Supervised domain generalization for integration of disparate scalp EEG datasets for automatic epileptic seizure detection

被引:0
|
作者
Ayodele, K.P. [1 ]
Ikezogwo, W.O. [1 ]
Komolafe, M.A. [2 ]
Ogunbona, P. [3 ]
机构
[1] Department of Electronic and Electrical Engineering, Obafemi Awolowo University, Ile-Ife, Osun,220005, Nigeria
[2] Department of Medicine, Obafemi Awolowo University, Ile-Ife, Osun,220005, Nigeria
[3] School of Information Technology and Computer Science, University of Wollongong, Wollongong,NSW 2522, Australia
关键词
Convolution - Statistical tests - Neurophysiology - Recurrent neural networks - Large dataset - Neurodegenerative diseases;
D O I
暂无
中图分类号
学科分类号
摘要
Numerous automatic epileptic seizure detectors (ESDs) with excellent performances have been reported, but they generally experience performance degradation when tested with real-life clinical data. This has been blamed on the scarcity of high-quality training data, which leads to models that generalize poorly. There is consequently interest in methods to improve the quality and quantity of training data for ESDs. This study used a domain generalization approach to combine data from two different datasets for training an ESD, which was thereafter tested on a third dataset. A subspace of the CHB-MIT and TUSZ scalp EEG seizure datasets was extracted using transfer component analysis, based on a reproducing kernel Hilbert space approach. We then used the Azimuthal Equidistant Projection to transform 3D electrode coordinates into 2D space, followed by interpolation using the Clough–Tocher technique to generate 16x16 rasters. We thereafter generated feature vectors, each of which was a sequence of 17 ten-layer 16x16 raster arrays. The vectors were used to train a recurrent-convolutional neural network. The network had a 128-unit long short-term memory layer with inputs from 17 parallel networks each with three stacks of convolutional layers. Testing was based on a private 26-subject dataset, combined with randomly selected subsets of the CHB-MIT and TUSZ datasets. A combined sensitivity of 74.5% was achieved, along with a false positive per hour rate of 0.84, and a latency of 2.32 s. Detection sensitivity on the private dataset was 72.5%. These results compare favorably with results of large-scale validation studies in literature and confirm the viability of this approach to increasing the size of training datasets for ESDs. © 2020 Elsevier Ltd
引用
收藏
相关论文
共 50 条
  • [41] The earth mover’s distance and Bayesian linear discriminant analysis for epileptic seizure detection in scalp EEG
    Yuan S.
    Liu J.
    Shang J.
    Kong X.
    Yuan Q.
    Ma Z.
    Yuan, Shasha (ssyuan@mail.qfnu.edu.cn), 2018, Springer Verlag (08) : 373 - 382
  • [42] Hyperdimensional Computing With Multiscale Local Binary Patterns for Scalp EEG-Based Epileptic Seizure Detection
    Du, Yipeng
    Ren, Yuan
    Wong, Ngai
    Ngai, Edith C. H.
    IEEE INTERNET OF THINGS JOURNAL, 2024, 11 (15): : 26046 - 26061
  • [43] AUTOMATIC DETECTION OF EPILEPTIC CRISIS IN EEG
    Aleman, M.
    Sanchez Castillo, M.
    Valdez, L.
    EPILEPSIA, 2013, 54 : 162 - 162
  • [44] A deep Learning Scheme for Automatic Seizure Detection from Long-Term Scalp EEG
    Yuvaraj, Rajamanickam
    Thomas, John
    Kluge, Tilmann
    Dauwels, Justin
    2018 CONFERENCE RECORD OF 52ND ASILOMAR CONFERENCE ON SIGNALS, SYSTEMS, AND COMPUTERS, 2018, : 368 - 372
  • [45] Analogy of Algorithms for Automatic Epileptic Seizure Detection
    Kavya, B. S.
    Prasad, S. N.
    2020 5TH IEEE INTERNATIONAL CONFERENCE ON RECENT TRENDS ON ELECTRONICS, INFORMATION, COMMUNICATION & TECHNOLOGY (RTEICT-2020), 2020, : 63 - 68
  • [46] Machine Learning Algorithm for Epileptic Seizure Prediction from Scalp EEG Records
    Aviles, Esteban
    Britto, Frank
    Villaseca, David
    Zegarra, Carlos
    Reyes, Francis
    INTERNATIONAL CONFERENCE ON BIOMEDICAL AND HEALTH INFORMATICS 2022, ICBHI 2022, 2024, 108 : 51 - 59
  • [47] Automatic epileptic seizure detection using MSA-DCNN and LSTM techniques with EEG signals
    Anita, M.
    Kowshalya, A. Meena
    EXPERT SYSTEMS WITH APPLICATIONS, 2024, 238
  • [48] EEG datasets for seizure detection and prediction- A review
    Wong, Sheng
    Simmons, Anj
    Rivera-Villicana, Jessica
    Barnett, Scott
    Sivathamboo, Shobi
    Perucca, Piero
    Ge, Zongyuan
    Kwan, Patrick
    Kuhlmann, Levin
    Vasa, Rajesh
    Mouzakis, Kon
    O'Brien, Terence J.
    EPILEPSIA OPEN, 2023, 8 (02) : 252 - 267
  • [49] Epileptic Seizure Detection Based on EEG Signals and CNN
    Zhou, Mengni
    Tian, Cheng
    Cao, Rui
    Wang, Bin
    Niu, Yan
    Hu, Ting
    Guo, Hao
    Xiang, Jie
    FRONTIERS IN NEUROINFORMATICS, 2018, 12
  • [50] Epileptic Seizure Detection from Imbalanced EEG signal
    Romaissa, Debeche
    El Habib Daho, Mostafa
    Chikh, Mohammed Amine
    2019 INTERNATIONAL CONFERENCE ON ADVANCED ELECTRICAL ENGINEERING (ICAEE), 2019,