Trojaniello Diana, Cereatti Andrea, Pelosin Elisa, Avanzino Laura, Mirelman Anat, Hausdorff Jeffrey M, Della Croce Ugo
Information Engineering Unit, Department of Political Sciences, Communication Sciences and Information Engineering (POLCOMING), University of Sassari, V,le Mancini 5, 07100 Sassari, Italy.
J Neuroeng Rehabil. 2014 Nov 11;11:152. doi: 10.1186/1743-0003-11-152.
The step-by-step determination of the spatio-temporal parameters of gait is clinically relevant since it provides an estimation of the variability of specific gait patterns associated with frequent geriatric syndromes. In recent years, several methods, based on the use of magneto-inertial units (MIMUs), have been developed for the step-by-step estimation of the gait temporal parameters. However, most of them were applied to the gait of healthy subjects and/or of a single pathologic population. Moreover, spatial parameters in pathologic populations have been rarely estimated step-by-step using MIMUs. The validity of clinically suitable MIMU-based methods for the estimation of spatio-temporal parameters is therefore still an open issue. The aim of this study was to propose and validate a method for the determination of both temporal and spatial parameters that could be applied to normal and heavily compromised gait patterns.
Two MIMUs were attached above each subject's ankles. An instrumented gait mat was used as gold standard. Gait data were acquired from ten hemiparetic subjects, ten choreic subjects, ten subjects with Parkinson's disease and ten healthy older adults walking at two different gait speeds. The method detects gait events (GEs) taking advantage of the cyclic nature of gait and exploiting some lower limb invariant kinematic characteristics. A combination of a MIMU axes realignment along the direction of progression and of an optimally filtered direct and reverse integration is used to determine the stride length.
Over the 4,514 gait cycles analyzed, neither missed nor extra GEs were generated. The errors in identifying both initial and final contact at comfortable speed ranged between 0 and 11 ms for the different groups analyzed. The stride length was estimated for all subjects with less than 3% error.
The proposed method is apparently extremely robust since gait speed did not substantially affect its performance and both missed and extra GEs were avoided. The spatio-temporal parameters estimates showed smaller errors than those reported in previous studies and a similar level of precision and accuracy for both healthy and pathologic gait patterns. The combination of robustness, precision and accuracy suggests that the proposed method is suitable for routine clinical use.
逐步确定步态的时空参数具有临床意义,因为它能估计与常见老年综合征相关的特定步态模式的变异性。近年来,基于磁惯性单元(MIMU)的几种方法已被开发用于逐步估计步态时间参数。然而,它们大多应用于健康受试者和/或单一病理人群的步态。此外,很少使用MIMU对病理人群的空间参数进行逐步估计。因此,临床上适用的基于MIMU的时空参数估计方法的有效性仍是一个未解决的问题。本研究的目的是提出并验证一种可应用于正常和严重受损步态模式的时间和空间参数测定方法。
在每个受试者的脚踝上方附着两个MIMU。使用仪器化的步态垫作为金标准。从10名偏瘫受试者、10名舞蹈症受试者、10名帕金森病受试者和10名健康老年人以两种不同步态速度行走时采集步态数据。该方法利用步态的周期性并利用一些下肢不变的运动学特征来检测步态事件(GE)。结合沿行进方向的MIMU轴重新对齐以及经过最佳滤波的正向和反向积分来确定步长。
在分析的4514个步态周期中,未产生漏检或额外的GE。对于所分析的不同组,在舒适速度下识别初始和最终接触的误差在0至11毫秒之间。所有受试者的步长估计误差均小于3%。
所提出的方法显然极其稳健,因为步态速度对其性能影响不大,并且避免了漏检和额外的GE。时空参数估计显示出比先前研究报告的误差更小,并且对于健康和病理步态模式具有相似的精度和准确度水平。稳健性、精度和准确度的结合表明所提出的方法适用于常规临床应用。