TY - JOUR
T1 - Artificial intelligence for classification of temporal lobe epilepsy with ROI-level MRI data
T2 - A worldwide ENIGMA-Epilepsy study
AU - ENIGMA-Epilepsy Working Group
AU - Gleichgerrcht, Ezequiel
AU - Munsell, Brent C.
AU - Alhusaini, Saud
AU - Alvim, Marina K.M.
AU - Bargalló, Núria
AU - Bender, Benjamin
AU - Bernasconi, Andrea
AU - Bernasconi, Neda
AU - Bernhardt, Boris
AU - Blackmon, Karen
AU - Caligiuri, Maria Eugenia
AU - Cendes, Fernando
AU - Concha, Luis
AU - Desmond, Patricia M.
AU - Devinsky, Orrin
AU - Doherty, Colin P.
AU - Domin, Martin
AU - Duncan, John S.
AU - Focke, Niels K.
AU - Gambardella, Antonio
AU - Gong, Bo
AU - Guerrini, Renzo
AU - Hatton, Sean N.
AU - Kälviäinen, Reetta
AU - Keller, Simon S.
AU - Kochunov, Peter
AU - Kotikalapudi, Raviteja
AU - Kreilkamp, Barbara A.K.
AU - Labate, Angelo
AU - Langner, Soenke
AU - Larivière, Sara
AU - Lenge, Matteo
AU - Lui, Elaine
AU - Martin, Pascal
AU - Mascalchi, Mario
AU - Meletti, Stefano
AU - O'Brien, Terence J.
AU - Pardoe, Heath R.
AU - Pariente, Jose C.
AU - Xian Rao, Jun
AU - Richardson, Mark P.
AU - Rodríguez-Cruces, Raúl
AU - Rüber, Theodor
AU - Sinclair, Ben
AU - Soltanian-Zadeh, Hamid
AU - Stein, Dan J.
AU - Striano, Pasquale
AU - Taylor, Peter N.
AU - Thomas, Rhys H.
AU - Elisabetta Vaudano, Anna
N1 - Publisher Copyright:
© 2021 The Authors
PY - 2021/1
Y1 - 2021/1
N2 - Artificial intelligence has recently gained popularity across different medical fields to aid in the detection of diseases based on pathology samples or medical imaging findings. Brain magnetic resonance imaging (MRI) is a key assessment tool for patients with temporal lobe epilepsy (TLE). The role of machine learning and artificial intelligence to increase detection of brain abnormalities in TLE remains inconclusive. We used support vector machine (SV) and deep learning (DL) models based on region of interest (ROI-based) structural (n = 336) and diffusion (n = 863) brain MRI data from patients with TLE with (“lesional”) and without (“non-lesional”) radiographic features suggestive of underlying hippocampal sclerosis from the multinational (multi-center) ENIGMA-Epilepsy consortium. Our data showed that models to identify TLE performed better or similar (68–75%) compared to models to lateralize the side of TLE (56–73%, except structural-based) based on diffusion data with the opposite pattern seen for structural data (67–75% to diagnose vs. 83% to lateralize). In other aspects, structural and diffusion-based models showed similar classification accuracies. Our classification models for patients with hippocampal sclerosis were more accurate (68–76%) than models that stratified non-lesional patients (53–62%). Overall, SV and DL models performed similarly with several instances in which SV mildly outperformed DL. We discuss the relative performance of these models with ROI-level data and the implications for future applications of machine learning and artificial intelligence in epilepsy care.
AB - Artificial intelligence has recently gained popularity across different medical fields to aid in the detection of diseases based on pathology samples or medical imaging findings. Brain magnetic resonance imaging (MRI) is a key assessment tool for patients with temporal lobe epilepsy (TLE). The role of machine learning and artificial intelligence to increase detection of brain abnormalities in TLE remains inconclusive. We used support vector machine (SV) and deep learning (DL) models based on region of interest (ROI-based) structural (n = 336) and diffusion (n = 863) brain MRI data from patients with TLE with (“lesional”) and without (“non-lesional”) radiographic features suggestive of underlying hippocampal sclerosis from the multinational (multi-center) ENIGMA-Epilepsy consortium. Our data showed that models to identify TLE performed better or similar (68–75%) compared to models to lateralize the side of TLE (56–73%, except structural-based) based on diffusion data with the opposite pattern seen for structural data (67–75% to diagnose vs. 83% to lateralize). In other aspects, structural and diffusion-based models showed similar classification accuracies. Our classification models for patients with hippocampal sclerosis were more accurate (68–76%) than models that stratified non-lesional patients (53–62%). Overall, SV and DL models performed similarly with several instances in which SV mildly outperformed DL. We discuss the relative performance of these models with ROI-level data and the implications for future applications of machine learning and artificial intelligence in epilepsy care.
KW - Artificial inteligence
KW - Epilepsy
KW - Machine learning
KW - Temporal lobe epilepsy
UR - https://www.scopus.com/pages/publications/85111563148
U2 - 10.1016/j.nicl.2021.102765
DO - 10.1016/j.nicl.2021.102765
M3 - Article
C2 - 34339947
AN - SCOPUS:85111563148
SN - 2213-1582
VL - 31
JO - NeuroImage: Clinical
JF - NeuroImage: Clinical
M1 - 102765
ER -