Roerdink Melvyn, Coolen Bert H, Clairbois Bert H E, Lamoth Claudine J C, Beek Peter J
Research Institute MOVE, Faculty of Human Movement Sciences, VU University, van der Boechorststraat 9, 1081BT Amsterdam, The Netherlands.
J Biomech. 2008 Aug 28;41(12):2628-32. doi: 10.1016/j.jbiomech.2008.06.023. Epub 2008 Jul 26.
Gait research and clinical gait training may benefit from movement-dependent event control, that is, technical applications in which events such as obstacle appearance or visual/acoustic cueing are (co)determined online on the basis of current gait properties. A prerequisite for successful gait-dependent event control is accurate online detection of gait events such as foot contact (FC) and foot off (FO). The objective of the present study was to assess the feasibility of online FC and FO detection using a single large force platform embedded in a treadmill. Center-of-pressure, total force output and kinematic data were recorded simultaneously in 12 healthy participants. Online FC and FO estimates and spatial and temporal gait parameters estimated from the force platform data--i.e., center-of-pressure profiles--were compared to offline kinematic counterparts, which served as the gold standard. Good correspondence was achieved between online FC detections using center-of-pressure profiles and those derived offline from kinematic data, whereas FO was detected 31 ms too late. A good relative and absolute agreement was achieved for both spatial and temporal gait parameters, which was improved further by applying more fine-grained FO estimation procedures using characteristic local minima in the total force output time series. These positive results suggest that the proposed system for gait-dependent event control may be successfully implemented in gait research as well as gait interventions in clinical practice.
步态研究和临床步态训练可能会受益于运动相关事件控制,即基于当前步态特性在线(共同)确定诸如障碍物出现或视觉/听觉提示等事件的技术应用。成功的步态相关事件控制的一个先决条件是准确在线检测诸如足接触(FC)和足离地(FO)等步态事件。本研究的目的是评估使用嵌入跑步机的单个大型测力平台进行在线FC和FO检测的可行性。在12名健康参与者中同时记录了压力中心、总力输出和运动学数据。将根据测力平台数据(即压力中心轮廓)估计的在线FC和FO以及时空步态参数与作为金标准的离线运动学对应数据进行比较。使用压力中心轮廓进行的在线FC检测与从运动学数据离线得出的检测之间取得了良好的对应关系,而FO的检测延迟了31毫秒。对于时空步态参数,相对和绝对一致性都很好,通过在总力输出时间序列中使用特征性局部最小值应用更精细的FO估计程序,这种一致性得到了进一步改善。这些积极结果表明,所提出的用于步态相关事件控制的系统可能会在步态研究以及临床实践中的步态干预中成功实施。