Abstract

Objective: Epilepsy is one of the chronic diseases, which requires exceptional attention. The unpredictability of the seizures makes it worse for a person suffering from epilepsy. Methods: The challenge to predict seizures using modern machine learning algorithms and computing resources would be a boon to a person with epilepsy and its caregivers. Researchers have shown great interest in the task of epileptic seizure prediction for a few decades. However, the results obtained have not clinical applicability because of the high false-positive ratio. The lack of standard practices in the field of epileptic seizure prediction makes it challenging for novice ones to follow the research. The chances of reproducibility of the result are negligible due to the unavailability of implementation environment-related details, use of standard datasets, and evaluation parameters. Results: Work here presents the essential components required for the prediction of epileptic seizures, which includes the basics of epilepsy, its treatment, and the need for seizure prediction algorithms. It also gives a detailed comparative analysis of datasets used by different researchers, tools and technologies used, different machine learning algorithm considerations, and evaluation parameters. Conclusion: The main goal of this paper is to synthesize different methodologies for creating a broad view of the state-of-the-art in the field of seizure prediction.

Highlights

  • Epilepsy is a chronic non-communicable disease of the brain that affects people of all ages

  • Section-8 gives a comparative analysis of tools and libraries used for the implementation of epileptic seizure prediction systems, which is followed by the conclusion

  • Though an ample amount of work has already been done in the field of epileptic seizure detection and prediction, the available published work does not contain much information related to the implementation environment used by the researchers

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Summary

Methods

The challenge to predict seizures using modern machine learning algorithms and computing resources would be a boon to a person with epilepsy and its caregivers. Researchers have shown great interest in the task of epileptic seizure prediction for a few decades. The results obtained have not clinical applicability because of the high false-positive ratio. The lack of standard practices in the field of epileptic seizure prediction makes it challenging for novice ones to follow the research. The chances of reproducibility of the result are negligible due to the unavailability of implementation environment-related details, use of standard datasets, and evaluation parameters

Results
INTRODUCTION
EPILEPSY AND TREATMENT
THE NEED FOR EPILEPTIC SEIZURE PREDICTION ALGORITHMS
MACHINE LEARNING ALGORITHMS AND EVALUATION PARAMETERS
The Traditional Machine Learning Approach
Deep Learning Approch
Signal Processing Approach
Hybrid Approach
RESEARCH GAPS
DATASETS
TOOLS AND LIBRARIES USED FOR IMPLEMENTATION
CONCLUSION

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