Literature DB >> 27208925

Validation of a novel classification model of psychogenic nonepileptic seizures by video-EEG analysis and a machine learning approach.

Adriana Magaudda1, Angela Laganà2, Alessandro Calamuneri2, Teresa Brizzi2, Cinzia Scalera2, Massimiliano Beghi3, Cesare Maria Cornaggia4, Gabriella Di Rosa5.   

Abstract

The aim of this study was to validate a novel classification for the diagnosis of PNESs. Fifty-five PNES video-EEG recordings were retrospectively analyzed by four epileptologists and one psychiatrist in a blind manner and classified into four distinct groups: Hypermotor (H), Akinetic (A), Focal Motor (FM), and with Subjective Symptoms (SS). Eleven signs and symptoms, which are frequently found in PNESs, were chosen for statistical validation of our classification. An artificial neural network (ANN) analyzed PNES video recordings based on the signs and symptoms mentioned above. By comparing results produced by the ANN with classifications given by examiners, we were able to understand whether such classification was objective and generalizable. Through accordance metrics based on signs and symptoms (range: 0-100%), we found that most of the seizures belonging to class A showed a high degree of accordance (mean±SD=73%±5%); a similar pattern was found for class SS (80% slightly lower accordance was reported for class H (58%±18%)), with a minimum of 30% in some cases. Low agreement arose from the FM group. Seizures were univocally assigned to a given class in 83.6% of seizures. The ANN classified PNESs in the same way as visual examination in 86.7%. Agreement between ANN classification and visual classification reached 83.3% (SD=17.8%) accordance for class H, 100% (SD=22%) for class A, 83.3% (SD=21.2%) for class SS, and 50% (SD=19.52%) for class FM. This is the first study in which the validity of a new PNES classification was established and reached in two different ways. Video-EEG evaluation needs to be performed by an experienced clinician, but later on, it may be fed into ANN analysis, whose feedback will provide guidance for differential diagnosis. Our analysis, supported by the ML approach, showed that this model of classification could be objectively performed by video-EEG examination.
Copyright © 2016 Elsevier Inc. All rights reserved.

Entities:  

Keywords:  Classification of PNESs; Machine learning; Psychogenic seizures; Video-EEG

Mesh:

Year:  2016        PMID: 27208925     DOI: 10.1016/j.yebeh.2016.03.031

Source DB:  PubMed          Journal:  Epilepsy Behav        ISSN: 1525-5050            Impact factor:   2.937


  4 in total

1.  Machine learning and clinical neurophysiology.

Authors:  Julian Ray; Lokesh Wijesekera; Silvia Cirstea
Journal:  J Neurol       Date:  2022-07-30       Impact factor: 6.682

Review 2.  Psychogenic nonepileptic seizures in pediatric population: A review.

Authors:  Francesca Felicia Operto; Giangennaro Coppola; Roberta Mazza; Grazia Maria Giovanna Pastorino; Stella Campanozzi; Lucia Margari; Michele Roccella; Rosa Marotta; Marco Carotenuto
Journal:  Brain Behav       Date:  2019-09-30       Impact factor: 2.708

3.  Case report on psychogenic nonepileptic seizures: A series of unfortunate events.

Authors:  Aniebiot-Abasi Udofia; Tamarie Rocke
Journal:  Clin Case Rep       Date:  2022-10-11

4.  Long-Term V-EEG in Epilepsy: Chronological Distribution of Recorded Events Focused on the Differential Diagnosis of Epileptic Seizures and Psychogenic Non-Epileptic Seizures.

Authors:  Fernando Vázquez-Sánchez; Beatriz García-López; Ana Isabel Gómez-Menéndez; Asunción Martín-Santidrián; Jesús Macarrón Vicente; Alicia Hernando-Asensio; Pedro Gámez-Beltrán; Jerónimo J González-Bernal; Raúl Soto-Cámara; María Jiménez-Barrios; Josefa González-Santos
Journal:  J Clin Med       Date:  2021-05-12       Impact factor: 4.241

  4 in total

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