Sounds like someone trying to obsfuscate the fact there is nothing close to a protocol by using big words. Useless.
multi-modality fusion?; coactivated?; fusing the characteristics?;
k weighted angular
similarity?
Quantitative Assessment of Upper-limb Motor Function for Post-stroke Rehabilitation Based on Motor Synergy Analysis and Multi-modality Fusion
- PMID:
- 32149692
- DOI:
- 10.1109/TNSRE.2020.2978273
Abstract
Functional
assessment is an essential part of rehabilitation protocols after
stroke. Conventionally, the assessment process relies heavily on
clinical experience and lacks quantitative analysis. In order to
objectively quantify the upper-limb motor impairments in patients with
post-stroke hemiparesis, this study proposes a novel assessment approach
based on motor synergy quantification and multi-modality fusion.
Fifteen post-stroke hemiparetic patients and fifteen age-matched healthy
persons participated in this study. During different goal-directed
tasks, kinematic data and surface electromyography (sEMG) signals were
synchronously collected from these participants, and then motor features
extracted from each modal data can be fed into the respective local
classifiers. In addition, kinematic synergies and muscle synergies were
quantified by principal component analysis (PCA) and k weighted angular
similarity (kWAS) algorithm to provide in-depth analysis of the
coactivated features responsible for observable movement impairments. By
integrating the outputs of local classifiers and the quantification
results of motor synergies, ensemble classifiers can be created to
generate quantitative assessment for different modalities separately. In
order to further exploit the complementarity between the evaluation
results at kinematic and muscular levels, a multi-modal fusion scheme
was developed to comprehensively analyze the upper-limb motor function
and generate a probability-based function score. Under the proposed
assessment framework, three types of machine learning methods were
employed to search the optimal performance of each classifier.
Experimental results demonstrated that the classification accuracy was
respectively improved by 4.86% and 2.78% when the analysis of kinematic
and muscle synergies was embedded in the assessment system, and can be
further enhanced to 96.06% by fusing the characteristics derived from
different modalities. Furthermore, the assessment result of
multi-modality fusion framework exhibited a significant correlation with
the score of standard clinical tests (R= -0.87, P=1.98e-5). These
promising results show the feasibility of applying the proposed method
to clinical assessments for post-stroke hemiparetic patients.
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