Litcius/Paper detail

Detection of Epilepsy based on EEG Signals using PCA with ANN Model

R Shiva Shankar, CH Raminaidu, VV Sivarama Raju, J. Rajanikanth

2021Journal of Physics Conference Series25 citationsDOIOpen Access PDF

Abstract

Abstract Epilepsy is a chronic neurological illness that affects millions of people throughout the world. Epilepsy affects around 50 million people globally. It is estimated that if epilepsy is correctly diagnosed and treated, up to 70% of people with the condition will be seizure-free. There is a need to detect epilepsy at the initial stages to reduce symptoms by medications and other strategies. We use Epileptic Seizure Recognition dataset to train the model which is provided by UCI Machine Learning Repository. There are 179 attributes and 11,500 unique values in this dataset. MLP, PCA with RF, QDA, LDA, and PCA with ANN were applied among them; PCA with ANN provided the better metrics. For the metrics, we received the following findings. It is 97.55% Accuracy, 94.24% Precision, 91.48% recall, 83.38% hinge loss, and 2.32% mean squared error.

Topics & Concepts

EpilepsyElectroencephalographyArtificial intelligenceRecallComputer sciencePattern recognition (psychology)Principal component analysisMachine learningPsychologyPsychiatryCognitive psychologyEEG and Brain-Computer InterfacesEpilepsy research and treatmentMachine Learning in Bioinformatics