Although treatment for epilepsy is available and effective for nearly 70 percent of patients, many remain in need of new therapeutic approaches. Predicting the impending seizures in these patients could significantly enhance their quality of life if the prediction performance is clinically practical. In this study, we investigate the improvement of the performance of a seizure prediction algorithm in 17 patients with mesial temporal lobe epilepsy by means of a novel measure. Scale-free dynamics of the intracerebral EEG are quantified through robust estimates of the scaling exponents--the first cumulants--derived from a wavelet leader and bootstrap based multifractal analysis. The cumulants are investigated for the discriminability between p...
Seizure prediction has attracted growing attention as one of the most challenging predictive data an...
The cause of seizures in epileptic patients is still poorly understood. Ongoing debat...
Epilepsy seizure prediction paves the way of timely warning for patients to take more active and eff...
<div><p>Although treatment for epilepsy is available and effective for nearly 70 percent of patients...
Although treatment for epilepsy is available and effective for nearly 70 percent of patients, many r...
Session: Thu PM1.P: Explainability and Interpretability in Biometric and Human-centric Information P...
International audienceMultifractal analysis allows us to study scale invariance and fluctuations of ...
An important issue in epileptology is the question whether information extracted from the EEG of epi...
Epilepsy affects about 50 million people worldwide of which one third is refractory to medication. A...
Epileptic seizures of mesial temporal origin are preceded by changes in signal properties detectable...
International audienceObjective: We evaluated the performance of our previously developed seizure pr...
Epilepsy is a common disorder characterized by recurrent seizures. An overwhelming majority of peopl...
Seizure prediction might be the solution to tackle the apparent unpredictability of seizures in pati...
Seizure prediction is feasible, but greater accuracy is needed to make seizure prediction clinically...
Combining multiple linear univariate features in one feature space and classifying the feature space...
Seizure prediction has attracted growing attention as one of the most challenging predictive data an...
The cause of seizures in epileptic patients is still poorly understood. Ongoing debat...
Epilepsy seizure prediction paves the way of timely warning for patients to take more active and eff...
<div><p>Although treatment for epilepsy is available and effective for nearly 70 percent of patients...
Although treatment for epilepsy is available and effective for nearly 70 percent of patients, many r...
Session: Thu PM1.P: Explainability and Interpretability in Biometric and Human-centric Information P...
International audienceMultifractal analysis allows us to study scale invariance and fluctuations of ...
An important issue in epileptology is the question whether information extracted from the EEG of epi...
Epilepsy affects about 50 million people worldwide of which one third is refractory to medication. A...
Epileptic seizures of mesial temporal origin are preceded by changes in signal properties detectable...
International audienceObjective: We evaluated the performance of our previously developed seizure pr...
Epilepsy is a common disorder characterized by recurrent seizures. An overwhelming majority of peopl...
Seizure prediction might be the solution to tackle the apparent unpredictability of seizures in pati...
Seizure prediction is feasible, but greater accuracy is needed to make seizure prediction clinically...
Combining multiple linear univariate features in one feature space and classifying the feature space...
Seizure prediction has attracted growing attention as one of the most challenging predictive data an...
The cause of seizures in epileptic patients is still poorly understood. Ongoing debat...
Epilepsy seizure prediction paves the way of timely warning for patients to take more active and eff...