Steps to Facilitate the Use of Clinical Gait Analysis in Stroke Patients: The Validation of a Single 2D RGB Smartphone Video-Based System for Gait Analysis

被引:3
作者
Barzyk, Philipp [1 ]
Boden, Alina-Sophie [1 ]
Howaldt, Justin [1 ]
Stuerner, Jana [2 ,3 ]
Zimmermann, Philip [4 ]
Seebacher, Daniel [4 ]
Liepert, Joachim [2 ,3 ]
Stein, Manuel [4 ]
Gruber, Markus [1 ]
Schwenk, Michael [1 ]
机构
[1] Univ Konstanz, Human Performance Res Ctr, Dept Sport Sci, D-78464 Constance, Germany
[2] Lurija Inst, D-78476 Allensbach, Germany
[3] Dept Neurol Rehabil, D-78476 Allensbach, Germany
[4] Subsequent GmbH, D-78467 Constance, Germany
关键词
markerless motion capture; gait analysis; stroke; joint kinematics; RGB camera; human movement analysis; RELIABILITY;
D O I
10.3390/s24237819
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
Clinical gait analysis plays a central role in the rehabilitation of stroke patients. However, practical and technical challenges limit their use in clinical settings. This study aimed to validate SMARTGAIT, a deep learning-based gait analysis system that addresses these limitations. Eight stroke patients took part in the study at the Human Performance Research Centre of the University of Konstanz. Gait measurements were taken using both the marker-based Vicon motion capture system and the single-smartphone-based SMARTGAIT system. We evaluated the agreement for knee, hip, and ankle joint angle kinematics in the frontal and sagittal plane and spatiotemporal gait parameters between the two systems. The results mostly demonstrated high levels of agreement between the two systems, with Pearson correlations of >= 0.79 for all lower body angle kinematics in the sagittal plane and correlations of >= 0.71 in the frontal plane. RMSE values were <= 4.6 degrees. The intraclass correlation coefficients for all derived gait parameters showed good to excellent levels of agreement. SMARTGAIT is a promising tool for gait analysis in stroke, particularly for quantifying gait characteristics in the sagittal plane, which is very relevant for clinical gait analysis. However, further analyses are required to validate the use of SMARTGAIT in larger samples and its transferability to different types of pathological gait. In conclusion, a single smartphone recording (monocular 2D RGB camera) could make gait analysis more accessible in clinical settings, potentially simplifying the process and making it more feasible for therapists and doctors to use in their day-to-day practice.
引用
收藏
页数:12
相关论文
共 23 条
[1]   Gait Disturbances in Patients With Stroke [J].
Balaban, Birol ;
Tok, Fatih .
PM&R, 2014, 6 (07) :635-642
[2]   AI-smartphone markerless motion capturing of hip, knee, and ankle joint kinematics during countermovement jumps [J].
Barzyk, Philipp ;
Zimmermann, Philip ;
Stein, Manuel ;
Keim, Daniel ;
Gruber, Markus .
EUROPEAN JOURNAL OF SPORT SCIENCE, 2024, 24 (10) :1452-1462
[3]   Gait Analysis in Parkinson's Disease: An Overview of the Most Accurate Markers for Diagnosis and Symptoms Monitoring [J].
di Biase, Lazzaro ;
Di Santo, Alessandro ;
Caminiti, Maria Letizia ;
De Liso, Alfredo ;
Shah, Syed Ahmar ;
Ricci, Lorenzo ;
Di Lazzaro, Vincenzo .
SENSORS, 2020, 20 (12) :1
[4]   World Stroke Organization (WSO): Global Stroke Fact Sheet 2022 [J].
Feigin, Valery L. ;
Brainin, Michael ;
Norrving, Bo ;
Martins, Sheila ;
Sacco, Ralph L. ;
Hacke, Werner ;
Fisher, Marc ;
Pandian, Jeyaraj ;
Lindsay, Patrice .
INTERNATIONAL JOURNAL OF STROKE, 2022, 17 (01) :18-29
[5]   Concurrent validity of smartphone-based markerless motion capturing to quantify lower-limb joint kinematics in healthy and pathological gait [J].
Horsak, Brian ;
Eichmann, Anna ;
Lauer, Kerstin ;
Prock, Kerstin ;
Krondorfer, Philipp ;
Siragy, Tarique ;
Dumphart, Bernhard .
JOURNAL OF BIOMECHANICS, 2023, 159
[6]   Artificial Neural Network Analyzing Wearable Device Gait Data for Identifying Patients With Stroke Unable to Return to Work [J].
Iosa, Marco ;
Capodaglio, Edda ;
Pela, Silvia ;
Persechino, Benedetta ;
Morone, Giovanni ;
Antonucci, Gabriella ;
Paolucci, Stefano ;
Panigazzi, Monica .
FRONTIERS IN NEUROLOGY, 2021, 12
[7]   Concurrent assessment of gait kinematics using marker-based and markerless motion capture [J].
Kanko, M. Robert ;
Laende, K. Elise ;
Davis, M. Elysia ;
Selbie, W. Scott ;
Deluzio, J. Kevin .
JOURNAL OF BIOMECHANICS, 2021, 127
[8]   Gait analysis - Available platforms for outcome assessment [J].
Kloepfer-Kraemer, Isabella ;
Brand, Andreas ;
Wackerle, Hannes ;
Muessig, Janina ;
Kroeger, Inga ;
Augat, Peter .
INJURY-INTERNATIONAL JOURNAL OF THE CARE OF THE INJURED, 2020, 51 :S90-S96
[9]   A Guideline of Selecting and Reporting Intraclass Correlation Coefficients for Reliability Research [J].
Koo, Terry K. ;
Li, Mae Y. .
JOURNAL OF CHIROPRACTIC MEDICINE, 2016, 15 (02) :155-163
[10]   Support vector machine for classification of walking conditions of persons after stroke with dropped foot [J].
Lau, Hong-yin ;
Tong, Kai-yu ;
Zhu, Hailong .
HUMAN MOVEMENT SCIENCE, 2009, 28 (04) :504-514