A Modified XG Boost Classifier Model for Detection of Seizures and Non-Seizures
Autor: | T. H. Raveendra Kumar, C. K. Narayanappa, S. Raghavendra, G. R. Poornima |
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Rok vydání: | 2022 |
Předmět: | |
Zdroj: | WSEAS TRANSACTIONS ON BIOLOGY AND BIOMEDICINE. 19:14-21 |
ISSN: | 2224-2902 1109-9518 |
DOI: | 10.37394/23208.2022.19.3 |
Popis: | Diagnosis of Epilepsy is immensely important but challenging process, especially while using traditional manual seizure detection methods with the help of neurologists or brain experts’ guidance which are time consuming. Thus, an automated classification method is require to quickly detect seizures and non-seizures. Therefore, a machine learning algorithm based on a modified XGboost classifier model is employed to detect seizures quickly and improve classification accuracy. A focal loss function is employed with traditional XGboost classifier model to minimize mismatch of training and testing samples and enhance efficiency of the classification model. Here, CHB-MIT SCALP Electroencephalography (EEG) dataset is utilized to test the proposed classification model. Here, data gathered for all 24 patients from CHB-MIT Database is used to analyze the performance of proposed classification model. Here, 2-class-seizure experimental results of proposed classification model are compared against several state-of-art-seizure classification models. Here, cross validation experiments determine nature of 2-class-seizure as the prediction is seizure or non-seizure. The metrics results for average sensitivity and average specificity are nearly 100%. The proposed model achieves improvement in terms of average sensitivity against the best traditional method as 0.05% and for average specificity as 1%. The proposed modified XGBoost classifier model outperforms all the state-of-art-seizure detection techniques in terms of average sensitivity, average specificity. |
Databáze: | OpenAIRE |
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