Ezequiel Gleichgerrcht1, Brent Munsell2, Sonal Bhatia1, William A Vandergrift3, Chris Rorden4, Carrie McDonald5, Jonathan Edwards1, Ruben Kuzniecky6, Leonardo Bonilha1. 1. Department of Neurology, Medical University of South Carolina, Charleston, South Carolina. 2. Department of Computer Science, College of Charleston, Charleston, South Carolina. 3. Department of Neurosurgery, Medical University of South Carolina, Charleston, South Carolina. 4. Department of Psychology, University of South Carolina, Columbia, South Carolina. 5. Department of Psychology, University of California, San Diego, San Diego, California. 6. Department of Neurology, Hofstra Northwell School of Medicine, Great Neck, New York.
Abstract
OBJECTIVE: We evaluated whether deep learning applied to whole-brain presurgical structural connectomes could be used to predict postoperative seizure outcome more accurately than inference from clinical variables in patients with mesial temporal lobe epilepsy (TLE). METHODS: Fifty patients with unilateral TLE were classified either as having persistent disabling seizures (SZ) or becoming seizure-free (SZF) at least 1 year after epilepsy surgery. Their presurgical structural connectomes were reconstructed from whole-brain diffusion tensor imaging. A deep network was trained based on connectome data to classify seizure outcome using 5-fold cross-validation. RESULTS: Classification accuracy of our trained neural network showed positive predictive value (PPV; seizure freedom) of 88 ± 7% and mean negative predictive value (NPV; seizure refractoriness) of 79 ± 8%. Conversely, a classification model based on clinical variables alone yielded <50% accuracy. The specific features that contributed to high accuracy classification of the neural network were located not only in the ipsilateral temporal and extratemporal regions, but also in the contralateral hemisphere. SIGNIFICANCE: Deep learning demonstrated to be a powerful statistical approach capable of isolating abnormal individualized patterns from complex datasets to provide a highly accurate prediction of seizure outcomes after surgery. Features involved in this predictive model were both ipsilateral and contralateral to the clinical foci and spanned across limbic and extralimbic networks. Wiley Periodicals, Inc.
OBJECTIVE: We evaluated whether deep learning applied to whole-brain presurgical structural connectomes could be used to predict postoperative seizure outcome more accurately than inference from clinical variables in patients with mesial temporal lobe epilepsy (TLE). METHODS: Fifty patients with unilateral TLE were classified either as having persistent disabling seizures (SZ) or becoming seizure-free (SZF) at least 1 year after epilepsy surgery. Their presurgical structural connectomes were reconstructed from whole-brain diffusion tensor imaging. A deep network was trained based on connectome data to classify seizure outcome using 5-fold cross-validation. RESULTS: Classification accuracy of our trained neural network showed positive predictive value (PPV; seizure freedom) of 88 ± 7% and mean negative predictive value (NPV; seizure refractoriness) of 79 ± 8%. Conversely, a classification model based on clinical variables alone yielded <50% accuracy. The specific features that contributed to high accuracy classification of the neural network were located not only in the ipsilateral temporal and extratemporal regions, but also in the contralateral hemisphere. SIGNIFICANCE: Deep learning demonstrated to be a powerful statistical approach capable of isolating abnormal individualized patterns from complex datasets to provide a highly accurate prediction of seizure outcomes after surgery. Features involved in this predictive model were both ipsilateral and contralateral to the clinical foci and spanned across limbic and extralimbic networks. Wiley Periodicals, Inc.
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Authors: Victoria L Morgan; Baxter P Rogers; Hernán F J González; Sarah E Goodale; Dario J Englot Journal: J Neurosurg Date: 2019-06-14 Impact factor: 5.115
Authors: Boris C Bernhardt; Fatemeh Fadaie; Min Liu; Benoit Caldairou; Shi Gu; Elizabeth Jefferies; Jonathan Smallwood; Danielle S Bassett; Andrea Bernasconi; Neda Bernasconi Journal: Neurology Date: 2019-04-19 Impact factor: 9.910
Authors: Ezequiel Gleichgerrcht; Simon S Keller; Daniel L Drane; Brent C Munsell; Kathryn A Davis; Erik Kaestner; Bernd Weber; Samantha Krantz; William A Vandergrift; Jonathan C Edwards; Carrie R McDonald; Ruben Kuzniecky; Leonardo Bonilha Journal: Ann Neurol Date: 2020-09-10 Impact factor: 10.422
Authors: Ezequiel Gleichgerrcht; Adam S Greenblatt; Tanja S Kellermann; Nathan Rowland; W Alexander Vandergrift; Jonathan Edwards; Kathryn A Davis; Leonardo Bonilha Journal: Epilepsy Res Date: 2021-02-05 Impact factor: 3.045
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Authors: Akshara R Balachandra; Erik Kaestner; Naeim Bahrami; Anny Reyes; Sanam Lalani; Anna Christina Macari; Brianna M Paul; Leonardo Bonilha; Carrie R McDonald Journal: Neurology Date: 2020-05-01 Impact factor: 9.910