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Causal analysis of inertial body sensors for enhancing gait assessment separability towards multiple sclerosis diagnosis

机译:惯性人体传感器的因果分析,可增强步态评估对多发性硬化症诊断的可分离性

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Gait assessment is a common method for diagnosing various diseases, disorders, and injuries, studying their impact on mobility, and evaluating the efficacy of various therapeutic interventions. The recent emergence of inertial body sensors for gait assessment addresses the limitations of visual observation and subjective clinical evaluation by providing more precise and objective measures. Inertial sensors have been included in an ongoing study at the University of Virginia Medical Center on Multiple Sclerosis (MS), a chronic autoimmune disorder of the central nervous system (CNS) that produces neurologic impairment and functional disability over time, with the goal of improving the ability to assess MS-affected gait and to distinguish between subjects with MS and those without MS. This work presents a gait assessment technique based on causal modeling to distinguish MS-affected gait and healthy gait. The approach in this work is based on the hypothesis that the strength of interaction between body parts during walking is greater in healthy controls that in MS subjects. The strength of interaction was quantified using a causality index based on the pairwise causal relationships between body parts as characterized by the Phase Slope Index (PSI) of inertial signals from pairs of body parts. In a pilot study with 41 subjects (28 MS subjects and 13 healthy controls), the approach developed in this paper provided better separability (p <; 0.0001) compared with existing methods.
机译:步态评估是诊断各种疾病,病症和损伤,研究其对活动性的影响以及评估各种治疗性干预措施的有效性的常用方法。惯性人体传感器用于步态评估的最新出现是通过提供更精确和客观的措施来解决视觉观察和主观临床评估的局限性。惯性传感器已包括在弗吉尼亚大学多发性硬化症医学中心(MS)的一项正在进行的研究中,该疾病是中枢神经系统的慢性自身免疫性疾病(CNS),随着时间的推移会产生神经功能障碍和功能障碍,目的是改善评估受MS影响的步态并区分患有MS的受试者和未患有MS的受试者的能力。这项工作提出了一种基于因果模型的步态评估技术,以区分受MS影响的步态和健康的步态。这项工作中的方法基于这样的假设,即健康对照者的行走过程中身体各部分之间的相互作用强度比MS受试者更大。使用基于因果关系的惯性信号的相位斜率指数(PSI)来表征因果关系的成对因果关系,使用因果关系指数来量化交互作用的强度。在一项针对41名受试者(28名MS受试者和13名健康对照)的初步研究中,与现有方法相比,本文开发的方法提供了更好的可分离性(p <; 0.0001)。

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