Spike pattern recognition by supervised classification in low dimensional embedding space.
Evangelia I ZacharakiIosif MporasKyriakos GarganisVasileios MegalooikonomouPublished in: Brain informatics (2016)
Epileptiform discharges in interictal electroencephalography (EEG) form the mainstay of epilepsy diagnosis and localization of seizure onset. Visual analysis is rater-dependent and time consuming, especially for long-term recordings, while computerized methods can provide efficiency in reviewing long EEG recordings. This paper presents a machine learning approach for automated detection of epileptiform discharges (spikes). The proposed method first detects spike patterns by calculating similarity to a coarse shape model of a spike waveform and then refines the results by identifying subtle differences between actual spikes and false detections. Pattern classification is performed using support vector machines in a low dimensional space on which the original waveforms are embedded by locality preserving projections. The automatic detection results are compared to experts' manual annotations (101 spikes) on a whole-night sleep EEG recording. The high sensitivity (97 %) and the low false positive rate (0.1 min-1), calculated by intra-patient cross-validation, highlight the potential of the method for automated interictal EEG assessment.
Keyphrases
- machine learning
- deep learning
- functional connectivity
- resting state
- working memory
- artificial intelligence
- big data
- temporal lobe epilepsy
- loop mediated isothermal amplification
- sleep quality
- molecular dynamics
- physical activity
- case report
- real time pcr
- high density
- risk assessment
- clinical decision support
- sensitive detection
- human health