Deep learning applied to whole-brain connectome to determine seizure control after epilepsy surgery.
Ezequiel L GleichgerrchtBrent MunsellSonal BhatiaWilliam A VandergriftChris RordenCarrie McDonaldJonathan EdwardsRuben KuznieckyLeonardo BonilhaPublished in: Epilepsia (2018)
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.
Keyphrases
- deep learning
- temporal lobe epilepsy
- resting state
- artificial intelligence
- minimally invasive
- convolutional neural network
- functional connectivity
- coronary artery bypass
- machine learning
- white matter
- rna seq
- type diabetes
- cerebral ischemia
- metabolic syndrome
- multiple sclerosis
- coronary artery disease
- acute coronary syndrome
- atrial fibrillation
- adipose tissue
- skeletal muscle
- subarachnoid hemorrhage
- weight loss