How Machine Learning Provides Decision Support in the Early Identification of Epilepsy Surgery Candidates
An artificial intelligence (AI) algorithm developed by Cincinnati Children’s researchers that identifies patients who may benefit from epilepsy surgery is ready to test in adults and at other hospitals.
The algorithm runs on a software program embedded into a hospital’s electronic health record (EHR). Using natural language processing techniques, it analyzes previous provider notes for each patient with an upcoming appointment in the epilepsy clinic. The algorithm considers the words, tone and themes in the notes, and uses a scoring system to identify patients who meet criteria for surgery evaluation.
When patients are identified, the algorithm sends reminders to providers. Physicians and advanced practice registered nurses who receive these notices are three times more likely to refer patients for a surgery consult, says Judith Dexheimer, PhD, a principal study investigator.
The algorithm was translated into clinical care at Cincinnati Children’s in 2018. Since then, Dexheimer; Hansel Greiner, MD, co-director of the hospital’s Epilepsy Surgery Program; and Ben Wissel, MD-PhD candidate at the University of Cincinnati (UC), have completed multiple studies to verify the algorithm’s methods, check the artificial intelligence for racial bias and guide the machine learning tools to dig deeper into the natural language processing to improve the technology. All of this allows providers to refer patients for surgery earlier in their epilepsy journey.
“This means the provider is aware that they are candidates for surgery earlier in the disease course,” Greiner says.



