Estimating the likelihood of epilepsy from clinically noncontributory electroencephalograms using computational analysis: A retrospective, multisite case–control study

Author:

Tait Luke12,Staniaszek Lydia E.34,Galizia Elizabeth5,Martin‐Lopez David56,Walker Matthew C.78ORCID,Azeez Al Anzari Abdul8,Meiklejohn Kay49,Allen David9,Price Chris10,Georgiou Sophie10,Bagary Manny11,Khalsa Sakh11,Manfredonia Francesco12,Tittensor Phil1213,Lawthom Charlotte1415,Howes Benjamin B.4,Shankar Rohit1617ORCID,Terry John R.24,Woldman Wessel24ORCID

Affiliation:

1. Cardiff University Cardiff UK

2. University of Birmingham Birmingham

3. University Hospitals Bristol and Weston National Health Service Foundation Trust Bristol UK

4. Neuronostics Bristol UK

5. St. George's Hospital National Health Service Foundation Trust London UK

6. Kingston Hospital National Health Service Foundation Trust Kingston UK

7. University College London London UK

8. University College London Hospitals London UK

9. University Hospital Southampton National Health Service Foundation Trust Southampton UK

10. Royal Devon and Exeter National Health Service Foundation Trust Exeter UK

11. Birmingham and Solihull Mental Health National Health Service Foundation Trust Birmingham UK

12. Royal Wolverhampton National Health Service Trust Wolverhampton UK

13. University of Wolverhampton Wolverhampton UK

14. Royal Gwent Hospital Newport UK

15. Swansea University Swansea UK

16. University of Plymouth Plymouth UK

17. Cornwall Partnership National Health Service Foundation Trust Bodmin UK

Abstract

AbstractObjectiveThis study was undertaken to validate a set of candidate biomarkers of seizure susceptibility in a retrospective, multisite case–control study, and to determine the robustness of these biomarkers derived from routinely collected electroencephalography (EEG) within a large cohort (both epilepsy and common alternative conditions such as nonepileptic attack disorder).MethodsThe database consisted of 814 EEG recordings from 648 subjects, collected from eight National Health Service sites across the UK. Clinically noncontributory EEG recordings were identified by an experienced clinical scientist (N = 281; 152 alternative conditions, 129 epilepsy). Eight computational markers (spectral [n = 2], network‐based [n = 4], and model‐based [n = 2]) were calculated within each recording. Ensemble‐based classifiers were developed using a two‐tier cross‐validation approach. We used standard regression methods to assess whether potential confounding variables (e.g., age, gender, treatment status, comorbidity) impacted model performance.ResultsWe found levels of balanced accuracy of 68% across the cohort with clinically noncontributory normal EEGs (sensitivity =61%, specificity =75%, positive predictive value =55%, negative predictive value =79%, diagnostic odds ratio =4.64, area under receiver operated characteristics curve =.72). Group level analysis found no evidence suggesting any of the potential confounding variables significantly impacted the overall performance.SignificanceThese results provide evidence that the set of biomarkers could provide additional value to clinical decision‐making, providing the foundation for a decision support tool that could reduce diagnostic delay and misdiagnosis rates. Future work should therefore assess the change in diagnostic yield and time to diagnosis when utilizing these biomarkers in carefully designed prospective studies.

Funder

Innovate UK

Engineering and Physical Sciences Research Council

National Institute for Health and Care Research

Epilepsy Research UK

Publisher

Wiley

Reference30 articles.

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2. EEG in the diagnosis, classification, and management of patients with epilepsy

3. The diagnostic accuracy of routine electroencephalography after a first unprovoked seizure

4. NICE guidelines 2017. [cited 2023 Feb 2]. Available from:https://www.nice.org.uk/guidance/ng217

5. Resting-state EEG for the diagnosis of idiopathic epilepsy and psychogenic nonepileptic seizures: A systematic review

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