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深度学习无标记运动捕捉系统在过头蹲过程中的同时效度和测试信度。

Concurrent validity and test reliability of the deep learning markerless motion capture system during the overhead squat.

机构信息

Naver, Health Care Lab, Seongnam, 13561, Republic of Korea.

Department of Physical Therapy, Sports Movement Artificial-Intelligence Robotics Technology (SMART) Institute, Yonsei University, Wonju, 26493, Republic of Korea.

出版信息

Sci Rep. 2024 Nov 27;14(1):29462. doi: 10.1038/s41598-024-79707-2.

Abstract

Marker-based optical motion capture systems have been used as a cardinal vehicle to probe and understand the underpinning mechanism of human posture and movement, but it is time-consuming for complex and delicate data acquisition and analysis, labor-intensive with highly trained operators. To mitigate such inherent issues, we developed an accurate and usable (5-min data collection and processing) deep-learning-based 3-Dimensional markerless motion capture system called "Ergo", designed for use in ecological digital healthcare environments. We investigated the concurrent validity and the test-retest reliability of the Ergo system measurement's whole body joint kinematics (time series joint angles and peak joint angles) data by comparing it with a standard marker-based motion capture system recorded during an overhead squat movement. The Ergo system demonstrated excellent agreement for time series joint angles ( = 0.88-0.99) and for peak joint angles ( = 0.75-1.0) when compared with the gold standard marker-based motion capture system. Additionally, we observed high test-retest reliability ( = 0.92-0.99). In conclusion, the deep learning-based markerless Ergo motion capture system considerably shows comparable performance with the Gold Standard marker-based motion capture system measurements in the concurrent accuracy, reliability, thereby making it a highly accessible choice for diverse universal users and ecological industries or environments.

摘要

基于标记的光学运动捕捉系统已被用作探索和理解人体姿势和运动基本机制的主要手段,但它在复杂和精细的数据采集和分析方面耗时耗力,需要经过高度训练的操作人员进行人工操作。为了减轻这些固有问题,我们开发了一种准确且易用(5 分钟的数据采集和处理)的基于深度学习的无标记 3D 运动捕捉系统,称为“Ergo”,旨在用于生态数字医疗保健环境中。我们通过将 Ergo 系统测量的整个身体关节运动学(时间序列关节角度和峰值关节角度)数据与标准基于标记的运动捕捉系统在头顶深蹲运动期间记录的数据进行比较,研究了 Ergo 系统测量的整体准确性和测试-再测试可靠性。与金标准基于标记的运动捕捉系统相比,Ergo 系统在时间序列关节角度( = 0.88-0.99)和峰值关节角度( = 0.75-1.0)方面表现出优异的一致性。此外,我们还观察到高测试-再测试可靠性( = 0.92-0.99)。总之,基于深度学习的无标记 Ergo 运动捕捉系统在同步准确性、可靠性方面与金标准基于标记的运动捕捉系统测量结果相当,因此成为各种通用用户和生态产业或环境的高度可访问选择。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b21d/11603033/45de6bd8aa0a/41598_2024_79707_Fig1_HTML.jpg

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