EpilNet: A Novel Approach to IoT based Epileptic Seizure Prediction and
Diagnosis System using Artificial Intelligence
- URL: http://arxiv.org/abs/2111.03265v1
- Date: Fri, 5 Nov 2021 05:19:46 GMT
- Title: EpilNet: A Novel Approach to IoT based Epileptic Seizure Prediction and
Diagnosis System using Artificial Intelligence
- Authors: Shivam Gupta, Virender Ranga, Priyansh Agrawal
- Abstract summary: A novel approach to epileptic seizure prediction and diagnosis system EpilNet is proposed in the present paper.
It is a one-dimensional (1D) convolution neural network. EpilNet gives the testing accuracy of 79.13% for five classes, leading to a significant increase of about 6-7% compared to related works.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Epilepsy is one of the most occurring neurological diseases. The main
characteristic of this disease is a frequent seizure, which is an electrical
imbalance in the brain. It is generally accompanied by shaking of body parts
and even leads (fainting). In the past few years, many treatments have come up.
These mainly involve the use of anti-seizure drugs for controlling seizures.
But in 70% of cases, these drugs are not effective, and surgery is the only
solution when the condition worsens. So patients need to take care of
themselves while having a seizure and be safe. Wearable electroencephalogram
(EEG) devices have come up with the development in medical science and
technology. These devices help in the analysis of brain electrical activities.
EEG helps in locating the affected cortical region. The most important is that
it can predict any seizure in advance on-site. This has resulted in a sudden
increase in demand for effective and efficient seizure prediction and diagnosis
systems. A novel approach to epileptic seizure prediction and diagnosis system
EpilNet is proposed in the present paper. It is a one-dimensional (1D)
convolution neural network. EpilNet gives the testing accuracy of 79.13% for
five classes, leading to a significant increase of about 6-7% compared to
related works. The developed Web API helps in bringing EpilNet into practical
use. Thus, it is an integrated system for both patients and doctors. The system
will help patients prevent injury or accidents and increase the efficiency of
the treatment process by doctors in the hospitals.
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