Ma Hao, Liao Wei-Hsin
IEEE Trans Neural Syst Rehabil Eng. 2017 Jun;25(6):597-607. doi: 10.1109/TNSRE.2016.2584923. Epub 2016 Jun 24.
Modeling and evaluation of patients' gait patterns is the basis for both gait assessment and gait rehabilitation. This paper presents a convenient and real-time gait modeling, analysis, and evaluation method based on ground reaction forces (GRFs) measured by a pair of smart insoles. Gait states are defined based on the foot-ground contact forms of both legs. From the obtained gait state sequence and the duration of each state, the human gait is modeled as a semi-Markov process (SMP). Four groups of gait features derived from the SMP gait model are used for characterizing individual gait patterns. With this model, both the normal gaits of healthy people and the abnormal gaits of patients with impaired mobility are analyzed. Abnormal evaluation indices (AEI) are further proposed for gait abnormality assessment. Gait analysis experiments are conducted on 23 subjects with different ages and health conditions. The results show that gait patterns are successfully obtained and evaluated for normal, age-related, and pathological gaits. The effectiveness of the proposed AEI for gait assessment is verified through comparison with a video-based gait abnormality rating scale.
患者步态模式的建模与评估是步态评估和步态康复的基础。本文提出了一种基于一对智能鞋垫测量的地面反作用力(GRF)的便捷实时步态建模、分析和评估方法。步态状态是根据双腿的足地接触形式定义的。从获得的步态状态序列和每个状态的持续时间来看,人体步态被建模为一个半马尔可夫过程(SMP)。从SMP步态模型中导出的四组步态特征用于表征个体步态模式。利用该模型,对健康人的正常步态和行动能力受损患者的异常步态进行了分析。进一步提出了异常评估指标(AEI)用于步态异常评估。对23名不同年龄和健康状况的受试者进行了步态分析实验。结果表明,成功获得了正常、与年龄相关和病理步态的步态模式并进行了评估。通过与基于视频的步态异常评分量表比较,验证了所提出的AEI用于步态评估的有效性。