4.5 Article

Deep learning resting state functional magnetic resonance imaging lateralization of temporal lobe epilepsy

Journal

EPILEPSIA
Volume 63, Issue 6, Pages 1542-1552

Publisher

WILEY
DOI: 10.1111/epi.17233

Keywords

epilepsy; machine learning; resting state functional connectivity

Funding

  1. National Institutes of Health [P01 AG003991, P01 AG026276, P50 HD103525, R01 AG057680, R01 CA203861, R01 DA054009, R01 MH118031, R01 NR014449, R01 NR015738]

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Deep learning using resting state functional magnetic resonance imaging (RS-fMRI) can accurately identify the correct hemisphere of the seizure onset zone in temporal lobe epilepsy (TLE) patients, and can determine strong anatomical predictors of the seizure onset zone.
Objective Localization of focal epilepsy is critical for surgical treatment of refractory seizures. There remains a great need for noninvasive techniques to localize seizures for surgical decision-making. We investigate the use of deep learning using resting state functional magnetic resonance imaging (RS-fMRI) to identify the hemisphere of seizure onset in temporal lobe epilepsy (TLE) patients. Methods A total of 2132 healthy controls and 32 preoperative TLE patients were studied. All participants underwent structural MRI and RS-fMRI. Healthy control data were used to generate training samples for a three-dimensional convolutional neural network (3DCNN). RS-fMRI was synthetically altered in randomly lateralized regions in the healthy control participants. The model was then trained to classify the hemisphere containing synthetic noise. Finally, the model was tested on TLE patients to assess its performance for detecting biological seizure onset zones, and gradient-weighted class activation mapping (Grad-CAM) identified the strongest predictive regions. Results The 3DCNN classified healthy control hemispheres known to contain synthetic noise with 96% accuracy, and TLE hemispheres clinically identified to be seizure onset zones with 90.6% accuracy. Grad-CAM identified a range of temporal, frontal, parietal, and subcortical regions that were strong anatomical predictors of the seizure onset zone, and the resting state networks that colocalized with Grad-CAM results included default mode, medial temporal, and dorsal attention networks. Lastly, in an analysis of a subset of patients with postsurgical outcomes, the 3DCNN leveraged a more focal set of regions to achieve classification in patients with Engel Class >I compared to Engel Class I. Significance Noninvasive techniques capable of localizing the seizure onset zone could improve presurgical planning in patients with intractable epilepsy. We have demonstrated the ability of deep learning to identify the correct hemisphere of the seizure onset zone in TLE patients using RS-fMRI with high accuracy. This approach represents a novel technique of seizure lateralization that could improve preoperative surgical planning.

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