# Real-time Associations between Digital Indicators and Daily Pain and Depressive Symptoms among Korean Older Adults

**Authors:** Sunmi Song, Seo-Yeon Hwang, Hae-Young Kim, Junesun Kim

PMC · DOI: 10.1093/geroni/igaf122.4307 · 2025-12-31

## TL;DR

This study explores how digital health data from wearable devices can predict daily pain and depressive symptoms in older adults.

## Contribution

The study identifies real-time digital indicators that predict same-day and next-day pain and depressive symptoms in older adults.

## Key findings

- Heart rate variability and physical activity predict same-day pain in older adults.
- Sleep duration and efficiency are linked to same-day depressive symptoms.
- Sleep fragmentation and heart rate variability predict next-day pain.

## Abstract

Despite the importance of personalized digital healthcare services for addressing pain and emotional health in older adults, the development of digital healthcare interventions has been limited by a lack of evidence on real-time predictors of pain and emotional health among older adults. This study examined whether digital sensing data on heart rate variability, sleep quality, and physical activity could predict same-day or next-day pain and depressive symptoms among socially vulnerable older adults. As part of a larger project evaluating the efficacy of a digital healthcare platform integrated with a public community-based care service, older adult care recipients (n = 35; Mean age = 78.03, SD = 4.10; 80% women) and their community caregivers (n = 16) participated in a 6-week trial. Depressive symptoms were assessed daily using the 9-item Patient Health Questionnaire via scripted chatbot interviews, while pain was measured using a Visual Analogue Scale. Digital biomarkers—including heart rate variability, sleep, and physical activity—were collected via a continuously worn wearable sensor (Fitbit). Multilevel modeling revealed that within-person fluctuations in heart rate variability, mean of normal-to-normal intervals (Mean NNI; p = .016), and moderate physical activity (p = .001) were associated with same-day pain. Changes in sleep duration (p = .031) and efficiency (p = .053) were linked to same-day depressive symptoms. Lagged models further showed that Mean NNI (p = .031) and sleep fragmentation (p = .027) predicted next-day pain. These findings highlight the potential of real-time wearable data to inform personalized pain and mental health management for older adults.

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Source: https://tomesphere.com/paper/PMC12761620