Personalized seizure detection using logistic regression machine learning based on wearable ECG-monitoring device.

Jesper Jeppesen, Jakob Christensen, Peter Johansen, Sándor Beniczky
Author Information
  1. Jesper Jeppesen: Department of Clinical Neurophysiology, Aarhus University Hospital, Aarhus, Denmark; Department of Clinical Medicine, Aarhus University, Aarhus, Denmark. Electronic address: jeje@clin.au.dk.
  2. Jakob Christensen: Department of Clinical Medicine, Aarhus University, Aarhus, Denmark; Department of Neurology, Aarhus University Hospital, Aarhus, Denmark.
  3. Peter Johansen: Department of Electrical and Computer Engineering, Aarhus University, Aarhus, Denmark.
  4. Sándor Beniczky: Department of Clinical Neurophysiology, Aarhus University Hospital, Aarhus, Denmark; Department of Clinical Medicine, Aarhus University, Aarhus, Denmark; Department of Clinical Neurophysiology, Danish Epilepsy Centre, Dianalund, Denmark.

Abstract

PURPOSE: Wearable automated detection devices of focal epileptic seizures are needed to alert patients and caregivers and to optimize the medical treatment. Heart rate variability (HRV)-based seizure detection devices have presented good detection sensitivity. However, false alarm rates (FAR) are too high.
METHODS: In this phase-2 study we pursued to decrease the FAR, by using patient-adaptive logistic regression machine learning (LRML) to improve the performance of a previously published HRV-based seizure detection algorithm. ECG-data were prospectively collected using a dedicated wearable electrocardiogram-device during long-term video-EEG monitoring. Sixty-two patients had 174 seizures during 4,614 h recording. The dataset was divided into training-, cross-validation-, and test-sets (chronological) in order to avoid overfitting. patients with >50 beats/min change in heart rate during first recorded seizure were selected as responders. We compared 18 LRML-settings to find the optimal algorithm.
RESULTS: The patient-adaptive LRML-classifier in combination with using only responders to train the initial decision boundary was superior to both the generic approach and including non-responders to train the LRML-classifier. Using the optimal setting of the LRML in responders in the test dataset yielded a sensitivity of 78.2% and FAR of 0.62/24 h. The FAR was reduced by 31% compared to the previous method, upholding similar sensitivity.
CONCLUSION: The novel, patient-adaptive LRML seizure detection algorithm outperformed both the generic approach and the previously published patient-tailored method. The proposed method can be implemented in a wearable online HRV-based seizure detection system alerting patients and caregivers of seizures and improve seizure-count which may help optimizing the patient treatment.

Keywords

MeSH Term

Humans
Logistic Models
Seizures
Electrocardiography
Wearable Electronic Devices
Algorithms
Electroencephalography
Machine Learning

Word Cloud

Created with Highcharts 10.0.0detectionseizureseizuresFARusingpatientsratesensitivitypatient-adaptiveregressionmachinelearningLRMLalgorithmwearablerespondersmethodWearabledevicescaregiverstreatmentHeartvariabilitylogisticimprovepreviouslypublishedHRV-baseddatasetcomparedoptimalLRML-classifiertraingenericapproachPURPOSE:automatedfocalepilepticneededalertoptimizemedicalHRV-basedpresentedgoodHoweverfalsealarmrateshighMETHODS:phase-2studypursueddecreaseperformanceECG-dataprospectivelycollecteddedicatedelectrocardiogram-devicelong-termvideo-EEGmonitoringSixty-two1744614 hrecordingdividedtraining-cross-validation-test-setschronologicalorderavoidoverfittingPatients>50beats/minchangeheartfirstrecordedselected18LRML-settingsfindRESULTS:combinationinitialdecisionboundarysuperiorincludingnon-respondersUsingsettingtestyielded782%062/24 hreduced31%previousupholdingsimilarCONCLUSION:noveloutperformedpatient-tailoredproposedcanimplementedonlinesystemalertingseizure-countmayhelpoptimizingpatientPersonalizedbasedECG-monitoringdeviceElectrocardiographyEpilepsyFocalLogistic

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