Aznar-Gimeno Rocío, Perez-Lasierra Jose Luis, Pérez-Lázaro Pablo, Bosque-López Irene, Azpíroz-Puente Marina, Salvo-Ibáñez Pilar, Morita-Hernandez Martin, Hernández-Ruiz Ana Caren, Gómez-Bernal Antonio, Rodrigalvarez-Chamarro María de la Vega, Alfaro-Santafé José-Víctor, Del Hoyo-Alonso Rafael, Alfaro-Santafé Javier
Department of Big Data and Cognitive Systems, Instituto Tecnológico de Aragón (ITA), María de Luna 7-8, 50018 Zaragoza, Spain.
Podoactiva Research & Development Department, Biomechanical Unit, Parque Tecnológico Walqa, Ctra. N330a Km 566, 22197 Cuarte, Spain.
Diagnostics (Basel). 2024 Dec 22;14(24):2886. doi: 10.3390/diagnostics14242886.
: Sarcopenia and cognitive decline (CD) are prevalent in aging populations, impacting functionality and quality of life. The early detection of these diseases is challenging, often relying on in-person screening, which is difficult to implement regularly. This study aims to develop artificial intelligence algorithms based on gait analysis, integrating sensor and computer vision (CV) data, to detect sarcopenia and CD. : A cross-sectional case-control study was conducted involving 42 individuals aged 60 years or older. Participants were classified as having sarcopenia if they met the criteria established by the European Working Group on Sarcopenia in Older People and as having CD if their score in the Mini-Mental State Examination was ≤24 points. Gait patterns were assessed at usual walking speeds using sensors attached to the feet and lumbar region, and CV data were captured using a camera. Several key variables related to gait dynamics were extracted. Finally, machine learning models were developed using these variables to predict sarcopenia and CD. : Models based on sensor data, CV data, and a combination of both technologies achieved high predictive accuracy, particularly for CD. The best model for CD achieved an F1-score of 0.914, with a 95% sensitivity and 92% specificity. The combined technologies model for sarcopenia also demonstrated high performance, yielding an F1-score of 0.748 with a 100% sensitivity and 83% specificity. : The study demonstrates that gait analysis through sensor and CV fusion can effectively screen for sarcopenia and CD. The multimodal approach enhances model accuracy, potentially supporting early disease detection and intervention in home settings.
肌肉减少症和认知衰退在老年人群中普遍存在,影响身体功能和生活质量。这些疾病的早期检测具有挑战性,通常依赖于面对面筛查,而这种筛查难以定期实施。本研究旨在开发基于步态分析的人工智能算法,整合传感器和计算机视觉(CV)数据,以检测肌肉减少症和认知衰退。
开展了一项横断面病例对照研究,纳入了42名60岁及以上的个体。如果参与者符合老年人肌肉减少症欧洲工作组制定的标准,则被分类为患有肌肉减少症;如果其简易精神状态检查表得分≤24分,则被分类为患有认知衰退。使用附着在脚部和腰部区域的传感器以平常步行速度评估步态模式,并使用摄像头采集CV数据。提取了几个与步态动力学相关的关键变量。最后,使用这些变量开发机器学习模型来预测肌肉减少症和认知衰退。
基于传感器数据、CV数据以及这两种技术组合的模型都取得了较高的预测准确性,尤其是对于认知衰退。预测认知衰退的最佳模型F1分数为0.914,灵敏度为95%,特异度为92%。用于肌肉减少症的组合技术模型也表现出高性能,F1分数为0.748,灵敏度为100%,特异度为83%。
该研究表明,通过传感器和CV融合进行步态分析可以有效地筛查肌肉减少症和认知衰退。这种多模态方法提高了模型准确性,有可能支持在家庭环境中进行疾病早期检测和干预。