Department of Engineering (DI), University of Messina, Contrada di Dio, 98166 Messina, Italy.
Sensors (Basel). 2024 May 10;24(10):3022. doi: 10.3390/s24103022.
This study examined the efficacy of an optimized DeepLabCut (DLC) model in motion capture, with a particular focus on the sit-to-stand (STS) movement, which is crucial for assessing the functional capacity in elderly and postoperative patients. This research uniquely compared the performance of this optimized DLC model, which was trained using 'filtered' estimates from the widely used OpenPose (OP) model, thereby emphasizing computational effectiveness, motion-tracking precision, and enhanced stability in data capture. Utilizing a combination of smartphone-captured videos and specifically curated datasets, our methodological approach included data preparation, keypoint annotation, and extensive model training, with an emphasis on the flow of the optimized model. The findings demonstrate the superiority of the optimized DLC model in various aspects. It exhibited not only higher computational efficiency, with reduced processing times, but also greater precision and consistency in motion tracking thanks to the stability brought about by the meticulous selection of the OP data. This precision is vital for developing accurate biomechanical models for clinical interventions. Moreover, this study revealed that the optimized DLC maintained higher average confidence levels across datasets, indicating more reliable and accurate detection capabilities compared with standalone OP. The clinical relevance of these findings is profound. The optimized DLC model's efficiency and enhanced point estimation stability make it an invaluable tool in rehabilitation monitoring and patient assessments, potentially streamlining clinical workflows. This study suggests future research directions, including integrating the optimized DLC model with virtual reality environments for enhanced patient engagement and leveraging its improved data quality for predictive analytics in healthcare. Overall, the optimized DLC model emerged as a transformative tool for biomechanical analysis and physical rehabilitation, promising to enhance the quality of patient care and healthcare delivery efficiency.
本研究旨在检验优化后的 DeepLabCut (DLC) 模型在运动捕捉方面的功效,尤其是在坐站(STS)运动中的表现,这对于评估老年患者和术后患者的功能能力至关重要。本研究的独特之处在于比较了经“过滤”后的 OpenPose (OP) 模型数据训练而成的优化 DLC 模型的性能,从而强调了计算效率、运动跟踪精度以及数据采集的稳定性。本研究采用智能手机拍摄的视频和专门策划的数据集相结合,方法包括数据准备、关键点标注以及广泛的模型训练,重点介绍了优化模型的流程。研究结果表明,优化后的 DLC 模型在多个方面具有优越性。它不仅具有更高的计算效率(处理时间更短),而且由于对 OP 数据的精心选择带来的稳定性,运动跟踪的精度和一致性也更高。这种精度对于开发用于临床干预的精确生物力学模型至关重要。此外,本研究表明,与独立的 OP 相比,优化后的 DLC 在所有数据集上的平均置信度水平都更高,这表明其具有更高的检测能力和可靠性。这些发现具有深远的临床意义。优化后的 DLC 模型的效率和增强的点估计稳定性使其成为康复监测和患者评估的宝贵工具,有可能简化临床工作流程。本研究还提出了未来的研究方向,包括将优化后的 DLC 模型与虚拟现实环境集成,以提高患者的参与度,并利用其改进的数据质量进行医疗保健中的预测分析。总的来说,优化后的 DLC 模型是生物力学分析和物理康复的变革性工具,有望提高患者护理质量和医疗保健的交付效率。