Labeler-Hot Detection Of Eeg Epileptic Transients

Lukasz Czekaj, Wojciech Ziembla,Pawel Jezierski, Pawel Swiniarski, Anna Kolodziejak,Pawel Ogniewski,Pawel Niedbalski,Anna Jezierska,Daniel Wesierski

2019 27TH EUROPEAN SIGNAL PROCESSING CONFERENCE (EUSIPCO)(2019)

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摘要
Preventing early progression of epilepsy and so the severity of seizures requires effective diagnosis. Epileptic transients indicate the ability to develop seizures but humans overlook such brief events in an electroencephalogram (EEG) what compromises patient treatment. Traditionally, training of the EEG event detection algorithms has relied on ground truth labels, obtained from the consensus of the majority of labelers. In this work, we go beyond labeler consensus on EEG data. Our event descriptor integrates EEG signal features with one-hot encoded labeler category that is a key to improved generalization performance. Notably, boosted decision trees take advantage of singly-labeled but more varied training sets. Our quantitative experiments show the proposed labeler-hot epileptic event detector consistently outperforms a consensus-trained detector and maintains confidence bounds of the detection. The results on our infant EEG recordings suggest datasets can gain higher event variety faster and thus better performance by shifting available human effort from consensus-oriented to separate labeling when labels include both, the event and the labeler category.
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关键词
infant EEG recordings,EEG signal features,electroencephalogram,one-hot encoded labeler category,event descriptor,labeler consensus,ground truth labels,EEG event detection algorithms,patient treatment,seizures,effective diagnosis,EEG epileptic transients,labeler-hot detection,labeler-hot epileptic event detector,varied training sets,boosted decision trees
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