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利用基于深度学习的睡眠脑电图和眼电图频率分析进行死亡风险评估。

Mortality risk assessment using deep learning-based frequency analysis of electroencephalography and electrooculography in sleep.

作者信息

Kristjánsson Teitur Óli, Stone Katie L, Sorensen Helge B D, Brink-Kjaer Andreas, Mignot Emmanuel, Jennum Poul

机构信息

Department of Health Technology, Technical University of Denmark, Kongens Lyngby, Denmark.

Psychiatry and Behavioral Sciences, Stanford University, Palo Alto, CA, USA.

出版信息

Sleep. 2025 Feb 10;48(2). doi: 10.1093/sleep/zsae219.

Abstract

STUDY OBJECTIVES

To assess whether the frequency content of electroencephalography (EEG) and electrooculography (EOG) during nocturnal polysomnography (PSG) can predict all-cause mortality.

METHODS

Power spectra from PSGs of 8716 participants, including from the MrOS Sleep Study and the Sleep Heart Health Study, were analyzed in deep learning-based survival models. The best-performing model was further examined using SHapley Additive Explanation (SHAP) for data-driven sleep-stage specific definitions of power bands, which were evaluated in predicting mortality using Cox Proportional Hazards models.

RESULTS

Survival analyses, adjusted for known covariates, identified multiple EEG frequency bands across all sleep stages predicting all-cause mortality. For EEG, we found an all-cause mortality hazard ratio (HR) of 0.90 (CI: 95% 0.85 to 0.96) for 12-15 Hz in N2, 0.86 (CI: 95% 0.82 to 0.91) for 0.75-1.5 Hz in N3, and 0.87 (CI: 95% 0.83 to 0.92) for 14.75-33.5 Hz in rapid-eye-movement sleep. For EOG, we found several low-frequency effects including an all-cause mortality HR of 1.19 (CI: 95% 1.11 to 1.28) for 0.25 Hz in N3, 1.11 (CI: 95% 1.03 to 1.21) for 0.75 Hz in N1, and 1.11 (CI: 95% 1.03 to 1.20) for 1.25-1.75 Hz in wake. The gain in the concordance index (C-index) for all-cause mortality is minimal, with only a 0.24% increase: The best single mortality predictor was EEG N3 (0-0.5 Hz) with a C-index of 77.78% compared to 77.54% for confounders alone.

CONCLUSIONS

Spectral power features, possibly reflecting abnormal sleep microstructure, are associated with mortality risk. These findings add to a growing literature suggesting that sleep contains incipient predictors of health and mortality.

摘要

研究目的

评估夜间多导睡眠图(PSG)期间脑电图(EEG)和眼电图(EOG)的频率成分是否能预测全因死亡率。

方法

在基于深度学习的生存模型中分析了来自8716名参与者(包括MrOS睡眠研究和睡眠心脏健康研究)的PSG功率谱。使用夏普利加法解释(SHAP)对表现最佳的模型进行进一步检查,以获得基于数据驱动的睡眠阶段特定功率带定义,并使用Cox比例风险模型评估其对死亡率的预测能力。

结果

在对已知协变量进行调整后的生存分析中,确定了所有睡眠阶段的多个EEG频段可预测全因死亡率。对于EEG,我们发现N2期12 - 15Hz的全因死亡率风险比(HR)为0.90(CI:95% 0.85至0.96),N3期0.75 - 1.5Hz的HR为0.86(CI:95% 0.82至0.91),快速眼动睡眠期14.75 - 33.5Hz的HR为0.87(CI:95% 0.83至0.92)。对于EOG,我们发现了几个低频效应,包括N3期0.25Hz的全因死亡率HR为1.19(CI:95% 1.11至1.28),N1期0.75Hz的HR为1.11(CI:95% 1.03至1.21),清醒期1.25 - 1.75Hz的HR为1.11(CI:95% 1.03至1.20)。全因死亡率的一致性指数(C指数)增益最小,仅增加了0.24%:最佳的单一死亡率预测指标是EEG N3(0 - 0.5Hz),C指数为77.78%,而仅考虑混杂因素时为77.54%。

结论

频谱功率特征可能反映了异常的睡眠微观结构,与死亡风险相关。这些发现进一步丰富了相关文献,表明睡眠中包含健康和死亡率的早期预测指标。

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