Lambricht Nicolas, Englebert Alexandre, Pitance Laurent, Fisette Paul, Detrembleur Christine
Institute of Experimental and Clinical Research, UCLouvain, Brussels, Belgium.
Institute of Information and Communication Technologies, Electronic and Applied Mathematics, UCLouvain, Louvain-la-Neuve, Belgium.
Knee. 2025 Jan;52:171-178. doi: 10.1016/j.knee.2024.11.006. Epub 2024 Nov 26.
The assessment of performance during functional tasks and the quality of movement execution are crucial metrics in the rehabilitation of patients with anterior cruciate ligament (ACL) injuries. While measuring performance is feasible in clinical practice, quantifying joint kinematics poses greater challenges. The aim of this study was to investigate whether smartphone video, using deep neural networks for human pose detection, can enable the clinicians not only to measure performance in functional tasks but also to assess joint kinematics.
Twelve healthy participants performed the forward reach of the Star Excursion Balance Test 10 times, along with 10 repetitions of forward jumps and vertical jumps, with simultaneous motion capture via a marker-based reference system and a smartphone. OpenPifPaf was utilized for markerless detection of anatomical landmarks in video recordings. The OpenPifPaf coordinates were scaled using anthropometric data of the thigh, and task performance and joint kinematics were computed for both the marker-based and markerless systems.
Comparing results for marker-based and markerless systems revealed similar joint angles, with mean root mean square errors of 2.8° for the knee, 3.1° for the hip, and 3.9° for the ankle. Excellent agreement was observed for clinically pertinent parameters, i.e., the performance, the peak knee flexion, and the knee range of motion (intraclass correlation coefficient > 0.97).
The results underscore the feasibility of using markerless methods based on OpenPifPaf for assessing performance and joint kinematics in functional tasks crucial for ACL patients' rehabilitation. The simplicity of this approach makes it suitable for integration into clinical practice.
在前交叉韧带(ACL)损伤患者的康复过程中,功能任务期间的表现评估和运动执行质量是关键指标。虽然在临床实践中测量表现是可行的,但量化关节运动学带来了更大的挑战。本研究的目的是调查使用深度神经网络进行人体姿态检测的智能手机视频是否能使临床医生不仅能够测量功能任务中的表现,还能评估关节运动学。
12名健康参与者进行10次星状偏移平衡测试的前伸动作,以及10次前跳和垂直跳,同时通过基于标记的参考系统和智能手机进行运动捕捉。OpenPifPaf用于视频记录中解剖标志的无标记检测。使用大腿的人体测量数据对OpenPifPaf坐标进行缩放,并计算基于标记和无标记系统的任务表现和关节运动学。
基于标记和无标记系统的结果比较显示关节角度相似,膝关节的平均均方根误差为2.8°,髋关节为3.1°,踝关节为3.9°。在临床相关参数方面,即表现、膝关节最大屈曲角度和膝关节活动范围,观察到了极佳的一致性(组内相关系数>0.97)。
结果强调了使用基于OpenPifPaf的无标记方法评估对ACL患者康复至关重要的功能任务中的表现和关节运动学的可行性。这种方法的简单性使其适合整合到临床实践中。