Predicting seizure outcome after epilepsy surgery: Do we need more complex models, larger samples, or better data?

Author:

Eriksson Maria H.1234ORCID,Ripart Mathilde1ORCID,Piper Rory J.15ORCID,Moeller Friederike6ORCID,Das Krishna B.36ORCID,Eltze Christin6ORCID,Cooray Gerald67ORCID,Booth John8ORCID,Whitaker Kirstie J.4ORCID,Chari Aswin15ORCID,Martin Sanfilippo Patricia12,Perez Caballero Ana9,Menzies Lara10,McTague Amy13ORCID,Tisdall Martin M.15ORCID,Cross J. Helen13511ORCID,Baldeweg Torsten12ORCID,Adler Sophie1ORCID,Wagstyl Konrad12ORCID

Affiliation:

1. Developmental Neurosciences Research & Teaching Department UCL Great Ormond Street Institute of Child Health London UK

2. Department of Neuropsychology Great Ormond Street Hospital London UK

3. Department of Neurology Great Ormond Street Hospital London UK

4. The Alan Turing Institute London UK

5. Department of Neurosurgery Great Ormond Street Hospital London UK

6. Department of Neurophysiology Great Ormond Street Hospital London UK

7. Clinical Neuroscience Karolinska Institute Solna Sweden

8. Digital Research Environment Great Ormond Street Hospital London UK

9. North Thames Genomic Laboratory Hub Great Ormond Street Hospital London UK

10. Department of Clinical Genetics Great Ormond Street Hospital London UK

11. Young Epilepsy Lingfield UK

12. Imaging Neuroscience UCL Queen Square Institute of Neurology London UK

Abstract

AbstractObjectiveThe accurate prediction of seizure freedom after epilepsy surgery remains challenging. We investigated if (1) training more complex models, (2) recruiting larger sample sizes, or (3) using data‐driven selection of clinical predictors would improve our ability to predict postoperative seizure outcome using clinical features. We also conducted the first substantial external validation of a machine learning model trained to predict postoperative seizure outcome.MethodsWe performed a retrospective cohort study of 797 children who had undergone resective or disconnective epilepsy surgery at a tertiary center. We extracted patient information from medical records and trained three models—a logistic regression, a multilayer perceptron, and an XGBoost model—to predict 1‐year postoperative seizure outcome on our data set. We evaluated the performance of a recently published XGBoost model on the same patients. We further investigated the impact of sample size on model performance, using learning curve analysis to estimate performance at samples up to N = 2000. Finally, we examined the impact of predictor selection on model performance.ResultsOur logistic regression achieved an accuracy of 72% (95% confidence interval [CI] = 68%–75%, area under the curve [AUC] = .72), whereas our multilayer perceptron and XGBoost both achieved accuracies of 71% (95% CIMLP = 67%–74%, AUCMLP = .70; 95% CIXGBoost own = 68%–75%, AUCXGBoost own = .70). There was no significant difference in performance between our three models (all p > .4) and they all performed better than the external XGBoost, which achieved an accuracy of 63% (95% CI = 59%–67%, AUC = .62; pLR = .005, pMLP = .01, pXGBoost own = .01) on our data. All models showed improved performance with increasing sample size, but limited improvements beyond our current sample. The best model performance was achieved with data‐driven feature selection.SignificanceWe show that neither the deployment of complex machine learning models nor the assembly of thousands of patients alone is likely to generate significant improvements in our ability to predict postoperative seizure freedom. We instead propose that improved feature selection alongside collaboration, data standardization, and model sharing is required to advance the field.

Funder

Rosetrees Trust

Wellcome Trust

Publisher

Wiley

Subject

Neurology (clinical),Neurology

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