open access publication

Article, 2024

Automated analysis and detection of epileptic seizures in video recordings using artificial intelligence

Frontiers in Neuroinformatics, ISSN 1662-5196, Volume 18, Page 1324981, 10.3389/fninf.2024.1324981

Contributors

Rai, Pragya (Corresponding author) [1] Knight, Andrew 0000-0003-0525-0351 [1] [2] Hiillos, Matias [1] Kertész, Csaba 0000-0002-1558-3099 [1] Morales, Elizabeth [1] Terney, Daniella [3] Larsen, Sidsel Armand 0009-0001-2427-6664 [3] Østerkjerhuus, Tim [4] Peltola, Jukka T 0000-0002-4119-8063 [2] [5] Beniczky, S X E Ndor 0000-0002-6035-6581 [3] [4] [6]

Affiliations

  1. [1] Neuro Event Labs, Tampere, Finland
  2. [NORA names: Miscellaneous; Finland; Europe, EU; Nordic; OECD];
  3. [2] Tampere University
  4. [NORA names: Finland; Europe, EU; Nordic; OECD];
  5. [3] Filadelfia
  6. [NORA names: Filadelfia - Danish Epilepsy Hospital; Hospital; Denmark; Europe, EU; Nordic; OECD];
  7. [4] Aarhus University Hospital
  8. [NORA names: Central Denmark Region; Hospital; Denmark; Europe, EU; Nordic; OECD];
  9. [5] Tampere University Hospital
  10. [NORA names: Finland; Europe, EU; Nordic; OECD];

Abstract

Introduction: Automated seizure detection promises to aid in the prevention of SUDEP and improve the quality of care by assisting in epilepsy diagnosis and treatment adjustment. Methods: In this phase 2 exploratory study, the performance of a contactless, marker-free, video-based motor seizure detection system is assessed, considering video recordings of patients (age 0-80 years), in terms of sensitivity, specificity, and Receiver Operating Characteristic (ROC) curves, with respect to video-electroencephalographic monitoring (VEM) as the medical gold standard. Detection performances of five categories of motor epileptic seizures (tonic-clonic, hyperkinetic, tonic, unclassified motor, automatisms) and psychogenic non-epileptic seizures (PNES) with a motor behavioral component lasting for >10 s were assessed independently at different detection thresholds (rather than as a categorical classification problem). A total of 230 patients were recruited in the study, of which 334 in-scope (>10 s) motor seizures (out of 1,114 total seizures) were identified by VEM reported from 81 patients. We analyzed both daytime and nocturnal recordings. The control threshold was evaluated at a range of values to compare the sensitivity (n = 81 subjects with seizures) and false detection rate (FDR) (n = all 230 subjects). Results: At optimal thresholds, the performance of seizure groups in terms of sensitivity (CI) and FDR/h (CI): tonic-clonic- 95.2% (82.4, 100%); 0.09 (0.077, 0.103), hyperkinetic- 92.9% (68.5, 98.7%); 0.64 (0.59, 0.69), tonic- 78.3% (64.4, 87.7%); 5.87 (5.51, 6.23), automatism- 86.7% (73.5, 97.7%); 3.34 (3.12, 3.58), unclassified motor seizures- 78% (65.4, 90.4%); 4.81 (4.50, 5.14), and PNES- 97.7% (97.7, 100%); 1.73 (1.61, 1.86). A generic threshold recommended for all motor seizures under study asserted 88% sensitivity and 6.48 FDR/h. Discussion: These results indicate an achievable performance for major motor seizure detection that is clinically applicable for use as a seizure screening solution in diagnostic workflows.

Keywords

CI, PNES, Receiver Operating Characteristic (ROC) curve, SUDEP, adjustment, analysis, artificial intelligence, automated analysis, behavioral components, care, categories, components, contactless, control, control threshold, curves, daytime, detection, detection of epileptic seizures, detection performance, detection rate, detection system, detection threshold, diagnosis, diagnostic workflow, epilepsy, epilepsy diagnosis, epileptic seizures, false detection rate, gold standard, group, intelligence, marker-free, medical gold standard, monitoring, motor, motor seizures, nocturnal recordings, non-epileptic seizures, optimal threshold, patients, performance, phase, prevention, prevention of SUDEP, promise, psychogenic non-epileptic seizures, quality, quality of care, rate, receiver, records, records of patients, results, screening solution, seizure detection, seizure detection system, seizure group, seizures, sensitivity, solution, specificity, standards, study, system, threshold, treatment, treatment adjustment, video, video recordings, video recordings of patients, video-electroencephalographic monitoring, workflow

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