Associations between daily symptoms and pain flares in rheumatoid arthritis: case-crossover mHealth study
Associations between daily symptoms and pain flares in rheumatoid arthritis: case-crossover mHealth study
Background: mobile health (mHealth) technologies, such as smartphones and wearables, enable continuous assessments of individual health information. In chronic musculoskeletal conditions, pain flares, defined as periods of increased pain severity, often coincide with worsening disease activity and cause significant impacts on physical and emotional well-being. Using mHealth technologies can provide insights into individual pain patterns and associated factors.
Objective: this study aims to characterize pain flares and identify associated factors in rheumatoid arthritis (RA) by (1) describing the frequency and duration of pain flares using progressively stringent definitions based on pain severity, and (2) exploring associations between pain flares and temporal changes in symptoms across emotional, cognitive, and behavioral domains.
Methods: our 30-day mHealth study collected daily pain severity and related symptoms (scores 1-5, higher are worse) via a smartphone app and passively recorded sleep and physical activity via a wrist-worn accelerometer. Pain flares were defined using a 5-point scale: (1) above average (AA): pain severity > personal median, (2) above threshold (AT): pain severity > 3, and (3) move above threshold (MAT): pain severity moves from 1, 2, 3 to 4 or 5. A case-crossover analysis compared within-person variations of daily symptoms across hazard (3 days before a pain flare) and control (3 days not preceding a pain flare) periods using mean and intraindividual standard deviation. Conditional logistic regression estimated the odds ratio (OR) for pain flare occurrence.
Results: a total of 195 participants (160/195, 82.1% females; mean age 57.2 years; average years with RA: 11.3) contributed 5290 days of data. Of these, 88.7% (173/195) experienced at least 1 AA flare (median monthly rate 4, IQR 2.1-5). Nearly half experienced at least 1 AT or MAT flare (median monthly rate 2, IQR 1-4). These pain flares lasted 2 days (IQR 2-3) on average across definitions, with some extending up to 12 days. Worsening mood over 3 days was associated with a 2-fold increase in the likelihood of AT flares the following day (OR 2.04, IQR 1.06-3.94; P<.05). Greater variability in anxiety over 3 days increased the likelihood of both AT (OR 1.67, IQR 1.01-2.78; P<.05) and MAT flares (OR 1.82, IQR 1.08-3.07; P<.05). Similarly, greater variability in sleepiness (OR 1.89, IQR 1.03-3.47; P<.05) also increased the likelihood of AT flares. Sedentary time (%) consistently showed almost no influence across all definitions. Similarly, the simplest definition of AA demonstrated no significant associations across all symptoms.
Conclusions: pain flares were commonly observed in RA. Changes in sleep patterns and emotional distress were associated with pain flare occurrences. This analysis demonstrates the potential of daily mHealth data to identify pain flares, opening opportunities for timely monitoring and personalized management.
Adult, Aged, Arthritis, Rheumatoid/complications, Cross-Over Studies, Female, Humans, Male, Middle Aged, Pain Measurement/methods, Pain/psychology, Surveys and Questionnaires, Symptom Flare Up, Telemedicine/statistics & numerical data, wearable, smartphone, pain flares, mHealth, rheumatoid arthritis, physical activity, sleep, mobile health, patient-generated data, musculoskeletal, quality of life
Hsu, Ting-Chen Chloe
ecc0b802-b3b5-4fb3-8db6-ef0a44dc9938
Yimer, Belay B.
08854bab-8fc0-40b1-90ab-9dc809ce03cd
Whelan, Pauline
cae5309a-474f-49a6-b064-60d105cf3cf9
Armitage, Christopher J.
88a48bb4-9c40-4d5c-944c-05a5768c6219
Druce, Katie
89b491ff-014d-4746-9991-791887bed988
McBeth, John
98012716-66ba-480b-9e43-ac53b51dce61
Hsu, Ting-Chen Chloe
ecc0b802-b3b5-4fb3-8db6-ef0a44dc9938
Yimer, Belay B.
08854bab-8fc0-40b1-90ab-9dc809ce03cd
Whelan, Pauline
cae5309a-474f-49a6-b064-60d105cf3cf9
Armitage, Christopher J.
88a48bb4-9c40-4d5c-944c-05a5768c6219
Druce, Katie
89b491ff-014d-4746-9991-791887bed988
McBeth, John
98012716-66ba-480b-9e43-ac53b51dce61
Hsu, Ting-Chen Chloe, Yimer, Belay B., Whelan, Pauline, Armitage, Christopher J., Druce, Katie and McBeth, John
(2025)
Associations between daily symptoms and pain flares in rheumatoid arthritis: case-crossover mHealth study.
JMIR mHealth and uHealth, 13, [e64889].
(doi:10.2196/64889).
Abstract
Background: mobile health (mHealth) technologies, such as smartphones and wearables, enable continuous assessments of individual health information. In chronic musculoskeletal conditions, pain flares, defined as periods of increased pain severity, often coincide with worsening disease activity and cause significant impacts on physical and emotional well-being. Using mHealth technologies can provide insights into individual pain patterns and associated factors.
Objective: this study aims to characterize pain flares and identify associated factors in rheumatoid arthritis (RA) by (1) describing the frequency and duration of pain flares using progressively stringent definitions based on pain severity, and (2) exploring associations between pain flares and temporal changes in symptoms across emotional, cognitive, and behavioral domains.
Methods: our 30-day mHealth study collected daily pain severity and related symptoms (scores 1-5, higher are worse) via a smartphone app and passively recorded sleep and physical activity via a wrist-worn accelerometer. Pain flares were defined using a 5-point scale: (1) above average (AA): pain severity > personal median, (2) above threshold (AT): pain severity > 3, and (3) move above threshold (MAT): pain severity moves from 1, 2, 3 to 4 or 5. A case-crossover analysis compared within-person variations of daily symptoms across hazard (3 days before a pain flare) and control (3 days not preceding a pain flare) periods using mean and intraindividual standard deviation. Conditional logistic regression estimated the odds ratio (OR) for pain flare occurrence.
Results: a total of 195 participants (160/195, 82.1% females; mean age 57.2 years; average years with RA: 11.3) contributed 5290 days of data. Of these, 88.7% (173/195) experienced at least 1 AA flare (median monthly rate 4, IQR 2.1-5). Nearly half experienced at least 1 AT or MAT flare (median monthly rate 2, IQR 1-4). These pain flares lasted 2 days (IQR 2-3) on average across definitions, with some extending up to 12 days. Worsening mood over 3 days was associated with a 2-fold increase in the likelihood of AT flares the following day (OR 2.04, IQR 1.06-3.94; P<.05). Greater variability in anxiety over 3 days increased the likelihood of both AT (OR 1.67, IQR 1.01-2.78; P<.05) and MAT flares (OR 1.82, IQR 1.08-3.07; P<.05). Similarly, greater variability in sleepiness (OR 1.89, IQR 1.03-3.47; P<.05) also increased the likelihood of AT flares. Sedentary time (%) consistently showed almost no influence across all definitions. Similarly, the simplest definition of AA demonstrated no significant associations across all symptoms.
Conclusions: pain flares were commonly observed in RA. Changes in sleep patterns and emotional distress were associated with pain flare occurrences. This analysis demonstrates the potential of daily mHealth data to identify pain flares, opening opportunities for timely monitoring and personalized management.
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mhealth-2025-1-e64889
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e-pub ahead of print date: 21 July 2025
Additional Information:
© Ting-Chen Chloe Hsu, Belay B Yimer, Pauline Whelan, Christopher J Armitage, Katie Druce, John McBeth. Originally published in JMIR mHealth and uHealth (https://mhealth.jmir.org).
Keywords:
Adult, Aged, Arthritis, Rheumatoid/complications, Cross-Over Studies, Female, Humans, Male, Middle Aged, Pain Measurement/methods, Pain/psychology, Surveys and Questionnaires, Symptom Flare Up, Telemedicine/statistics & numerical data, wearable, smartphone, pain flares, mHealth, rheumatoid arthritis, physical activity, sleep, mobile health, patient-generated data, musculoskeletal, quality of life
Identifiers
Local EPrints ID: 504935
URI: http://eprints.soton.ac.uk/id/eprint/504935
ISSN: 2291-5222
PURE UUID: 89354973-68d5-4f0c-b3c5-a421178dfcf6
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Date deposited: 22 Sep 2025 17:00
Last modified: 23 Sep 2025 02:18
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Author:
Ting-Chen Chloe Hsu
Author:
Belay B. Yimer
Author:
Pauline Whelan
Author:
Christopher J. Armitage
Author:
Katie Druce
Author:
John McBeth
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