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Identifying weekly trajectories of pain severity using daily data from an mHealth study: cluster analysis

Identifying weekly trajectories of pain severity using daily data from an mHealth study: cluster analysis
Identifying weekly trajectories of pain severity using daily data from an mHealth study: cluster analysis
Background: people with chronic pain experience variability in their trajectories of pain severity. Previous studies have explored pain trajectories by clustering sparse data; however, to understand daily pain variability, there is a need to identify clusters of weekly trajectories using daily pain data. Between-week variability can be explored by quantifying the week-to-week movement between these clusters. We propose that future work can use clusters of pain severity in a forecasting model for short-term (eg, daily fluctuations) and longer-term (eg, weekly patterns) variability. Specifically, future work can use clusters of weekly trajectories to predict between-cluster movement and within-cluster variability in pain severity.

Objective: this study aims to understand clusters of common weekly patterns as a first stage in developing a pain-forecasting model.

Methods: data from a population-based mobile health study were used to compile weekly pain trajectories (n=21,919) that were then clustered using a k-medoids algorithm. Sensitivity analyses tested the impact of assumptions related to the ordinal and longitudinal structure of the data. The characteristics of people within clusters were examined, and a transition analysis was conducted to understand the movement of people between consecutive weekly clusters.

Results: four clusters were identified representing trajectories of no or low pain (1714/21,919, 7.82%), mild pain (8246/21,919, 37.62%), moderate pain (8376/21,919, 38.21%), and severe pain (3583/21,919, 16.35%). Sensitivity analyses confirmed the 4-cluster solution, and the resulting clusters were similar to those in the main analysis, with at least 85% of the trajectories belonging to the same cluster as in the main analysis. Male participants spent longer (participant mean 7.9, 95% bootstrap CI 6%-9.9%) in the no or low pain cluster than female participants (participant mean 6.5, 95% bootstrap CI 5.7%-7.3%). Younger people (aged 17-24 y) spent longer (participant mean 28.3, 95% bootstrap CI 19.3%-38.5%) in the severe pain cluster than older people (aged 65-86 y; participant mean 9.8, 95% bootstrap CI 7.7%-12.3%). People with fibromyalgia (participant mean 31.5, 95% bootstrap CI 28.5%-34.4%) and neuropathic pain (participant mean 31.1, 95% bootstrap CI 27.3%-34.9%) spent longer in the severe pain cluster than those with other conditions, and people with rheumatoid arthritis spent longer (participant mean 7.8, 95% bootstrap CI 6.1%-9.6%) in the no or low pain cluster than those with other conditions. There were 12,267 pairs of consecutive weeks that contributed to the transition analysis. The empirical percentage remaining in the same cluster across consecutive weeks was 65.96% (8091/12,267). When movement between clusters occurred, the highest percentage of movement was to an adjacent cluster.

Conclusions: the clusters of pain severity identified in this study provide a parsimonious description of the weekly experiences of people with chronic pain. These clusters could be used for future study of between-cluster movement and within-cluster variability to develop accurate and stakeholder-informed pain-forecasting tools.
cluster, forecast, k-medoids, mHealth, mobile health, mobile phone, pain, trajectory, transition
2291-5222
Little, Claire L.
aa70fcee-e115-45f6-8d52-0dabbdd36409
Schultz, David M.
a85d5745-d1be-42fd-a4a8-45122ee5a243
House, Thomas
5446b598-4f58-4cad-9c97-0988d46cc0a2
Dixon, William G.
8fcb2256-4094-4f58-9777-4248ad245166
Mcbeth, John
98012716-66ba-480b-9e43-ac53b51dce61
Little, Claire L.
aa70fcee-e115-45f6-8d52-0dabbdd36409
Schultz, David M.
a85d5745-d1be-42fd-a4a8-45122ee5a243
House, Thomas
5446b598-4f58-4cad-9c97-0988d46cc0a2
Dixon, William G.
8fcb2256-4094-4f58-9777-4248ad245166
Mcbeth, John
98012716-66ba-480b-9e43-ac53b51dce61

Little, Claire L., Schultz, David M., House, Thomas, Dixon, William G. and Mcbeth, John (2024) Identifying weekly trajectories of pain severity using daily data from an mHealth study: cluster analysis. JMIR mHealth uHealth, 12, [e48582]. (doi:10.2196/48582).

Record type: Article

Abstract

Background: people with chronic pain experience variability in their trajectories of pain severity. Previous studies have explored pain trajectories by clustering sparse data; however, to understand daily pain variability, there is a need to identify clusters of weekly trajectories using daily pain data. Between-week variability can be explored by quantifying the week-to-week movement between these clusters. We propose that future work can use clusters of pain severity in a forecasting model for short-term (eg, daily fluctuations) and longer-term (eg, weekly patterns) variability. Specifically, future work can use clusters of weekly trajectories to predict between-cluster movement and within-cluster variability in pain severity.

Objective: this study aims to understand clusters of common weekly patterns as a first stage in developing a pain-forecasting model.

Methods: data from a population-based mobile health study were used to compile weekly pain trajectories (n=21,919) that were then clustered using a k-medoids algorithm. Sensitivity analyses tested the impact of assumptions related to the ordinal and longitudinal structure of the data. The characteristics of people within clusters were examined, and a transition analysis was conducted to understand the movement of people between consecutive weekly clusters.

Results: four clusters were identified representing trajectories of no or low pain (1714/21,919, 7.82%), mild pain (8246/21,919, 37.62%), moderate pain (8376/21,919, 38.21%), and severe pain (3583/21,919, 16.35%). Sensitivity analyses confirmed the 4-cluster solution, and the resulting clusters were similar to those in the main analysis, with at least 85% of the trajectories belonging to the same cluster as in the main analysis. Male participants spent longer (participant mean 7.9, 95% bootstrap CI 6%-9.9%) in the no or low pain cluster than female participants (participant mean 6.5, 95% bootstrap CI 5.7%-7.3%). Younger people (aged 17-24 y) spent longer (participant mean 28.3, 95% bootstrap CI 19.3%-38.5%) in the severe pain cluster than older people (aged 65-86 y; participant mean 9.8, 95% bootstrap CI 7.7%-12.3%). People with fibromyalgia (participant mean 31.5, 95% bootstrap CI 28.5%-34.4%) and neuropathic pain (participant mean 31.1, 95% bootstrap CI 27.3%-34.9%) spent longer in the severe pain cluster than those with other conditions, and people with rheumatoid arthritis spent longer (participant mean 7.8, 95% bootstrap CI 6.1%-9.6%) in the no or low pain cluster than those with other conditions. There were 12,267 pairs of consecutive weeks that contributed to the transition analysis. The empirical percentage remaining in the same cluster across consecutive weeks was 65.96% (8091/12,267). When movement between clusters occurred, the highest percentage of movement was to an adjacent cluster.

Conclusions: the clusters of pain severity identified in this study provide a parsimonious description of the weekly experiences of people with chronic pain. These clusters could be used for future study of between-cluster movement and within-cluster variability to develop accurate and stakeholder-informed pain-forecasting tools.

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More information

Accepted/In Press date: 14 November 2023
Published date: 19 July 2024
Keywords: cluster, forecast, k-medoids, mHealth, mobile health, mobile phone, pain, trajectory, transition

Identifiers

Local EPrints ID: 492272
URI: http://eprints.soton.ac.uk/id/eprint/492272
ISSN: 2291-5222
PURE UUID: 949867ae-418c-43e0-bc86-e1f5f4879314
ORCID for John Mcbeth: ORCID iD orcid.org/0000-0001-7047-2183

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Date deposited: 23 Jul 2024 16:41
Last modified: 20 Aug 2024 02:09

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Contributors

Author: Claire L. Little
Author: David M. Schultz
Author: Thomas House
Author: William G. Dixon
Author: John Mcbeth ORCID iD

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