Detecting Cerebral Ischemia From Electroencephalography During Carotid Endarterectomy Using Machine Learning.
Amir I MinaJessi U EspinoAllison M BradleyParthasarathy D ThirumalaKayhan BatmanghelichShyam VisweswaranPublished in: AMIA Joint Summits on Translational Science proceedings. AMIA Joint Summits on Translational Science (2024)
Monitoring cerebral neuronal activity via electroencephalography (EEG) during surgery can detect ischemia, a precursor to stroke. However, current neurophysiologist-based monitoring is prone to error. In this study, we evaluated machine learning (ML) for efficient and accurate ischemia detection. We trained supervised ML models on a dataset of 802 patients with intraoperative ischemia labels and evaluated them on an independent validation dataset of 30 patients with refined labels from five neurophysiologists. Our results show moderate-to-substantial agreement between neurophysiologists, with Cohen's kappa values between 0.59 and 0.74. Neurophysiologist performance ranged from 58-93% for sensitivity and 83-96% for specificity, while ML models demonstrated comparable ranges of 63-89% and 85-96%. Random Forest (RF), LightGBM (LGBM), and XGBoost RF achieved area under the receiver operating characteristic curve (AUROC) values of 0.92-0.93 and area under the precision-recall curve (AUPRC) values of 0.79-0.83. ML has the potential to improve intraoperative monitoring, enhancing patient safety and reducing costs.
Keyphrases
- cerebral ischemia
- patient safety
- subarachnoid hemorrhage
- machine learning
- blood brain barrier
- brain injury
- minimally invasive
- quality improvement
- patients undergoing
- climate change
- nuclear factor
- artificial intelligence
- functional connectivity
- high resolution
- working memory
- risk assessment
- coronary artery disease
- inflammatory response
- resistance training
- body composition
- toll like receptor
- surgical site infection