Novel 3D video action recognition deep learning approach for near real time epileptic seizure classification.

Journal: Scientific reports
Published Date:

Abstract

Seizure semiology is a well-established method to classify epileptic seizure types, but requires a significant amount of resources as long-term Video-EEG monitoring needs to be visually analyzed. Therefore, computer vision based diagnosis support tools are a promising approach. In this article, we utilize infrared (IR) and depth (3D) videos to show the feasibility of a 24/7 novel object and action recognition based deep learning (DL) monitoring system to differentiate between epileptic seizures in frontal lobe epilepsy (FLE), temporal lobe epilepsy (TLE) and non-epileptic events. Based on the largest 3Dvideo-EEG database in the world (115 seizures/+680,000 video-frames/427GB), we achieved a promising cross-subject validation f1-score of 0.833±0.061 for the 2 class (FLE vs. TLE) and 0.763 ± 0.083 for the 3 class (FLE vs. TLE vs. non-epileptic) case, from 2 s samples, with an automated semi-specialized depth (Acc.95.65%) and Mask R-CNN (Acc.96.52%) based cropping pipeline to pre-process the videos, enabling a near-real-time seizure type detection and classification tool. Our results demonstrate the feasibility of our novel DL approach to support 24/7 epilepsy monitoring, outperforming all previously published methods.

Authors

  • Tamás Karácsony
    Center for Biomedical Engineering Research, Institute for Systems' Engineering and Computers, Technology and Science (INESC TEC), Porto, Portugal.
  • Anna Mira Loesch-Biffar
    Epilepsy Center, Department of Neurology, University of Munich, Munich, Germany.
  • Christian Vollmar
    Epilepsy Center, Department of Neurology, University of Munich, Munich, Germany.
  • Jan Rémi
    Epilepsy Center, Department of Neurology, University of Munich, Munich, Germany.
  • Soheyl Noachtar
    Epilepsy Center, Department of Neurology, University of Munich, Munich, Germany.
  • Joao Paulo Silva Cunha