Haddas Ram, Morriss Nicholas, Schillinger Emily, Minto Jonathan, Castle Patrick, Greif Dylan N, Ramirez Gabriel, Barber Patrick, Nicandri Gregg, Manava Sandeep, Voloshin Ilya
Department of Orthopedics, University of Rochester Medical Center, Rochester, New York, USA.
J Orthop Res. 2025 Aug 28:e70047. doi: 10.1002/jor.70047.
Markerless motion capture utilizes deep learning models to evaluate standard video from multiple cameras and is significantly more time-efficient than traditional marker-based systems in both setup and analysis. There has been increasing interest in validating markerless motion analysis in the clinical orthopaedic patient population.
To evaluate the concurrent validity of markerless shoulder analysis compared to traditional marker-based shoulder analysis during activities of daily living (ADLs) in patients with glenohumeral osteoarthritis. We hypothesize that the markerless system will accurately and reliably capture shoulder kinematics in patients with glenohumeral osteoarthritis compared to a marker-based system.
One hundred subjects, eighty-five patients with glenohumeral osteoarthritis scheduled for shoulder arthroplasty and 15 healthy controls were enrolled in this study. Each patient underwent clinical upper extremity assessment with data being captured concurrently by a traditional marker-based motion capture system and a commercially available markerless system. This study assessed ADLs including four tasks: overhead reaching, drinking, hair brushing, and personal hygiene tasks. Marker-based motion was evaluated with University of Southampton Upper Limb Kinematic Model flexion-based (SF1, SF2) and abduction based (SA1, SA2) models. For each combination of task and laterality, the consistency in response between the markerless system with the SF1, SF2, SA1 and SA2 variations of the marker-based system were investigated by determining the interclass correlation coefficient of the peak angle and range of motion in the three planes of motion: flexion/extension, abduction/adduction, and internal rotation.
There was a strong positive relationship between markerless and SF1 and SF2 marker-based models in peak angle (ICC: 0.81-0.95; p-value < 0.001), range of motion (ICC: 0.81-0.97; p-value < 0.001), and shoulder motion pattern (ICC: 0.88-0.99; p-value < 0.001) in flexion/extension and abduction/adduction throughout all tasks. There was a weaker positive relationship between markerless and SA1 and SA2 marker-based models in flexion/extension and abduction/adduction throughout all tasks (ICC: 0.35-0.97; p-value < 0.001). As forward flexion and abduction angles approached the maximum functional range of the shoulder, there was a weaker but consistent relationship between the two systems.
Markerless motion analysis of the shoulder joint is accurate and has the potential to expand the utility of motion analysis in the upper extremity. Markerless systems were within 10 degrees of both the marker-based and markerless models for flexion/extension; however, it underestimated rotation movement across all tasks.
Because markerless motion analysis is cheaper, faster, and easier to implement, it can greatly increase the availability of motion analysis within laboratories and clinical practice and has the potential to become a core component of clinical management of shoulder pathologies.
无标记运动捕捉利用深度学习模型评估来自多个摄像头的标准视频,在设置和分析方面比传统的基于标记的系统显著更省时。在临床骨科患者群体中,对验证无标记运动分析的兴趣日益增加。
评估在肩肱关节骨关节炎患者的日常生活活动(ADL)中,与传统的基于标记的肩部分析相比,无标记肩部分析的同时效度。我们假设与基于标记的系统相比,无标记系统将准确且可靠地捕捉肩肱关节骨关节炎患者的肩部运动学。
本研究纳入了100名受试者,其中85名计划进行肩关节置换术的肩肱关节骨关节炎患者和15名健康对照。每位患者都接受了临床上肢评估,数据由传统的基于标记的运动捕捉系统和市售的无标记系统同时采集。本研究评估了ADL,包括四项任务:上肢伸展、饮水、梳头和个人卫生任务。基于标记的运动用南安普顿大学上肢运动学模型基于屈曲(SF1、SF2)和基于外展(SA1、SA2)的模型进行评估。对于任务和侧别的每种组合,通过确定运动三个平面(屈曲/伸展、外展/内收和内旋)中的峰值角度和运动范围的组内相关系数,研究无标记系统与基于标记系统的SF1、SF2、SA1和SA2变体之间反应的一致性。
在所有任务的屈曲/伸展和外展/内收中,无标记与基于SF1和SF2标记的模型在峰值角度(组内相关系数:0.81 - 0.95;p值<0.001)、运动范围(组内相关系数:0.81 - 0.97;p值<0.001)和肩部运动模式(组内相关系数:0.88 - 0.99;p值<0.001)方面存在强正相关。在所有任务的屈曲/伸展和外展/内收中,无标记与基于SA1和SA2标记的模型之间存在较弱的正相关(组内相关系数:0.35 - 0.97;p值<0.001)。当前屈和外展角度接近肩部的最大功能范围时,两个系统之间的关系较弱但一致。
肩关节的无标记运动分析是准确的,并且有可能扩大上肢运动分析的应用范围。无标记系统在屈曲/伸展方面与基于标记和无标记模型的偏差均在10度以内;然而,它在所有任务中都低估了旋转运动。
由于无标记运动分析更便宜、更快且更易于实施,它可以大大增加实验室和临床实践中运动分析的可用性,并且有可能成为肩部疾病临床管理的核心组成部分。