Literature DB >> 33438530

Automated Adult Epilepsy Diagnostic Tool Based on Interictal Scalp Electroencephalogram Characteristics: A Six-Center Study.

John Thomas1, Prasanth Thangavel1, Wei Yan Peh1, Jin Jing2,3, Rajamanickam Yuvaraj1, Sydney S Cash2,3, Rima Chaudhari4, Sagar Karia5, Rahul Rathakrishnan6, Vinay Saini7, Nilesh Shah5, Rohit Srivastava7, Yee-Leng Tan8, Brandon Westover2,3, Justin Dauwels1.   

Abstract

The diagnosis of epilepsy often relies on a reading of routine scalp electroencephalograms (EEGs). Since seizures are highly unlikely to be detected in a routine scalp EEG, the primary diagnosis depends heavily on the visual evaluation of Interictal Epileptiform Discharges (IEDs). This process is tedious, expert-centered, and delays the treatment plan. Consequently, the development of an automated, fast, and reliable epileptic EEG diagnostic system is essential. In this study, we propose a system to classify EEG as epileptic or normal based on multiple modalities extracted from the interictal EEG. The ensemble system consists of three components: a Convolutional Neural Network (CNN)-based IED detector, a Template Matching (TM)-based IED detector, and a spectral feature-based classifier. We evaluate the system on datasets from six centers from the USA, Singapore, and India. The system yields a mean Leave-One-Institution-Out (LOIO) cross-validation (CV) area under curve (AUC) of 0.826 (balanced accuracy (BAC) of 76.1%) and Leave-One-Subject-Out (LOSO) CV AUC of 0.812 (BAC of 74.8%). The LOIO results are found to be similar to the interrater agreement (IRA) reported in the literature for epileptic EEG classification. Moreover, as the proposed system can process routine EEGs in a few seconds, it may aid the clinicians in diagnosing epilepsy efficiently.

Entities:  

Keywords:  EEG classification; Epilepsy; convolutional neural networks; deep learning; interictal epileptiform discharges; multi-center study; spike detection

Mesh:

Year:  2021        PMID: 33438530      PMCID: PMC9343226          DOI: 10.1142/S0129065720500744

Source DB:  PubMed          Journal:  Int J Neural Syst        ISSN: 0129-0657            Impact factor:   6.325


  29 in total

1.  Inter-rater reliability of the EEG reading in patients with childhood idiopathic epilepsy.

Authors:  Paolo Piccinelli; Maurizio Viri; Claudio Zucca; Renato Borgatti; Antonino Romeo; Laura Giordano; Umberto Balottin; Ettore Beghi
Journal:  Epilepsy Res       Date:  2005 Aug-Sep       Impact factor: 3.045

Review 2.  Interictal EEG and the diagnosis of epilepsy.

Authors:  Jyoti Pillai; Michael R Sperling
Journal:  Epilepsia       Date:  2006       Impact factor: 5.864

3.  Machine-learning-based diagnostics of EEG pathology.

Authors:  Lukas A W Gemein; Robin T Schirrmeister; Patryk Chrabąszcz; Daniel Wilson; Joschka Boedecker; Andreas Schulze-Bonhage; Frank Hutter; Tonio Ball
Journal:  Neuroimage       Date:  2020-06-10       Impact factor: 6.556

4.  Resident training and interrater agreements using the ACNS critical care EEG terminology.

Authors:  Joy Zhuo Ding; Ranjeeta Mallick; Josee Carpentier; Kristin McBain; Nicolas Gaspard; M Brandon Westover; Tadeu A Fantaneanu
Journal:  Seizure       Date:  2019-02-20       Impact factor: 3.184

5.  Automated epileptiform spike detection via affinity propagation-based template matching.

Authors:  John Thomas; Justin Dauwels; Sydney S Cash; M Brandon Westover
Journal:  Conf Proc IEEE Eng Med Biol Soc       Date:  2017-07

6.  Inter-rater agreement on identification of electrographic seizures and periodic discharges in ICU EEG recordings.

Authors:  J J Halford; D Shiau; J A Desrochers; B J Kolls; B C Dean; C G Waters; N J Azar; K F Haas; E Kutluay; G U Martz; S R Sinha; R T Kern; K M Kelly; J C Sackellares; S M LaRoche
Journal:  Clin Neurophysiol       Date:  2014-11-20       Impact factor: 3.708

7.  Nonrandomness, nonlinear dependence, and nonstationarity of electroencephalographic recordings from epilepsy patients.

Authors:  Ralph G Andrzejak; Kaspar Schindler; Christian Rummel
Journal:  Phys Rev E Stat Nonlin Soft Matter Phys       Date:  2012-10-12

8.  Rapid annotation of interictal epileptiform discharges via template matching under Dynamic Time Warping.

Authors:  J Jing; J Dauwels; T Rakthanmanon; E Keogh; S S Cash; M B Westover
Journal:  J Neurosci Methods       Date:  2016-03-02       Impact factor: 2.390

9.  Deep convolutional neural network for the automated detection and diagnosis of seizure using EEG signals.

Authors:  U Rajendra Acharya; Shu Lih Oh; Yuki Hagiwara; Jen Hong Tan; Hojjat Adeli
Journal:  Comput Biol Med       Date:  2017-09-27       Impact factor: 4.589

10.  Searching and Mining Trillions of Time Series Subsequences under Dynamic Time Warping.

Authors:  Thanawin Rakthanmanon; Bilson Campana; Abdullah Mueen; Gustavo Batista; Brandon Westover; Qiang Zhu; Jesin Zakaria; Eamonn Keogh
Journal:  KDD       Date:  2012-08
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  2 in total

Review 1.  Moving the field forward: detection of epileptiform abnormalities on scalp electroencephalography using deep learning-clinical application perspectives.

Authors:  Mubeen Janmohamed; Duong Nhu; Levin Kuhlmann; Amanda Gilligan; Chang Wei Tan; Piero Perucca; Terence J O'Brien; Patrick Kwan
Journal:  Brain Commun       Date:  2022-08-29

2.  Time-Frequency Decomposition of Scalp Electroencephalograms Improves Deep Learning-Based Epilepsy Diagnosis.

Authors:  Prasanth Thangavel; John Thomas; Wei Yan Peh; Jin Jing; Rajamanickam Yuvaraj; Sydney S Cash; Rima Chaudhari; Sagar Karia; Rahul Rathakrishnan; Vinay Saini; Nilesh Shah; Rohit Srivastava; Yee-Leng Tan; Brandon Westover; Justin Dauwels
Journal:  Int J Neural Syst       Date:  2021-07-16       Impact factor: 6.325

  2 in total

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