Machine Learning Based Model For Seizure Detection Using Eeg Signals

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Garima Chandel
Amanpreet Kaur
Sneha Grover
Setu Garg
Gyanendra Singh

Abstract

Epilepsy is a disease of grave concern these days due to the negligence in its treatment in many parts of the
world. Its detection and diagnose requires high skill, large amount of time and money. Thus, due to lack of
treatment, epilepsy which can be diagnosed with simple epileptic drugs turn refractory. This can be avoided if
it is detected at an early stage. Also, the data received after a patient undergo EEG is quite complex. Visualizing
that data in an effective way and knowing important timestamps in a recorded EEG signal can help one save
time and increase accuracy of detection. An automated system utilizing conventional machine learning is thus
proposed in this study that uses features extracted from EEG signals. We have used a seizure detection model
and visualized data and the result using various python libraries. Seizure detection is a model which is able to
identify the presence of abnormal activities in the brain. Seizure prediction is a model which is able to predict
in advance if he/she is going to face seizures in coming time by just studying the EEG signals of present state
of that patient. Supervised Machine learning (random forest classifier) was employed to analyze recorded EEG
signals for epilepsy detection. Data in the datasets was visualized using matplotlib. Classifier was visualized
using Graphviz and pydot. Random forest model predicted epilepsy with a good accuracy of 96.87 %,
Sensitivity came out to be 98.4 % and Specificity was 90.7 %.

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Author Biographies

Garima Chandel

Department of Electronics & Communication Engineering, Chandigarh University, Mohali, India.

Amanpreet Kaur

Department of Aerospace engineering, Chandigarh University, Mohali, India.

Sneha Grover

Department of Aerospace engineering, Chandigarh University, Mohali, India.

Setu Garg

Department of Electronics & Communication Engineering, ITS Engineering College Greater Noida, India.

Gyanendra Singh

Department of Mechanical Engineering, ITS Engineering College Greater Noida, India.