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Personalizing Heart Rate-Based Seizure Detection Using Supervised SVM Transfer Learning

Thomas De Cooman, Kaat Vandecasteele, Carolina Varon, Borbála Hunyadi, Evy Cleeren, Wim Van Paesschen, Sabine Van Huffel

2020Frontiers in Neurology42 citationsDOIOpen Access PDF

Abstract

Objective: Automated seizure detection is a key aspect of wearable seizure warning systems. As a result, the quality of life of refractory epilepsy patients could be improved. Most state-of-the-art algorithms for heart rate-based seizure detection use a so-called patient-independent approach, which do not take into account patient-specific data during algorithm training. Although such systems are easy to use in practice, they lead to many false detections as the ictal heart rate changes are patient-dependent. In practice, only a limited amount of accurately annotated patient data is typically available, which makes it difficult to create fully patient-specific algorithms. Methods: In this context, this study proposes for the first time a new transfer learning approach that allows to personalize heart rate-based seizure detection by using only a couple of days of data per patient. The algorithm was evaluated on 2172 hours of single-lead ECG data from 24 temporal lobe epilepsy patients including 227 focal impaired awareness seizures. Results: The proposed personalized approach resulted in an overall sensitivity of 71% with 1.9 false detections per hour. This is an average decrease in false detection rate of 37% compared to the reference patient-independent algorithm using only a limited amount of personal seizure data. The proposed transfer learning approach adapts faster and more robustly to patient-specific characteristics than other alternatives for personalization in the literature. Conclusion: The proposed method allows an easy implementable solution to personalize heart rate-based seizure detection, which can improve the quality of life of refractory epilepsy patients when used as part of a multimodal seizure detection system.

Topics & Concepts

Computer scienceEpilepsyTransfer of learningContext (archaeology)Artificial intelligenceFalse positive rateMachine learningWearable computerIctalPersonalizationEpileptic seizurePattern recognition (psychology)PsychologyNeuroscienceEmbedded systemWorld Wide WebBiologyPaleontologyEEG and Brain-Computer InterfacesEpilepsy research and treatmentNeonatal and fetal brain pathology
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