Tuesday, September 27, 2016

Identifying candidates for targeted gait rehabilitation after stroke: better prediction through biomechanics-informed characterization

With no protocols presented this research is not only totally useless but not repeatable.
Was this research from June 2015 not good enough to come to a conclusion to your question?

Paretic Propulsion and Trailing Limb Angle Are Key Determinants of Long-Distance Walking Function After Stroke

The latest here:

Identifying candidates for targeted gait rehabilitation after stroke: better prediction through biomechanics-informed characterization

  • Louis N. AwadEmail author,
  • Darcy S. Reisman,
  • Ryan T. Pohlig and
  • Stuart A. Binder-Macleod
Journal of NeuroEngineering and Rehabilitation201613:84
DOI: 10.1186/s12984-016-0188-8
Received: 11 June 2016
Accepted: 26 August 2016
Published: 23 September 2016

Abstract

Background

Walking speed has been used to predict the efficacy of gait training; however, poststroke motor impairments are heterogeneous and different biomechanical strategies may underlie the same walking speed. Identifying which individuals will respond best to a particular gait rehabilitation program using walking speed alone may thus be limited. The objective of this study was to determine if, beyond walking speed, participants’ baseline ability to generate propulsive force from their paretic limbs (paretic propulsion) influences the improvements in walking speed resulting from a paretic propulsion-targeting gait intervention.

Methods

Twenty seven participants >6 months poststroke underwent a 12-week locomotor training program designed to target deficits in paretic propulsion through the combination of fast walking with functional electrical stimulation to the paretic ankle musculature (FastFES). The relationship between participants’ baseline usual walking speed (UWSbaseline), maximum walking speed (MWSbaseline), and paretic propulsion (propbaseline) versus improvements in usual walking speed (∆UWS) and maximum walking speed (∆MWS) were evaluated in moderated regression models.

Results

UWSbaseline and MWSbaseline were, respectively, poor predictors of ΔUWS (R 2  = 0.24) and ΔMWS (R 2  = 0.01). Paretic propulsion × walking speed interactions (UWSbaseline × propbaseline and MWSbaseline × propbaseline) were observed in each regression model (R 2 s  = 0.61 and 0.49 for ∆UWS and ∆MWS, respectively), revealing that slower individuals with higher utilization of the paretic limb for forward propulsion responded best to FastFES training and were the most likely to achieve clinically important differences.

Conclusions

Characterizing participants based on both their walking speed and ability to generate paretic propulsion is a markedly better approach to predicting walking recovery following targeted gait rehabilitation than using walking speed alone.

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