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Brain Age Estimation from Overnight Sleep Electroencephalography with Multi-Flow Sequence Learning.

Di ZhangYichong SheJin-Bo SunYapeng CuiXuejuan YangXiao ZengWei Qin
Published in: Nature and science of sleep (2024)
The multi-flow deep learning model proposed in this study, based on overnight EEG, represents a more accurate approach for estimating brain age. The utilization of overnight sleep EEG for the prediction of brain age is both cost-effective and adept at capturing dynamic changes. These findings demonstrate the potential of EEG in predicting brain age, presenting a noninvasive and accessible method for assessing brain aging.
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