Quantitative analysis of phenotypic elements augments traditional electroclinical classification of common familial epilepsies

Autor: Orrin Devinsky, Samuel F. Berkovic, Catharine Freyer, Annapurna Poduri, Eric B. Geller, Amos D. Korczyn, Heidi E. Kirsch, Nathan B. Fountain, Rosemary Burgess, Jack M. Parent, Jocelyn F. Bautista, Susannah T. Bellows, Robert C. Knowlton, David Goldstein, Dennis J. Dlugos, Heather C Mefford, Anthony G Marson, Mike Smith, Sabrina Cristofaro, Erin L. Heinzen, Bassel Abou-Khalil, Michael P. Epstein, Douglas E. Crompton, Eileen P.G. Vining, Kevin McKenna, Steven Petrou, Anu Venkat, Eric H. Kossoff, Gretchen Von Allmen, Sheryl R. Haut, Ruben Kuzniecky, Juliann M. Paolicchi, Colin A Ellis, Rani K. Singh, Simon Glynn, Daniel H. Lowenstein, Liu Lin Thio, Lynette G. Sadleir, Rebecca Loeb, Norman Delanty, Terence J. O'Brien, Paul V. Motika, Peter Widdess-Walsh, Sara Kivity, Gregory D. Cascino, Slavé Petrovski, Ruth Ottman, Micheline Gravel, Andrew S. Allen, Jerry J. Shih, Ingrid E. Scheffer, Joseph I Sirven, William O. Pickrell, Tracy A. Glauser, Judith L.Z. Weisenberg, Judith Bluvstein, Zaid Afawi, Phil Smith, Kevin F. Haas, Mark McCormack, Hadassa Goldberg-Stern, Sarah Paterson, Melodie R. Winawer, Mark I. Rees, Saul A. Mullen, Patrick Cossette, Rhys H. Thomas
Rok vydání: 2019
Předmět:
Zdroj: Epilepsia
ISSN: 1528-1167
0013-9580
DOI: 10.1111/epi.16354
Popis: OBJECTIVE: Classification of epilepsy into types and subtypes is important for both clinical care and research into underlying disease mechanisms. A quantitative, data-driven approach may augment traditional electroclinical classification and shed new light on existing classification frameworks. METHODS: We used latent class analysis, a statistical method that assigns subjects into groups called latent classes based on phenotypic elements, to classify individuals with common familial epilepsies from the Epi4K Multiplex Families study. Phenotypic elements included seizure types, seizure symptoms, and other elements of the medical history. We compared class assignments to traditional electroclinical classifications and assessed familial aggregation of latent classes. RESULTS: A total of 1120 subjects with epilepsy were assigned to five latent classes. Classes 1 and 2 contained subjects with generalized epilepsy, largely reflecting the distinction between absence epilepsies and younger onset (class 1) versus myoclonic epilepsies and older onset (class 2). Classes 3 and 4 contained subjects with focal epilepsies, and in contrast to classes 1 and 2, these did not adhere as closely to clinically defined focal epilepsy subtypes. Class 5 contained nearly all subjects with febrile seizures plus or unknown epilepsy type, as well as a few subjects with generalized epilepsy and a few with focal epilepsy. Family concordance of latent classes was similar to or greater than concordance of clinically defined epilepsy types. SIGNIFICANCE: Quantitative classification of epilepsy has the potential to augment traditional electroclinical classification by (1) combining some syndromes into a single class, (2) splitting some syndromes into different classes, (3) helping to classify subjects who could not be classified clinically, and (4) defining the boundaries of clinically defined classifications. This approach can guide future research, including molecular genetic studies, by identifying homogeneous sets of individuals that may share underlying disease mechanisms.
Databáze: OpenAIRE