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Published August 2009 | public
Journal Article

Seizure prediction: Any better than chance?

Abstract

Objective: To test whether epileptic seizure prediction algorithms have true predictive power, their performance must be compared with the one expected under well-defined null hypotheses. For this purpose, analytical performance estimates and seizure predictor surrogates were introduced. We here extend the Monte Carlo framework of seizure predictor surrogates by introducing alarm times surrogates. Methods: We construct artificial seizure time sequences and artificial seizure predictors to be consistent or inconsistent with various null hypotheses to determine the frequency of null hypothesis rejections obtained from analytical performance estimates and alarm times surrogates under controlled conditions. Results: Compared to analytical performance estimates, alarm times surrogates are more flexible with regard to the testable null hypotheses. Both approaches have similar, high statistical power to indicate true predictive power. For Poisson predictors that fulfill the null hypothesis of analytical performance estimates, the frequency of false positive null hypothesis rejections can exceed the significance level for long mean inter-alarm intervals, revealing an intrinsic bias of these analytical estimates. Conclusions: Alarm times surrogates offer important advantages over analytical performance estimates. Significance: The key question in the field of seizure prediction is whether seizures can in principle be predicted or whether algorithms which have been presumed to perform better than chance actually are unable to predict seizures and simply have not yet been tested against the appropriate null hypotheses. Alarm times surrogates can help to answer this question.

Additional Information

© 2009 Elsevier B.V. Accepted 23 May 2009. Available online 2 July 2009. The authors would like to thank the three anonymous referees for their helpful comments and suggestions. RGA acknowledges grant BFU2007-61710 of the Spanish Ministry of Education and Science. DC was supported by the grant 2008FI-B 00460 of the 'Generalitat de Catalunya' and European Social Funds. FM was supported by the 6th Framework Programme of the European Commission (Marie Curie OIF 040445).

Additional details

Created:
August 21, 2023
Modified:
October 19, 2023