Ilvesmäki Martti, Ferdinando Hany, Noponen Kai, Seppänen Tapio, Korhonen Vesa, Kiviniemi Vesa, Myllylä Teemu
Research Unit of Health Sciences and Technology, University of Oulu, Oulu, Finland.
Center for Machine Vision and Signal Analysis Research Unit, University of Oulu, Oulu, Finland.
Sci Rep. 2025 Jan 25;15(1):3166. doi: 10.1038/s41598-025-87645-w.
Optical techniques, such as functional near-infrared spectroscopy (fNIRS), contain high potential for the development of non-invasive wearable systems for evaluating cerebral vascular condition in aging, due to their portability and ability to monitor real-time changes in cerebral hemodynamics. In this study, thirty-six healthy adults were measured by single channel fNIRS to explore differences between two age groups using machine learning (ML). The subjects, measured during functional magnetic resonance imaging (fMRI) at Oulu University Hospital, were divided into young (age ≤ 32) and elderly (age ≥ 57) groups. Brain pulses were extracted from fNIRS using a single 830 nm wavelength. Four feature sets were derived from log-normal parameters estimated by pulse decomposition algorithm. ML experiments utilized support vector machines and random forest learners, along with maximum relevance minimum redundancy and principal component analysis for feature selection. Performance with increasing sample size was estimated using learning curve method. The best mean balanced accuracies for each feature set were over 75% (75.9%, 76.4%, 79.3%, 76.9%), indicating the pulse features containing age related information. Learning curves indicated stable classification performance with increasing sample size. The results demonstrate the potential of using single channel fNIRS in the analysis of aging.
诸如功能性近红外光谱技术(fNIRS)之类的光学技术,因其便携性以及监测脑血流动力学实时变化的能力,在开发用于评估老年人脑血管状况的无创可穿戴系统方面具有巨大潜力。在本研究中,通过单通道fNIRS对36名健康成年人进行测量,以利用机器学习(ML)探索两个年龄组之间的差异。在奥卢大学医院进行功能磁共振成像(fMRI)测量期间的受试者被分为年轻组(年龄≤32岁)和老年组(年龄≥57岁)。使用单个830 nm波长从fNIRS中提取脑脉冲。从通过脉冲分解算法估计的对数正态参数中导出四个特征集。ML实验利用支持向量机和随机森林学习器,以及最大相关最小冗余和主成分分析进行特征选择。使用学习曲线方法估计随着样本量增加的性能。每个特征集的最佳平均平衡准确率超过75%(75.9%、76.4%、79.3%、76.9%),表明脉冲特征包含与年龄相关的信息。学习曲线表明随着样本量增加分类性能稳定。结果证明了使用单通道fNIRS分析衰老情况的潜力。