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Application of artificial intelligence (AI) and machine learning (ML) in pediatric epilepsy: a narrative review
9
Zitationen
2
Autoren
2021
Jahr
Abstract
Objective: The purpose of this narrative review is to introduce artificial intelligence (AI) and machine learning (ML) to pediatricians in the field of epilepsy. Background: There has been significant interest in AI and ML in the field of medicine. The number of AI research in the field of pediatrics is also increasing rapidly. AI research team often asks pediatricians to review and label the data for AI research and provide insights for planning the AI/ML algorithms. Ever-increasing medical data such as medical imaging data and digitalized physiologic monitoring data and advanced computing power enabled AI and ML research to increase rapidly. The chronic nature of epilepsy care is another reason AI/ML research is increasing using digitized big data such as magnetic resonance imaging (MRI) and electroencephalography (EEG). Methods: This review provides examples of AI/ML research in epilepsy, focusing on clinical implications. The purpose of AI/ML research in epilepsy encompasses increasing diagnostic accuracy and precision, detecting and predicting seizures, supporting treatment decisions, improving treatment outcomes, and predicting seizure and non-seizure outcomes. We will review various AI/ML research on automated EEG interpretation, seizure detection and forecasting. Conclusions: Understanding the strength and limitations of AI/ML research will help pediatricians understand and contribute to AI/ML research of their field of expertise. We must find useful clinical implications and suggestions that affect our medical knowledge and change our clinical practice from the research as clinicians participate in AI/ML research.
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