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Accepted for/Published in: JMIR mHealth and uHealth

Date Submitted: Jun 30, 2022
Date Accepted: Aug 26, 2022

The final, peer-reviewed published version of this preprint can be found here:

Associations Between Depression Symptom Severity and Daily-Life Gait Characteristics Derived From Long-Term Acceleration Signals in Real-World Settings: Retrospective Analysis

Zhang Y, Folarin AA, Sun S, Cummins N, Vairavan S, Qian L, Ranjan Y, Rashid Z, Conde P, Stewart C, Laiou P, Sankesara H, Matcham F, White KM, Oetzmann C, Ivan A, Lamers F, Siddi S, Simblett S, Rintala A, Mohr DC, Myin-Germeys I, Wykes T, Haro JM, Penninx BW, Narayan VA, Annas P, Hotopf M, Dobson RJ, RADAR-CNS consortium

Associations Between Depression Symptom Severity and Daily-Life Gait Characteristics Derived From Long-Term Acceleration Signals in Real-World Settings: Retrospective Analysis

JMIR Mhealth Uhealth 2022;10(10):e40667

DOI: 10.2196/40667

PMID: 36194451

PMCID: 9579931

Warning: This is an author submission that is not peer-reviewed or edited. Preprints - unless they show as "accepted" - should not be relied on to guide clinical practice or health-related behavior and should not be reported in news media as established information.

Associations between depression symptom severity and daily-life gait characteristics derived from long-term acceleration signals in real-world settings: retrospective analyses

  • Yuezhou Zhang; 
  • Amos A Folarin; 
  • Shaoxiong Sun; 
  • Nicholas Cummins; 
  • Srinivasan Vairavan; 
  • Linglong Qian; 
  • Yatharth Ranjan; 
  • Zulqarnain Rashid; 
  • Pauline Conde; 
  • Callum Stewart; 
  • Petroula Laiou; 
  • Heet Sankesara; 
  • Faith Matcham; 
  • Katie M White; 
  • Carolin Oetzmann; 
  • Alina Ivan; 
  • Femke Lamers; 
  • Sara Siddi; 
  • Sara Simblett; 
  • Aki Rintala; 
  • David C Mohr; 
  • Inez Myin-Germeys; 
  • Til Wykes; 
  • Josep Maria Haro; 
  • Brenda WJH Penninx; 
  • Vaibhav A Narayan; 
  • Peter Annas; 
  • Matthew Hotopf; 
  • Richard JB Dobson; 
  • RADAR-CNS consortium

ABSTRACT

Background:

Gait is an essential manifestation of depression. Laboratory gait characteristics have been found to be closely associated with depression. However, the gait characteristics of daily walking in real-world scenarios and their relationships with depression are yet to be fully explored.

Objective:

This study aimed to explore associations between depression symptom severity and daily-life gait characteristics derived from acceleration signals gathered by wearables and mobile phones in real-world settings.

Methods:

In this study, we used two ambulatory datasets: a public dataset with 71 elder adults’ 3-day acceleration signals collected by a wearable device, and a subset of an EU longitudinal depression study with 215 participants and their phone-collected acceleration signals (average 463 hours per participant). We detected participants’ gait cycles and force from raw acceleration signals and extracted twelve statistics-based daily-life gait features to describe the distribution and variance of gait cadence and force over a long-term period corresponding to the self-reported depression score.

Results:

The higher depression symptom severity was found to be significantly associated with lower gait cadence of high-performance walking (faster walking segments) over a long-term period. Long-term daily-life gait features could significantly improve the goodness of fit of predicting depression severity relative to laboratory gait patterns and demographics.

Conclusions:

This study indicated that the significant links between daily-life walking characteristics and depression symptom severity could be captured by both wearable devices and mobile phones. The gait cadence of high-performance walking has the potential to be an indicator for monitoring depression, which may contribute to developing clinical tools to remotely monitor mental health in real-world settings.


 Citation

Please cite as:

Zhang Y, Folarin AA, Sun S, Cummins N, Vairavan S, Qian L, Ranjan Y, Rashid Z, Conde P, Stewart C, Laiou P, Sankesara H, Matcham F, White KM, Oetzmann C, Ivan A, Lamers F, Siddi S, Simblett S, Rintala A, Mohr DC, Myin-Germeys I, Wykes T, Haro JM, Penninx BW, Narayan VA, Annas P, Hotopf M, Dobson RJ, RADAR-CNS consortium

Associations Between Depression Symptom Severity and Daily-Life Gait Characteristics Derived From Long-Term Acceleration Signals in Real-World Settings: Retrospective Analysis

JMIR Mhealth Uhealth 2022;10(10):e40667

DOI: 10.2196/40667

PMID: 36194451

PMCID: 9579931

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