How well do neural signatures of resting-state EEG detect consciousness? A large-scale clinical study.
Xiulin MaYu QiChuan XuYijie WengJie YuXuyun SunYamei YuYuehao WuJian GaoJingqi LiYousheng ShuShumin DuanBen-Yan LuoGang PanPublished in: Human brain mapping (2024)
The assessment of consciousness states, especially distinguishing minimally conscious states (MCS) from unresponsive wakefulness states (UWS), constitutes a pivotal role in clinical therapies. Despite that numerous neural signatures of consciousness have been proposed, the effectiveness and reliability of such signatures for clinical consciousness assessment still remains an intense debate. Through a comprehensive review of the literature, inconsistent findings are observed about the effectiveness of diverse neural signatures. Notably, the majority of existing studies have evaluated neural signatures on a limited number of subjects (usually below 30), which may result in uncertain conclusions due to small data bias. This study presents a systematic evaluation of neural signatures with large-scale clinical resting-state electroencephalography (EEG) signals containing 99 UWS, 129 MCS, 36 emergence from the minimally conscious state, and 32 healthy subjects (296 total) collected over 3 years. A total of 380 EEG-based metrics for consciousness detection, including spectrum features, nonlinear measures, functional connectivity, and graph-based measures, are summarized and evaluated. To further mitigate the effect of data bias, the evaluation is performed with bootstrap sampling so that reliable measures can be obtained. The results of this study suggest that relative power in alpha and delta serve as dependable indicators of consciousness. With the MCS group, there is a notable increase in the phase lag index-related connectivity measures and enhanced functional connectivity between brain regions in comparison to the UWS group. A combination of features enables the development of an automatic detector of conscious states.
Keyphrases
- resting state
- functional connectivity
- genome wide
- randomized controlled trial
- systematic review
- machine learning
- clinical trial
- electronic health record
- big data
- multiple sclerosis
- computed tomography
- artificial intelligence
- dna methylation
- magnetic resonance
- loop mediated isothermal amplification
- data analysis
- white matter