| Literature DB >> 34582974 |
Jisu Elsa Jacob1, Sreejith Chandrasekharan2, Gopakumar Kuttappan Nair3, Ajith Cherian4, Thomas Iype5.
Abstract
Electroencephalogram (EEG) signals portray hidden neuronal interactions in the brain and indicate brain dynamics. These signals are dynamic, complex, chaotic and nonlinear, the nature of which is represented with features - fractal dimensions, entropies and chaotic features. This study aims at examining the discriminative power of individual features and their combination in the diagnosis of a neuro-pathological condition called encephalopathy. Feature combination is accomplished with the help of feature selection using Gini impurity score that improves discriminative power and keeps redundancy minimal. Further, three widely used non-parametric classifiers which are known to be effective with wavelet features on EEG signals - Support Vector Machine, Random Forest, Multilayer Perceptron - are employed for disease classification. The models created by the combination of aforementioned stages are analysed and evaluated with performance scores, leading to an optimal model for automated diagnostic applications.Entities:
Keywords: Discrete wavelet transform; Electroencephalogram; Encephalopathy; Gini impurity score; Random forest; Support vector machine
Mesh:
Year: 2021 PMID: 34582974 DOI: 10.1016/j.neulet.2021.136269
Source DB: PubMed Journal: Neurosci Lett ISSN: 0304-3940 Impact factor: 3.046