IEEE Trans Neural Syst Rehabil Eng. 2024;32:967-973. doi: 10.1109/TNSRE.2024.3366903. Epub 2024 Feb 28.
Postural instability is associated with disease status and fall risk in Persons with Multiple Sclerosis (PwMS). However, assessments of postural instability, known as postural sway, leverage force platforms or wearable accelerometers, and are most often conducted in laboratory environments and are thus not broadly accessible. Remote measures of postural sway captured during daily life may provide a more accessible alterative, but their ability to capture disease status and fall risk has not yet been established. We explored the utility of remote measures of postural sway in a sample of 33 PwMS. Remote measures of sway differed significantly from lab-based measures, but still demonstrated moderately strong associations with patient-reported measures of balance and mobility impairment. Machine learning models for predicting fall risk trained on lab data provided an Area Under Curve (AUC) of 0.79, while remote data only achieved an AUC of 0.51. Remote model performance improved to an AUC of 0.74 after a new, subject-specific k-means clustering approach was applied for identifying the remote data most appropriate for modelling. This cluster-based approach for analyzing remote data also strengthened associations with patient-reported measures, increasing their strength above those observed in the lab. This work introduces a new framework for analyzing data from remote patient monitoring technologies and demonstrates the promise of remote postural sway assessment for assessing fall risk and characterizing balance impairment in PwMS.
姿势不稳定与多发性硬化症患者(PwMS)的疾病状态和跌倒风险有关。然而,姿势不稳定的评估,即姿势摆动,杠杆力平台或可穿戴加速度计,通常在实验室环境中进行,因此无法广泛应用。日常生活中远程测量的姿势摆动可能提供更便捷的替代方法,但它们捕捉疾病状态和跌倒风险的能力尚未确定。我们在 33 名 PwMS 样本中探索了远程姿势摆动测量的效用。远程摆动测量与基于实验室的测量有显著差异,但仍与患者报告的平衡和移动障碍测量有中度强相关性。基于实验室数据训练的跌倒风险机器学习模型的曲线下面积(AUC)为 0.79,而远程数据仅达到 0.51。在应用新的基于特定主题的 K 均值聚类方法来识别最适合建模的远程数据后,远程模型的性能提高到 0.74。这种基于聚类的远程数据分析方法还增强了与患者报告测量的相关性,使其强度超过了在实验室中观察到的强度。这项工作引入了一个新的框架来分析远程患者监测技术的数据,并展示了远程姿势摆动评估在评估 PwMS 跌倒风险和描述平衡障碍方面的潜力。