Journal article
Machine learning approaches for imaging-based prognostication of the outcome of surgery for mesial temporal lobe epilepsy
B Sinclair, V Cahill, J Seah, A Kitchen, LE Vivash, Z Chen, CB Malpas, MF O'Shea, PM Desmond, RJ Hicks, AP Morokoff, JA King, GC Fabinyi, AH Kaye, P Kwan, SF Berkovic, M Law, TJ O'Brien
Epilepsia | Published : 2022
DOI: 10.1111/epi.17217
Abstract
Objectives: Around 30% of patients undergoing surgical resection for drug-resistant mesial temporal lobe epilepsy (MTLE) do not obtain seizure freedom. Success of anterior temporal lobe resection (ATLR) critically depends on the careful selection of surgical candidates, aiming at optimizing seizure freedom while minimizing postoperative morbidity. Structural MRI and FDG-PET neuroimaging are routinely used in presurgical assessment and guide the decision to proceed to surgery. In this study, we evaluate the potential of machine learning techniques applied to standard presurgical MRI and PET imaging features to provide enhanced prognostic value relative to current practice. Methods: Eighty two..
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Awarded by National Health and Medical Research Council
Funding Acknowledgements
National Health and Medical Research Council, Grant/Award Number: #APP1176426 and #APP1091593