Pulling the covers in electronic health records for an association study with self-reported sleep behaviors.
Seth D RhoadesLisa BastaracheJoshua C DennyJacob J HugheyPublished in: Chronobiology international (2018)
The electronic health record (EHR) contains rich histories of clinical care, but has not traditionally been mined for information related to sleep habits. Here, we performed a retrospective EHR study based on a cohort of 3,652 individuals with self-reported sleep behaviors documented from visits to the sleep clinic. These individuals were obese (mean body mass index 33.6 kg/m2) and had a high prevalence of sleep apnea (60.5%), however we found sleep behaviors largely concordant with prior prospective cohort studies. In our cohort, average wake time was 1 hour later and average sleep duration was 40 minutes longer on weekends than on weekdays (p < 10-12). Sleep duration varied considerably as a function of age and tended to be longer in females and in whites. Additionally, through phenome-wide association analyses, we found an association of long weekend sleep with depression, and an unexpectedly large number of associations of long weekday sleep with mental health and neurological disorders (q < 0.05). We then sought to replicate previously published genetic associations with morning/evening preference on a subset of our cohort with extant genotyping data (n = 555). While those findings did not replicate in our cohort, a polymorphism (rs3754214) in high linkage disequilibrium with a previously published polymorphism near TARS2 was associated with long sleep duration (p < 0.01). Collectively, our results highlight the potential of the EHR for uncovering the correlates of human sleep in real-world populations.
Keyphrases
- electronic health record
- sleep quality
- physical activity
- body mass index
- mental health
- clinical decision support
- sleep apnea
- depressive symptoms
- type diabetes
- healthcare
- primary care
- genome wide
- systematic review
- palliative care
- blood pressure
- metabolic syndrome
- endothelial cells
- risk assessment
- dna methylation
- human health
- health information
- climate change
- social media
- data analysis
- pain management
- single cell