Changes in Electroencephalography Complexity using a Brain Computer Interface-Motor Observation Training in Chronic Stroke Patients: A Fuzzy Approximate Entropy Analysis

Frontiers in Human Neuroscience 11:266770 (2017)
  Copy   BIBTEX

Abstract

Entropy-based algorithms have been suggested as robust estimators of electroencephalography (EEG) predictability or regularity. This study aimed to examine possible disturbances in EEG complexity as a means to elucidate the pathophysiological mechanisms in chronic stroke, before and after a brain computer interface (BCI)-motor observation intervention. Eleven chronic stroke subjects and nine unimpaired subjects were recruited to examine the differences in their EEG complexity. The BCI-motor observation intervention was designed to promote functional recovery of the hand in stroke subjects. Fuzzy approximate entropy (fApEn), a novel entropy-based algorithm designed to evaluate complexity in physiological systems, was applied to assess the EEG signals acquired from unimpaired subjects and stroke subjects, both before and after training. The results showed that stroke subjects had significantly lower EEG fApEn than unimpaired subjects (p < 0.05) in the motor cortex area of the brain (C3, C4, FC3, FC4, CP3, CP4) in both hemispheres before training. After training, motor function of the paretic upper limb, assessed by the Fugl-Meyer Assessment-Upper Limb (FMA-UL), Action Research Arm Test (ARAT), and Wolf Motor Function Test (WMFT) improved significantly (p < 0.05). Furthermore, the EEG fApEn in stroke subjects increased considerably in the central area of the contralesional hemisphere after training (p < 0.05). A significant correlation was noted between clinical scales (FMA-UL, ARAT, and WMFT) and EEG fApEn in C3/C4 in the contralesional hemisphere (p < 0.05). This finding suggests that the increase in EEG fApEn could be an estimator of the variance in upper limb motor function improvement. In summary, fApEn can be used to identify abnormal EEG complexity in chronic stroke, when used with BCI-motor observation training. Moreover, these findings based on the fApEn of EEG signals also expand the existing interpretation of training-induced functional improvement in stroke subjects. Entropy-based analysis might serve as a novel approach to understanding the abnormal cortical dynamics of stroke and the neurological changes induced by rehabilitation training.

Links

PhilArchive



    Upload a copy of this work     Papers currently archived: 91,628

External links

Setup an account with your affiliations in order to access resources via your University's proxy server

Through your library

Similar books and articles

Approximate Similarities and Poincaré Paradox.Giangiacomo Gerla - 2008 - Notre Dame Journal of Formal Logic 49 (2):203-226.
Fuzzy concept lattice reduction using Shannon entropy and Huffman coding.Prem Kumar Singh & Abdullah Gani - 2015 - Journal of Applied Non-Classical Logics 25 (2):101-119.
Fuzzy automata and life.Clifford A. Reiter - 2002 - Complexity 7 (3):19-29.
Ethische aspekte von gehirn-computer-schnittstellen in motorischen neuroprothesen.Jens Clausen - 2006 - International Review of Information Ethics 5 (9):25-32.

Analytics

Added to PP
2017-09-06

Downloads
20 (#763,203)

6 months
12 (#208,861)

Historical graph of downloads
How can I increase my downloads?

Author Profiles

References found in this work

Add more references