Accurate detection of acute sleep deprivation using a metabolomic biomarker-A machine learning approach.

Journal: Science advances

Volume: 10

Issue: 10

Year of Publication: 2024

Affiliated Institutions:  School of Psychological Sciences and Turner Institute for Brain and Mental Health, Monash University, Melbourne, Australia. Metabolomics Australia, Bio Molecular Science and Biotechnology Institute, Parkville, Australia.

Abstract summary 

Sleep deprivation enhances risk for serious injury and fatality on the roads and in workplaces. To facilitate future management of these risks through advanced detection, we developed and validated a metabolomic biomarker of sleep deprivation in healthy, young participants, across three experiments. Bi-hourly plasma samples from 2 × 40-hour extended wake protocols (for train/test models) and 1 × 40-hour protocol with an 8-hour overnight sleep interval were analyzed by untargeted liquid chromatography-mass spectrometry. Using a knowledge-based machine learning approach, five consistently important variables were used to build predictive models. Sleep deprivation (24 to 38 hours awake) was predicted accurately in classification models [versus well-rested (0 to 16 hours)] (accuracy = 94.7%/AUC 99.2%, 79.3%/AUC 89.1%) and to a lesser extent in regression ( = 86.1 and 47.8%) models for within- and between-participant models, respectively. Metabolites were identified for replicability/future deployment. This approach for detecting acute sleep deprivation offers potential to reduce accidents through "fitness for duty" or "post-accident analysis" assessments.

Authors & Co-authors:  Jeppe Ftouni Nijagal Grant Lockley Rajaratnam Phillips McConville Tull Anderson

Study Outcome 

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Statistics
Citations : 
Authors :  10
Identifiers
Doi : 10.1126/sciadv.adj6834
SSN : 2375-2548
Study Population
Male,Female
Mesh Terms
Humans
Other Terms
Study Design
Study Approach
Country of Study
Publication Country
United States