http://jneuroengrehab.biomedcentral.com/articles/10.1186/s12984-016-0132-y
- Felix C. HuangEmail author and
- James L. Patton
Journal of NeuroEngineering and Rehabilitation201613:23
DOI: 10.1186/s12984-016-0132-y
© Huang and Patton. 2016
Received: 18 December 2014
Accepted: 29 February 2016
Published: 9 March 2016
Abstract
Background
While clinical assessments
provide tools for characterizing abilities in motor-impaired
individuals, concerns remain over their repeatability and reliability.
Typical robot-assisted training studies focus on repetition of
prescribed actions, yet such movement data provides an incomplete
account of abnormal patterns of coordination. Recent studies have shown
positive effects from self-directed movement, yet such a training
paradigm leads to challenges in how to quantify and interpret
performance.
Methods
With data from chronic stroke survivors (n
= 10, practicing for 3 days), we tabulated histograms of the
displacement, velocity, and acceleration for planar motion, and examined
whether modeling of distributions could reveal changes in available
movement patterns. We contrasted these results with scalar measures of
the range of motion. We performed linear discriminant analysis (LDA)
classification with selected histogram features to compare predictions
versus actual subject identifiers. As a basis of comparison, we also
present an age-matched control group of healthy individuals (n = 10, practicing for 1 day).
Results
Analysis of range of motion
did not show improvement from self-directed movement training for the
stroke survivors in this study. However, examination of distributions
indicated that increased multivariate normal components were needed to
accurately model the patterns of movement after training. Stroke
survivors generally exhibited more complex distributions of motor
exploration compared to the age-matched control group. Classification
using linear discriminant analysis revealed that movement patterns were
identifiable by individual. Individuals in the control group were more
difficult to identify using classification methods, consistent with the
idea that motor deficits contribute significantly to unique movement
signatures.
Conclusions
Distribution analysis revealed
individual patterns of abnormal coordination in stroke survivors and
changes in these patterns with training. These findings were not
apparent from scalar metrics that simply summarized properties of motor
exploration. Our results suggest new methods for characterizing motor
capabilities, and could provide the basis for powerful tools for
designing customized therapy.
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