Crisafulli Davide, Spataro Marta, De Marchis Cristiano, Risitano Giacomo, Milone Dario
Department of Engineering, University of Messina, Contrada di Dio, 98166 Messina, Italy.
Sensors (Basel). 2024 Dec 9;24(23):7862. doi: 10.3390/s24237862.
The knee is one of the joints most vulnerable to disease and injury, particularly in athletes and older adults. Surface temperature monitoring provides insights into the health of the analysed area, supporting early diagnosis and monitoring of conditions such as osteoarthritis and tendon injuries. This study presents an innovative approach that combines infrared thermography techniques with a Resnet 152 (DeepLabCut based) to detect and monitor temperature variations across specific knee regions during repeated sit-to-stand exercises. Thermal profiles are then analysed in relation to weight distribution data collected using a Wii Balance Board during the exercise. DeepLabCut was used to automate the selection of the region of interest (ROI) for temperature assessments, improving data accuracy compared to traditional time-consuming semi-automatic methods. This integrative approach enables precise and marker-free measurements, offering clinically relevant data that can aid in the diagnosis of knee pathologies, evaluation of the rehabilitation progress, and assessment of treatment effectiveness. The results emphasize the potential of combining thermography with DeepLabCut-driven data analysis to develop accessible, non-invasive tools for joint health monitoring or preventive diagnostics of pathologies.
膝关节是最易患疾病和受伤的关节之一,在运动员和老年人中尤为如此。表面温度监测有助于了解被分析区域的健康状况,为骨关节炎和肌腱损伤等病症的早期诊断和监测提供支持。本研究提出了一种创新方法,将红外热成像技术与基于Resnet 152(DeepLabCut)的方法相结合,以在反复坐立试验过程中检测和监测特定膝关节区域的温度变化。然后,根据运动过程中使用Wii平衡板收集的体重分布数据对热分布图进行分析。DeepLabCut用于自动选择温度评估的感兴趣区域(ROI),与传统的耗时半自动方法相比,提高了数据准确性。这种综合方法能够进行精确且无标记的测量,提供有助于膝关节疾病诊断、康复进展评估和治疗效果评估的临床相关数据。研究结果强调了将热成像与DeepLabCut驱动的数据分析相结合,以开发用于关节健康监测或疾病预防性诊断的便捷、非侵入性工具的潜力。