives targeted at the general population aimed at promoting brain health.

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发现加速成人大脑老化的高危临床因素:基于人群的机器学习研究。
导言:利用神经成像数据和机器学习算法进行脑年龄预测,对于深入了解神经退行性疾病的发展具有重要意义。脑年龄的估计不仅会受到成像方式的影响,还会受到多领域临床因素的影响。然而,个人的各种临床因素与大脑结构的关联程度,以及这些因素与大脑衰老之间的综合关系尚不清楚。研究方法在本研究中,我们收集了中国北方一个随访 16 年的人群队列中 964 名参与者的多模态脑磁共振成像数据和纵向临床信息。我们开发了一种基于机器学习的算法来预测多模态脑年龄,并比较了不同暴露于这些高危临床因素的 5 个组别之间估计的脑年龄差距(BAG)差异。然后,我们根据与高血压相关的区域成像指标估算了高血压组的特定模态脑年龄。结果显示结果显示,与其他组别相比,具有 4 或 5 个风险因素的受试者通过多模态神经成像估算出的脑年龄明显更大,这表明在多种风险因素的累积作用下,大脑老化会加速。与血压正常者相比,高血压受试者基于 T1 的估计 BAG 水平明显更高。结论我们的研究对反映脑衰老的生活方式、新陈代谢和社会背景等一系列健康因素提供了宝贵的见解,同时也有助于推进针对普通人群的旨在促进脑健康的干预措施和公共卫生计划。
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来源期刊
Research
Research Multidisciplinary-Multidisciplinary
CiteScore
13.40
自引率
3.60%
发文量
0
审稿时长
14 weeks
期刊介绍: Research serves as a global platform for academic exchange, collaboration, and technological advancements. This journal welcomes high-quality research contributions from any domain, with open arms to authors from around the globe. Comprising fundamental research in the life and physical sciences, Research also highlights significant findings and issues in engineering and applied science. The journal proudly features original research articles, reviews, perspectives, and editorials, fostering a diverse and dynamic scholarly environment.
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