Using Text Mining to Diagnose and Classify Epilepsy in Children
Authors
Abstract
Epilepsy diagnosis can be an extremely complex process, demanding considerable time and effort from physicians and healthcare infrastructures. Physicians need to classify each specific type of epilepsy based on different data, e.g., types of seizures, events and exams' results. This work presents a text mining approach to support medical decisions relating to epilepsy diagnosis and classification in children. We propose a text mining process that, using patient medical records, applies ontologies and named entities recognition as preprocessing steps, then applying K-Nearest Neighbors as a white-box lazy method to classify each instance. Results on real medical records suggest that the proposed framework shows good performance and clear interpretations, albeit the reduced volume of available training data.
Keywords
ICD codes; Data mining ; Electronic medical records; Epilepsy; Machine learning; Text mining;
Subject
ICD codes; Data mining ; Electronic medical records; Epilepsy; Machine learning; Text mining;
Conference
IEEE 16th International Conference on E-health Networking, Application & Services, IEEE HealthCom 2013, October 2013
DOI
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