利用超短、便携、低成本的测量方法,研究心率变异和脑电图与幸福感的相关性。

4区 医学 Q3 Neuroscience Progress in brain research Pub Date : 2024-01-01 Epub Date: 2024-05-31 DOI:10.1016/bs.pbr.2024.04.004
Cédric Cannard, Arnaud Delorme, Helané Wahbeh
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引用次数: 0

摘要

可穿戴脑电图(EEG)和心电图(ECG)设备可为在真实世界环境中评估健康状况(WB)提供一种无创、用户友好且经济高效的方法。然而,在处理信号伪影(如环境噪声和运动)和确定可靠的生物标志物方面仍然存在挑战。我们评估了使用便携式硬件识别潜在脑电图和心率变异性(HRV)与幸福感相关性的可行性。我们使用连接到 4 通道可穿戴脑电图耳机的腕部心电图电极,在真实世界环境中同时收集了 60 人的超短(2 分钟)脑电图和心电图数据。使用开源 EEGLAB BrainBeats 插件对这些数据进行处理、信号质量评估和分析,以提取几个理论驱动的指标作为 WB 的潜在相关指标。即,脑电图的个体α频率(IAF)、额叶和后部α不对称以及信号熵。心率变异的 SDNN、低频/高频(LF/HF)比率、Poincaré SD1/SD2 比率和信号熵。我们采用成对相关法、稳健的斯皮尔曼相关法和多重比较校正法评估了这些特征与 WB 主要维度(享乐性、优裕性、整体性、身体和社交)之间的潜在关联。只有 8 份文件的信号质量较差,被排除在分析之外。Eudaimonic(心理)WB 与 SDNN 和 LF/HF 比值呈正相关。脑电图后阿尔法不对称与生理 WB(即睡眠和疼痛水平)呈正相关。其他指标之间以及脑电图和心率变异指标之间均无相关性。通过这些生理指标,可以使用可扩展、用户友好的工具在真实世界环境中快速、客观地评估幸福感。
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HRV and EEG correlates of well-being using ultra-short, portable, and low-cost measurements.

Wearable electroencephalography (EEG) and electrocardiography (ECG) devices may offer a non-invasive, user-friendly, and cost-effective approach for assessing well-being (WB) in real-world settings. However, challenges remain in dealing with signal artifacts (such as environmental noise and movements) and identifying robust biomarkers. We evaluated the feasibility of using portable hardware to identify potential EEG and heart-rate variability (HRV) correlates of WB. We collected simultaneous ultrashort (2-min) EEG and ECG data from 60 individuals in real-world settings using a wrist ECG electrode connected to a 4-channel wearable EEG headset. These data were processed, assessed for signal quality, and analyzed using the open-source EEGLAB BrainBeats plugin to extract several theory-driven metrics as potential correlates of WB. Namely, the individual alpha frequency (IAF), frontal and posterior alpha asymmetry, and signal entropy for EEG. SDNN, the low/high frequency (LF/HF) ratio, the Poincaré SD1/SD2 ratio, and signal entropy for HRV. We assessed potential associations between these features and the main WB dimensions (hedonic, eudaimonic, global, physical, and social) implementing a pairwise correlation approach, robust Spearman's correlations, and corrections for multiple comparisons. Only eight files showed poor signal quality and were excluded from the analysis. Eudaimonic (psychological) WB was positively correlated with SDNN and the LF/HF ratio. EEG posterior alpha asymmetry was positively correlated with Physical WB (i.e., sleep and pain levels). No relationships were found with the other metrics, or between EEG and HRV metrics. These physiological metrics enable a quick, objective assessment of well-being in real-world settings using scalable, user-friendly tools.

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来源期刊
Progress in brain research
Progress in brain research 医学-神经科学
CiteScore
5.20
自引率
0.00%
发文量
174
审稿时长
6-12 weeks
期刊介绍: Progress in Brain Research is the most acclaimed and accomplished series in neuroscience. The serial is well-established as an extensive documentation of contemporary advances in the field. The volumes contain authoritative reviews and original articles by invited specialists. The rigorous editing of the volumes assures that they will appeal to all laboratory and clinical brain research workers in the various disciplines: neuroanatomy, neurophysiology, neuropharmacology, neuroendocrinology, neuropathology, basic neurology, biological psychiatry and the behavioral sciences.
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