Title of article :
Decision Support System to Diagnosis and Classification of Epilepsy in Children
Author/Authors :
Rijo, Rui Institute for Systems and Computers Engineering at Coimbra (INESCC ), Portugal , Rijo, Rui Polytechnic Institute of Leiria - School of Technology and Management, Portugal , Silva, Catarina Institute for Systems and Computers Engineering at Coimbra (INESCC ), Portugal , Silva, Catarina Polytechnic Institute of Leiria - School of Technology and Management, Portugal , Pereira, Luís Polytechnic Institute of Leiria - School of Technology and Management, Portugal , Gonçalves, Dulce Polytechnic Institute of Leiria - School of Technology and Management, Portugal , Agostinho, Margarida Hospital Santo André - Centro Hospitalar de Leiria-Pombal, Portugal
From page :
907
To page :
923
Abstract :
Clinical decision support systems play an important role in organizations. They have a tight relation with the information systems. Our goal is to develop a system to support the diagnosis and the classification of epilepsy in children. Around 50 million people in the world have epilepsy. Epilepsy diagnosis can be an extremely complex process, demanding considerable time and effort from physicians and healthcare infrastructures. Exams such as electroencephalograms and magnetic resonances are often used to create a more accurate diagnosis in a short amount of time. After the diagnosis process, physicians classify epilepsy according to the International Classification of Diseases, ninth revision (ICD-9). Physicians need to classify each specific type of epilepsy based on different data, e.g., types of seizures, events and exams’ results. The classification process is time consuming and, in some cases, demands for complementary exams. This work presents a text mining approach to support medical decisions relating to epilepsy diagnosis and ICD-9-based classification in children. We put forward a text mining approach using electronically processed medical records, and apply the K-Nearest Neighbor technique as a white-box multiclass classifier approach to classify each instance, mapping it to the corresponding ICD-9-based standard code. Results on real medical records suggest that the proposed framework shows good performance and clear interpretations, albeit the reduced volume of available training data. To overcome this hurdle,in this work we also propose and explore ways of expanding the dataset.
Keywords :
epilepsy , diagnosis , clinical decision support systems , medical information systems , electronic medical records , ICD codes , data mining , text mining , machine learning
Journal title :
Journal of J.UCS (Journal of Universal Computer Science)
Journal title :
Journal of J.UCS (Journal of Universal Computer Science)
Record number :
2715228
Link To Document :
بازگشت