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Collecting symptoms and sensor data with consumer smartwatches (the Knee OsteoArthritis, Linking Activity and Pain Study): protocol for a longitudinal, observational feasibility study

Collecting symptoms and sensor data with consumer smartwatches (the Knee OsteoArthritis, Linking Activity and Pain Study): protocol for a longitudinal, observational feasibility study
Collecting symptoms and sensor data with consumer smartwatches (the Knee OsteoArthritis, Linking Activity and Pain Study): protocol for a longitudinal, observational feasibility study
Background: the Knee OsteoArthritis, Linking Activity and Pain (KOALAP) study is the first to test the feasibility of using consumer-grade cellular smartwatches for health care research.

Objective: the overall aim was to investigate the feasibility of using consumer-grade cellular smartwatches as a novel tool to capture data on pain (multiple times a day) and physical activity (continuously) in patients with knee osteoarthritis. Additionally, KOALAP aimed to investigate smartwatch sensor data quality and assess whether engagement, acceptability, and user experience are sufficient for future large-scale observational and interventional studies.

Methods: a total of 26 participants with self-diagnosed knee osteoarthritis were recruited in September 2017. All participants were aged 50 years or over and either lived in or were willing to travel to the Greater Manchester area. Participants received a smartwatch (Huawei Watch 2) with a bespoke app that collected patient-reported outcomes via questionnaires and continuous watch sensor data. All data were collected daily for 90 days. Additional data were collected through interviews (at baseline and follow-up) and baseline and end-of-study questionnaires. This study underwent full review by the University of Manchester Research Ethics Committee (#0165) and University Information Governance (#IGRR000060). For qualitative data analysis, a system-level security policy was developed in collaboration with the University Information Governance Office. Additionally, the project underwent an internal review process at Google, including separate reviews of accessibility, product engineering, privacy, security, legal, and protection regulation compliance.

Results: participants were recruited in September 2017. Data collection via the watches was completed in January 2018. Collection of qualitative data through patient interviews is still ongoing. Data analysis will commence when all data are collected; results are expected in 2019.

Conclusions: KOALAP is the first health study to use consumer cellular smartwatches to collect self-reported symptoms alongside sensor data for musculoskeletal disorders. The results of this study will be used to inform the design of future mobile health studies. Results for feasibility and participant motivations will inform future researchers whether or under which conditions cellular smartwatches are a useful tool to collect patient-reported outcomes alongside passively measured patient behavior. The exploration of associations between self-reported symptoms at different moments will contribute to our understanding of whether it may be valuable to collect symptom data more frequently. Sensor data–quality measurements will indicate whether cellular smartwatch usage is feasible for obtaining sensor data. Methods for data-quality assessment and data-processing methods may be reusable, although generalizability to other clinical areas should be further investigated.
1929-0748
Beukenhorst, Anna L.
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Parkes, Matthew J.
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Cook, Louise
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Barnard, Rebecca
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van der Veer, Sabine N.
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Little, Max A.
e57fa3b2-1868-428b-ab0f-9b71e4c679f0
Howells, Kelly
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Sanders, Caroline
ff100891-2d1e-4429-8df3-54181a6b6c6a
Sergeant, Jamie C.
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O'Neill, Terence W.
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McBeth, John
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Dixon, William G.
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Beukenhorst, Anna L.
1b1be652-59a9-4331-933b-37c0dc6c8db9
Parkes, Matthew J.
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Cook, Louise
d582445f-cc55-4748-a103-22806309e054
Barnard, Rebecca
8c59b564-1016-4114-8b29-3882b16d5887
van der Veer, Sabine N.
34f20db8-f374-49cf-b1ed-b02b639a9f01
Little, Max A.
e57fa3b2-1868-428b-ab0f-9b71e4c679f0
Howells, Kelly
a0281c91-9a20-4e2d-bedc-139dc04dad9d
Sanders, Caroline
ff100891-2d1e-4429-8df3-54181a6b6c6a
Sergeant, Jamie C.
12663aff-2633-432e-a8c4-bedfbe1a35a6
O'Neill, Terence W.
d7396fa9-14be-42e9-80d9-4a857f77309e
McBeth, John
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Dixon, William G.
8fcb2256-4094-4f58-9777-4248ad245166

Beukenhorst, Anna L., Parkes, Matthew J., Cook, Louise, Barnard, Rebecca, van der Veer, Sabine N., Little, Max A., Howells, Kelly, Sanders, Caroline, Sergeant, Jamie C., O'Neill, Terence W., McBeth, John and Dixon, William G. (2019) Collecting symptoms and sensor data with consumer smartwatches (the Knee OsteoArthritis, Linking Activity and Pain Study): protocol for a longitudinal, observational feasibility study. JMIR Research Protocols, 8 (1), [e10238]. (doi:10.2196/10238).

Record type: Article

Abstract

Background: the Knee OsteoArthritis, Linking Activity and Pain (KOALAP) study is the first to test the feasibility of using consumer-grade cellular smartwatches for health care research.

Objective: the overall aim was to investigate the feasibility of using consumer-grade cellular smartwatches as a novel tool to capture data on pain (multiple times a day) and physical activity (continuously) in patients with knee osteoarthritis. Additionally, KOALAP aimed to investigate smartwatch sensor data quality and assess whether engagement, acceptability, and user experience are sufficient for future large-scale observational and interventional studies.

Methods: a total of 26 participants with self-diagnosed knee osteoarthritis were recruited in September 2017. All participants were aged 50 years or over and either lived in or were willing to travel to the Greater Manchester area. Participants received a smartwatch (Huawei Watch 2) with a bespoke app that collected patient-reported outcomes via questionnaires and continuous watch sensor data. All data were collected daily for 90 days. Additional data were collected through interviews (at baseline and follow-up) and baseline and end-of-study questionnaires. This study underwent full review by the University of Manchester Research Ethics Committee (#0165) and University Information Governance (#IGRR000060). For qualitative data analysis, a system-level security policy was developed in collaboration with the University Information Governance Office. Additionally, the project underwent an internal review process at Google, including separate reviews of accessibility, product engineering, privacy, security, legal, and protection regulation compliance.

Results: participants were recruited in September 2017. Data collection via the watches was completed in January 2018. Collection of qualitative data through patient interviews is still ongoing. Data analysis will commence when all data are collected; results are expected in 2019.

Conclusions: KOALAP is the first health study to use consumer cellular smartwatches to collect self-reported symptoms alongside sensor data for musculoskeletal disorders. The results of this study will be used to inform the design of future mobile health studies. Results for feasibility and participant motivations will inform future researchers whether or under which conditions cellular smartwatches are a useful tool to collect patient-reported outcomes alongside passively measured patient behavior. The exploration of associations between self-reported symptoms at different moments will contribute to our understanding of whether it may be valuable to collect symptom data more frequently. Sensor data–quality measurements will indicate whether cellular smartwatch usage is feasible for obtaining sensor data. Methods for data-quality assessment and data-processing methods may be reusable, although generalizability to other clinical areas should be further investigated.

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Accepted/In Press date: 11 June 2018
Published date: 23 January 2019

Identifiers

Local EPrints ID: 491480
URI: http://eprints.soton.ac.uk/id/eprint/491480
ISSN: 1929-0748
PURE UUID: e9a06160-44cb-4099-94e0-fefa208e26ee
ORCID for John McBeth: ORCID iD orcid.org/0000-0001-7047-2183

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Date deposited: 25 Jun 2024 16:31
Last modified: 26 Jun 2024 02:11

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Contributors

Author: Anna L. Beukenhorst
Author: Matthew J. Parkes
Author: Louise Cook
Author: Rebecca Barnard
Author: Sabine N. van der Veer
Author: Max A. Little
Author: Kelly Howells
Author: Caroline Sanders
Author: Jamie C. Sergeant
Author: Terence W. O'Neill
Author: John McBeth ORCID iD
Author: William G. Dixon

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