Classification of muscle activity patterns in healthy children using biclustering algorithm

•Biclustering algorithm KMB can be used to classify groups of children with similar patterns in muscles activities based on EMG data.•The most important parameters in the biclustering method are the threshold describing when the multiple node deletion step is used and the threshold that limits the v...

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Published inBiomedical signal processing and control Vol. 84; p. 104731
Main Authors Pauk, Jolanta, Daunoraviciene, Kristina, Ziziene, Jurgita, Minta-Bielecka, Katarzyna, Dzieciol-Anikiej, Zofia
Format Journal Article
LanguageEnglish
Published Elsevier Ltd 01.07.2023
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Summary:•Biclustering algorithm KMB can be used to classify groups of children with similar patterns in muscles activities based on EMG data.•The most important parameters in the biclustering method are the threshold describing when the multiple node deletion step is used and the threshold that limits the value of mean square residue.•The proposed method can be used in the strategy for finding the homogeneous groups. In recent years, there has been major interest in recognising electromyography (EMG) patterns. This work proposes a new method based on a biclustering algorithm which can group strides showing homogeneous EMG activation intervals. The surface EMG signals of biceps femoris, rectus femoris, semitendinosus, lateral gastrocnemius, and medial gastrocnemius muscles of 17 healthy children aged between 4 and 11 years old were obtained using a Trigno EMG wireless system. The data set was tested for different values of parameter α (the threshold describing when the multiple node deletion step is used) and δ (the threshold that limits the value of the mean square residue). The highest number of coincidences of muscle activation was observed in 6 to 7-year-old subjects. This was not affected by their anthropometrics or gender. The obtained biclusters reflect actual differences between the subjects' gait parameters, namely stride length, stride time, and walking speed. These results can be used to develop strategies for finding homogeneous groups of patients.
ISSN:1746-8094
1746-8108
DOI:10.1016/j.bspc.2023.104731