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Title: Unraveling the interplay of circadian rhythm and sleep deprivation on mood: A Real-World Study on first-year physicians
The interplay between circadian rhythms, time awake, and mood remains poorly understood in the real-world. Individuals in high-stress occupations with irregular schedules or nighttime shifts are particularly vulnerable to depression and other mood disorders. Advances in wearable technology have provided the opportunity to study these interactions outside of a controlled laboratory environment. Here, we examine the effects of circadian rhythms and time awake on mood in first-year physicians using wearables. Continuous heart rate, step count, sleep data, and daily mood scores were collected from 2,602 medical interns across 168,311 days of Fitbit data. Circadian time and time awake were extracted from minute-by-minute wearable heart rate and motion measurements. Linear mixed modeling determined the relationship between mood, circadian rhythm, and time awake. In this cohort, mood was modulated by circadian timekeeping (p<0.001). Furthermore, we show that increasing time awake both deteriorates mood (p<0.001) and amplifies mood’s circadian rhythm nonlinearly. These findings demonstrate the contributions of both circadian rhythms and sleep deprivation to underlying mood and show how these factors can be studied in real-world settings using Fitbits. They underscore the promising opportunity to harness wearables in deploying chronotherapies for psychiatric illness.  more » « less
Award ID(s):
2052499
PAR ID:
10649716
Author(s) / Creator(s):
; ; ;
Editor(s):
Pani, Danilo
Publisher / Repository:
PLOS Digital Health
Date Published:
Journal Name:
PLOS Digital Health
Volume:
3
Issue:
1
ISSN:
2767-3170
Page Range / eLocation ID:
e0000439
Format(s):
Medium: X
Sponsoring Org:
National Science Foundation
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