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量化居家肩部物理治疗参与度与治疗效果之间的关系:手表能告诉我们什么?

Quantifying the Relationship Between At-Home Shoulder Physiotherapy Participation and Outcome: What can a Watch Tell Us?

作者信息

Boyer Philip, Burns David, Razmjou Helen, Renteria Cristian, Sheth Ujash, Richards Robin, Whyne Cari

机构信息

From the Holland Bone and Joint Program, Sunnybrook Research Institute, Sunnybrook Health Sciences Centre, Toronto, Ontario, Canada (Boyer, Burns, Razmjou, Renteria, Sheth, Richards, and Whyne), the Division of Orthopaedic Surgery, University of Toronto, Toronto, Ontario, Canada (Burns, Sheth, Richards, and Whyne), the Institute of Biomedical Engineering, University of Toronto, Toronto, Ontario, Canada (Boyer, Burns, and Whyne), the Department of Physical Therapy, University of Toronto, Toronto, Ontario, Canada (Razmjou), and the Sunnybrook Orthopaedic Upper Limb (SOUL), Sunnybrook Health Science Centre, Toronto, Ontario, Canada (Sheth, Richards, and Whyne).

出版信息

J Am Acad Orthop Surg. 2025 Jan 30;33(12):e690-e702. doi: 10.5435/JAAOS-D-24-00499.

Abstract

INTRODUCTION

Exercise-based physiotherapy is an established treatment of rotator cuff injury. Objective assessment of at-home exercise is critical to understand its relationship with clinical outcomes. This study uses the Smart Physiotherapy Activity Recognition System to measure at-home physiotherapy participation in patients with rotator cuff injury based on inertial sensor data captured from smart watches. Relationships between participation and clinical outcomes, long-term durability of outcome improvements, and factors predictive of participation were evaluated.

METHODS

Patients participated in a 12-week rotator cuff physiotherapy program in a prospective single-center study. Patients wore smart watches during supervised weekly in-clinic physiotherapy sessions and while performing exercises at home. Demographic information and rotator-cuff diagnosis were collected at baseline and assessed as predictors of physiotherapy participation. Outcome measures (pain, disability [Disabilities of the Arm, Shoulder and Hand], strength, range of motion) were collected over duration of treatment and at 12-month follow-up (pain and disability). Machine learning algorithms identified and classified periods of exercise to evaluate participation and adherence.

RESULTS

One hundred ten patients enrolled and initiated treatment, with 92 patients included in the analysis. All outcomes showed significant improvements from baseline at each time point. Mean total weekly at-home participation decreased from 35.6 ± 28.9 minutes in weeks 0 to 4 to 28.9 ± 25.7 minutes in weeks 8 to 12 (t = 2.23, P = 0.023). For the full cohort, significant relationships were found between physiotherapy participation and disability, manual strength, external rotation, internal rotation, and abduction. Significant predictors of participation included greater age, being unmarried, diagnosed rotator cuff tear, and measures of self-efficacy, social support, and comorbidity. Higher participation rates led to significant improvements in outcomes for partial thickness/no-tear patients but not for full-thickness tears.

DISCUSSION

Machine learning methods applied to data collected from smart watches enabled objective assessment of physiotherapy participation in the home setting. Although most patients improved with physiotherapy, patients with full-thickness rotator cuff tears were not similarly responsive to higher exercise volumes.

摘要

引言

基于运动的物理治疗是一种公认的肩袖损伤治疗方法。对家庭锻炼进行客观评估对于理解其与临床结果的关系至关重要。本研究使用智能物理治疗活动识别系统,根据从智能手表捕获的惯性传感器数据,来测量肩袖损伤患者在家中的物理治疗参与情况。评估了参与情况与临床结果之间的关系、结果改善的长期持续性以及参与的预测因素。

方法

在一项前瞻性单中心研究中,患者参加了为期12周的肩袖物理治疗计划。患者在每周监督下的门诊物理治疗期间以及在家中进行锻炼时佩戴智能手表。在基线时收集人口统计学信息和肩袖诊断结果,并将其作为物理治疗参与情况的预测因素进行评估。在治疗期间和12个月随访时(疼痛和残疾情况)收集结果指标(疼痛、残疾程度[手臂、肩部和手部残疾]、力量、活动范围)。机器学习算法识别并分类锻炼时段,以评估参与情况和依从性。

结果

110名患者登记并开始治疗,92名患者纳入分析。所有结果在每个时间点均显示相对于基线有显著改善。每周在家中的平均总参与时间从第0至4周的35.6±28.9分钟降至第8至12周的28.9±25.7分钟(t = 2.23,P = 0.023)。对于整个队列,发现物理治疗参与情况与残疾程度、手动力量、外旋、内旋和外展之间存在显著关系。参与的显著预测因素包括年龄较大、未婚、诊断为肩袖撕裂以及自我效能感、社会支持和合并症的测量指标。较高的参与率导致部分厚度/无撕裂患者的结果有显著改善,但全层撕裂患者则不然。

讨论

应用于从智能手表收集的数据的机器学习方法能够对家庭环境中的物理治疗参与情况进行客观评估。尽管大多数患者通过物理治疗得到改善,但全层肩袖撕裂患者对更高运动量的反应并不相同。

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