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日常膝关节疼痛变化与膝骨关节炎患者身体活动的关系:使用消费者智能手表的观察性可行性研究。

Day-to-day variability of knee pain and the relationship with physical activity in people with knee osteoarthritis: an observational, feasibility study using consumer smartwatches.

机构信息

Centre for Epidemiology Versus Arthritis, University of Manchester, Manchester, UK

Nuffield Department of Orthopaedics, Rheumatology and Musculoskeletal Sciences, University of Oxford, Oxford, UK.

出版信息

BMJ Open. 2023 Mar 13;13(3):e062801. doi: 10.1136/bmjopen-2022-062801.

Abstract

OBJECTIVE

To assess the feasibility of using smartwatches in people with knee osteoarthritis (OA) to determine the day-to-day variability of pain and the relationship between daily pain and step count.

DESIGN

Observational, feasibility study.

SETTING

In July 2017, the study was advertised in newspapers, magazines and, on social media. Participants had to be living/willing to travel to Manchester. Recruitment was in September 2017 and data collection was completed in January 2018.

PARTICIPANTS

26 participants aged50 years with self-diagnosed symptomatic knee OA were recruited.

OUTCOME MEASURES

Participants were provided with a consumer cellular smartwatch with a bespoke app that triggered a series of daily questions including two times per day questions about level of knee pain and one time per month question from the pain subscale of the Knee Injury and Osteoarthritis Outcome Score (KOOS) questionnaire. The smartwatch also recorded daily step counts.

RESULTS

Of the 25 participants, 13 were men and their mean age was 65 years (standard deviation (SD) 8 years). The smartwatch app was successful in simultaneously assessing and recording data on knee pain and step count in real time. Knee pain was categorised into sustained high/low or fluctuating levels, but there was considerable day-to-day variation within these categories. Levels of knee pain in general correlated with pain assessed by KOOS. Those with sustained high/low levels of pain had a similar daily step count average (mean 3754 (SD 2524)/4307 (SD 2992)), but those with fluctuating pain had much lower step count levels (mean 2064 (SD 1716)).

CONCLUSIONS

Smartwatches can be used to assess pain and physical activity in knee OA. Larger studies may help inform a better understanding of causal links between physical activity patterns and pain. In time, this could inform development of personalised physical activity recommendations for people with knee OA.

摘要

目的

评估在膝骨关节炎(OA)患者中使用智能手表来确定日常疼痛的可变性以及日常疼痛与步数之间的关系的可行性。

设计

观察性可行性研究。

地点

2017 年 7 月,该研究在报纸、杂志和社交媒体上做了广告。参与者必须居住/愿意前往曼彻斯特。招募工作于 2017 年 9 月进行,数据收集于 2018 年 1 月完成。

参与者

招募了 26 名年龄在 50 岁以上、自我诊断为症状性膝 OA 的患者。

结果

在 25 名参与者中,有 13 名男性,平均年龄为 65 岁(标准差 8 岁)。智能手表应用程序成功地同时评估和实时记录膝关节疼痛和步数数据。膝关节疼痛被分为持续高/低或波动水平,但在这些类别内存在相当大的日常变化。一般来说,膝关节疼痛的程度与 KOOS 疼痛量表评估的疼痛相关。持续高/低水平疼痛的患者的平均每日步数相似(分别为 3754(SD 2524)/4307(SD 2992)),但疼痛波动的患者的步数水平明显较低(分别为 2064(SD 1716))。

结论

智能手表可用于评估膝骨关节炎患者的疼痛和身体活动。更大规模的研究可能有助于更好地了解身体活动模式与疼痛之间的因果关系。随着时间的推移,这可能会为膝骨关节炎患者制定个性化的身体活动建议提供信息。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d09a/10016308/611a0c3fea2d/bmjopen-2022-062801f01.jpg

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