Topological classifier for detecting the emergence of epileptic seizures
Abstract Objective An innovative method based on topological data analysis is introduced for classifying EEG recordings of patients affected by epilepsy. We construct a topological space from a collection of EEGs signals using Persistent Homology; then, we analyse the space by Persistent entropy, a...
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doaj-c8e35556971e4325adcda4fbcd8383062020-11-25T02:28:24ZengBMCBMC Research Notes1756-05002018-06-011111710.1186/s13104-018-3482-7Topological classifier for detecting the emergence of epileptic seizuresMarco Piangerelli0Matteo Rucco1Luca Tesei2Emanuela Merelli3Computer Science Division, School of Science and Technology, University of CamerinoALES S.r.l.-United Technologies Research CenterComputer Science Division, School of Science and Technology, University of CamerinoComputer Science Division, School of Science and Technology, University of CamerinoAbstract Objective An innovative method based on topological data analysis is introduced for classifying EEG recordings of patients affected by epilepsy. We construct a topological space from a collection of EEGs signals using Persistent Homology; then, we analyse the space by Persistent entropy, a global topological feature, in order to classify healthy and epileptic signals. Results The performance of the resulting one-feature-based linear topological classifier is tested by analysing the Physionet dataset. The quality of classification is evaluated in terms of the Area Under Curve (AUC) of the receiver operating characteristic curve. It is shown that the linear topological classifier has an AUC equal to $$97.2\%$$ 97.2% while the performance of a classifier based on Sample Entropy has an AUC equal to 62.0%.http://link.springer.com/article/10.1186/s13104-018-3482-7Complex systemsBrainEpilepsyTopological data analysisPersistent entropyTime series |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Marco Piangerelli Matteo Rucco Luca Tesei Emanuela Merelli |
spellingShingle |
Marco Piangerelli Matteo Rucco Luca Tesei Emanuela Merelli Topological classifier for detecting the emergence of epileptic seizures BMC Research Notes Complex systems Brain Epilepsy Topological data analysis Persistent entropy Time series |
author_facet |
Marco Piangerelli Matteo Rucco Luca Tesei Emanuela Merelli |
author_sort |
Marco Piangerelli |
title |
Topological classifier for detecting the emergence of epileptic seizures |
title_short |
Topological classifier for detecting the emergence of epileptic seizures |
title_full |
Topological classifier for detecting the emergence of epileptic seizures |
title_fullStr |
Topological classifier for detecting the emergence of epileptic seizures |
title_full_unstemmed |
Topological classifier for detecting the emergence of epileptic seizures |
title_sort |
topological classifier for detecting the emergence of epileptic seizures |
publisher |
BMC |
series |
BMC Research Notes |
issn |
1756-0500 |
publishDate |
2018-06-01 |
description |
Abstract Objective An innovative method based on topological data analysis is introduced for classifying EEG recordings of patients affected by epilepsy. We construct a topological space from a collection of EEGs signals using Persistent Homology; then, we analyse the space by Persistent entropy, a global topological feature, in order to classify healthy and epileptic signals. Results The performance of the resulting one-feature-based linear topological classifier is tested by analysing the Physionet dataset. The quality of classification is evaluated in terms of the Area Under Curve (AUC) of the receiver operating characteristic curve. It is shown that the linear topological classifier has an AUC equal to $$97.2\%$$ 97.2% while the performance of a classifier based on Sample Entropy has an AUC equal to 62.0%. |
topic |
Complex systems Brain Epilepsy Topological data analysis Persistent entropy Time series |
url |
http://link.springer.com/article/10.1186/s13104-018-3482-7 |
work_keys_str_mv |
AT marcopiangerelli topologicalclassifierfordetectingtheemergenceofepilepticseizures AT matteorucco topologicalclassifierfordetectingtheemergenceofepilepticseizures AT lucatesei topologicalclassifierfordetectingtheemergenceofepilepticseizures AT emanuelamerelli topologicalclassifierfordetectingtheemergenceofepilepticseizures |
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