Literature DB >> 30082202

Machine learning as a new paradigm for characterizing localization and lateralization of neuropsychological test data in temporal lobe epilepsy.

Brandon Frank1, Landon Hurley1, Travis M Scott1, Pat Olsen1, Patricia Dugan2, William B Barr3.   

Abstract

In this study, we employed a kernel support vector machine to predict epilepsy localization and lateralization for patients with a diagnosis of epilepsy (n = 228). We assessed the accuracy to which indices of verbal memory, visual memory, verbal fluency, and naming would localize and lateralize seizure focus in comparison to standard electroencephalogram (EEG). Classification accuracy was defined as models that produced the least cross-validated error (CVϵ). In addition, we assessed whether the inclusion of norm-based standard scores, demographics, and emotional functioning data would reduce CVϵ. Finally, we obtained class probabilities (i.e., the probability of a particular classification for each case) and produced receiver operating characteristic (ROC) curves for the primary analyses. We obtained the least error assessing localization data with the Gaussian radial basis kernel function (RBF; support vectors = 157, CVϵ = 0.22). There was no overlap between the localization and lateralization models, such that the poorest localization model (the hyperbolic tangent kernel function; support vectors = 91, CVϵ = 0.36) outperformed the strongest lateralization model (RBF; support vectors = 201, CVϵ = 0.39). Contrary to our hypothesis, the addition of norm, demographics, and emotional functioning data did not improve the accuracy of the models. Receiver operating characteristic curves suggested clinical utility in classifying epilepsy lateralization and localization using neuropsychological indicators, albeit with better discrimination for localizing determinations. This study adds to the existing literature by employing an analytic technique with inherent advantages in generalizability when compared to traditional single-sample, not cross-validated models. In the future, class probabilities extracted from these and similar analyses could supplement neuropsychological practice by offering a quantitative guide to clinical judgements.
Copyright © 2018 Elsevier Inc. All rights reserved.

Entities:  

Keywords:  Lateralization; Localization; Machine learning; Neuropsychology; Temporal lobe epilepsy

Mesh:

Year:  2018        PMID: 30082202     DOI: 10.1016/j.yebeh.2018.07.006

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


  2 in total

Review 1.  Neurobehavioural comorbidities of epilepsy: towards a network-based precision taxonomy.

Authors:  Bruce P Hermann; Aaron F Struck; Robyn M Busch; Anny Reyes; Erik Kaestner; Carrie R McDonald
Journal:  Nat Rev Neurol       Date:  2021-09-22       Impact factor: 44.711

Review 2.  The ENIGMA-Epilepsy working group: Mapping disease from large data sets.

Authors:  Sanjay M Sisodiya; Christopher D Whelan; Sean N Hatton; Khoa Huynh; Andre Altmann; Mina Ryten; Annamaria Vezzani; Maria Eugenia Caligiuri; Angelo Labate; Antonio Gambardella; Victoria Ives-Deliperi; Stefano Meletti; Brent C Munsell; Leonardo Bonilha; Manuela Tondelli; Michael Rebsamen; Christian Rummel; Anna Elisabetta Vaudano; Roland Wiest; Akshara R Balachandra; Núria Bargalló; Emanuele Bartolini; Andrea Bernasconi; Neda Bernasconi; Boris Bernhardt; Benoit Caldairou; Sarah J A Carr; Gianpiero L Cavalleri; Fernando Cendes; Luis Concha; Patricia M Desmond; Martin Domin; John S Duncan; Niels K Focke; Renzo Guerrini; Khalid Hamandi; Graeme D Jackson; Neda Jahanshad; Reetta Kälviäinen; Simon S Keller; Peter Kochunov; Magdalena A Kowalczyk; Barbara A K Kreilkamp; Patrick Kwan; Sara Lariviere; Matteo Lenge; Seymour M Lopez; Pascal Martin; Mario Mascalchi; José C V Moreira; Marcia E Morita-Sherman; Heath R Pardoe; Jose C Pariente; Kotikalapudi Raviteja; Cristiane S Rocha; Raúl Rodríguez-Cruces; Margitta Seeck; Mira K H G Semmelroch; Benjamin Sinclair; Hamid Soltanian-Zadeh; Dan J Stein; Pasquale Striano; Peter N Taylor; Rhys H Thomas; Sophia I Thomopoulos; Dennis Velakoulis; Lucy Vivash; Bernd Weber; Clarissa Lin Yasuda; Junsong Zhang; Paul M Thompson; Carrie R McDonald
Journal:  Hum Brain Mapp       Date:  2020-05-29       Impact factor: 5.038

  2 in total

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