Integrative Modeling of Accelerometry-Derived Sleep, Physical Activity, and Circadian Rhythm Domains With Current or Remitted Major Depression.

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Version: Final published version
License: CC BY 4.0
Serval ID
serval:BIB_E35272477918
Type
Article: article from journal or magazin.
Collection
Publications
Institution
Title
Integrative Modeling of Accelerometry-Derived Sleep, Physical Activity, and Circadian Rhythm Domains With Current or Remitted Major Depression.
Journal
JAMA psychiatry
Author(s)
Kang S.J., Leroux A., Guo W., Dey D., Strippoli M.F., Di J., Vaucher J., Marques-Vidal P., Vollenweider P., Preisig M., Merikangas K.R., Zipunnikov V.
ISSN
2168-6238 (Electronic)
ISSN-L
2168-622X
Publication state
Published
Issued date
01/09/2024
Peer-reviewed
Oui
Volume
81
Number
9
Pages
911-918
Language
english
Notes
Publication types: Journal Article
Publication Status: ppublish
Abstract
Accelerometry has been increasingly used as an objective index of sleep, physical activity, and circadian rhythms in people with mood disorders. However, most prior research has focused on sleep or physical activity alone without consideration of the strong within- and cross-domain intercorrelations; and few studies have distinguished between trait and state profiles of accelerometry domains in major depressive disorder (MDD).
To identify joint and individual components of the domains derived from accelerometry, including sleep, physical activity, and circadian rhythmicity using the Joint and Individual Variation Explained method (JIVE), a novel multimodal integrative dimension-reduction technique; and to examine associations between joint and individual components with current and remitted MDD.
This cross-sectional study examined data from the second wave of a population cohort study from Lausanne, Switzerland. Participants included 2317 adults (1164 without MDD, 185 with current MDD, and 968 with remitted MDD) with accelerometry for at least 7 days. Statistical analysis was conducted from January 2021 to June 2023.
Features derived from accelerometry for 14 days; current and remitted MDD. Logistic regression adjusted for age, sex, body mass index, and anxiety and substance use disorders.
Among 2317 adults included in the study, 1261 (54.42%) were female, and mean (SD) age was 61.79 (9.97) years. JIVE reduced 28 accelerometry features to 3 joint and 6 individual components (1 sleep, 2 physical activity, 3 circadian rhythms). Joint components explained 58.5%, 79.5%, 54.5% of the total variation in sleep, physical activity, and circadian rhythm domains, respectively. Both current and remitted depression were associated with the first 2 joint components that were distinguished by the salience of high-intensity physical activity and amplitude of circadian rhythm and timing of both sleep and physical activity, respectively. MDD had significantly weaker circadian rhythmicity.
Application of a novel multimodal dimension-reduction technique demonstrates the importance of joint influences of physical activity, circadian rhythms, and timing of both sleep and physical activity with MDD; dampened circadian rhythmicity may constitute a trait marker for MDD. This work illustrates the value of accelerometry as a potential biomarker for subtypes of depression and highlights the importance of consideration of the full 24-hour sleep-wake cycle in future studies.
Keywords
Humans, Depressive Disorder, Major/physiopathology, Female, Accelerometry, Male, Circadian Rhythm/physiology, Cross-Sectional Studies, Exercise/physiology, Middle Aged, Adult, Sleep/physiology, Switzerland, Aged
Pubmed
Web of science
Open Access
Yes
Create date
14/06/2024 12:32
Last modification date
24/12/2024 7:22
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