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Pilot study of a single-channel EEG seizure detection algorithm using machine learning. | LitMetric

Pilot study of a single-channel EEG seizure detection algorithm using machine learning.

Childs Nerv Syst

Department of Pediatric Neurosurgery, Severance Children's Hospital, Yonsei University College of Medicine, 50-1 Yonsei-ro, Seodaemun-gu, Seoul, 03722, Korea.

Published: July 2021

AI Article Synopsis

  • Seizures are common emergencies in neonatal intensive care and are typically identified through EEG reports, but existing detection algorithms are often inaccurate.
  • A new machine learning algorithm was developed using EEG recordings from 79 neonates, allowing for effective seizure detection with a significant improvement in accuracy (ROC score of 0.91) and efficiency (using only 5 seconds for decision-making).
  • The algorithm's performance indicates strong potential for clinical use in various environments, including NICUs and even at home, due to its reliance on a single-channel EEG.

Article Abstract

Objective: Seizures are one of the most common emergencies in the neonatal intensive care unit (NICU). They are identified through visual inspection of electroencephalography (EEG) reports and treated by neurophysiologic experts. To support clinical seizure detection, several feature-based automatic neonatal seizure detection algorithms have been proposed. However, as they were unsuitable for clinical application due to their low accuracy, we developed a new seizure detection algorithm using machine learning for single-channel EEG to overcome these limitations.

Methods: The dataset applied in our algorithm contains EEG recordings from human neonates. A 19-channel EEG system recorded the brain waves of 79 term neonates admitted to the NICU at the Helsinki University Hospital. From these datasets, we selected six patients with conformational seizure annotations for the pilot study and allocated four and two patients for our training and testing datasets, respectively. The presence of seizures in the EEGs was annotated independently by three experts through visual interpretation. We divided the data into epochs of 5 s each and further defined a seizure block to label the annotations from each expert recorded every second. Subsequently, to create a balanced dataset, any data point with a non-seizure label was moved to the training and test dataset.

Result: The developed principal component feature-extracted machine learning algorithm used 62.5% of the relative time (only 5 s for decision) of the baseline, reaching an area under the ROC curve score of 0.91. The effect of diversified parameters was meticulously examined, and 100 principal components were extracted to optimize the model performance.

Conclusion: Our machine learning-based seizure detection algorithm exhibited the potential for clinical application in NICUs, general wards, and at home and proved its convenience by requiring only a single channel for implementation.

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Source
http://dx.doi.org/10.1007/s00381-020-05011-9DOI Listing

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