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Gait pattern analysis and clinical subgroup identification: a retrospective observational study

机译:步态模式分析和临床亚组识别:回顾性观测研究

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To identify basic gait features and abnormal gait patterns that are common to different neurological or musculoskeletal conditions, such as cerebral stroke, Parkinsonian disorders, radiculopathy, and musculoskeletal pain. In this retrospective study, temporal-spatial, kinematic, and kinetic gait parameters were analyzed in 424 patients with hemiplegia after stroke, 205 patients with Parkinsonian disorders, 216 patients with radiculopathy, 167 patients with musculoskeletal pain, and 316 normal controls (total, 1328 subjects). We assessed differences according to the condition and used a community detection algorithm to identify subgroups within each condition. Additionally, we developed a prediction model for subgroup classification according to gait speed and maximal hip extension in the stance phase. The main findings can be summarized as follows. First, there was an asymmetric decrease of the knee/ankle flexion angles in hemiplegia and a marked reduction of the hip/knee range of motion with increased moment in Parkinsonian disorders. Second, three abnormal gait patterns, including fast gait speed with adequate maximal hip extension, fast gait speed with inadequate maximal hip extension, and slow gait speed, were found throughout the conditions examined. Third, our simple prediction model based on gait speed and maximal hip extension angle was characterized by a high degree of accuracy in predicting subgroups within a condition. Our findings suggest the existence of specific gait patterns within and across conditions. Our novel subgrouping algorithm can be employed in routine clinical settings to classify abnormal gait patterns in various neurological disorders and guide the therapeutic approach and monitoring.
机译:为了鉴定不同神经或肌肉骨骼条件的基本步态特征和异常步态模式,例如脑卒中,帕金森疾病,放射性病变和肌肉骨骼疼痛。在这种回顾性研究中,分析了424例偏瘫患者的时间空间,运动学和动力学步态参数,205例Parkinsonian疾病患者,216例患有肌肉骨骼疼痛,167例肌肉骨骼疼痛,316例正常对照(总,1328例主题)。我们根据条件评估差异,并使用了社区检测算法来识别每个条件内的子组。另外,我们根据远程阶段的步态速度和最大髋部扩展开发了亚组分类的预测模型。主要发现可以概括如下。首先,偏瘫患者膝关节/踝关节角度的不对称降低,并且在帕金森疾病中增加了髋部/膝关节运动的显着减少。其次,在整个条件下发现,在整个条件下发现了三种异常步态图案,包括具有足够的最大髋部延伸的快速步态速度,具有不足的最大髋部延伸和步态速度慢的步态速度。第三,我们的简单预测模型基于步态速度和最大髋部延伸角度的特征在于在一个条件下预测子组的高精度。我们的研究结果表明,在条件内部和跨境的特定步态模式存在。我们的新小组算法可以用于常规临床环境中,以对各种神经疾病的异常步态模式进行分类,并指导治疗方法和监测。

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