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Título
Complications Detection in Treatment for Bacterial Endocarditis
Autor
Publicado en
Advances in Intelligent and Soft Computing. 2011, V. 91, p. 241-248
Editorial
Springer Nature
Fecha de publicación
2011
ISSN
1867-5662
DOI
10.1007/978-3-642-19934-9_30
Descripción
Trabajo presentado en: International Symposium on Distributed Computing and Artificial Intelligence, 2011
Resumen
This study proposes the use of decision trees to detect possible complications in a critical disease called endocarditis. The endocarditis illness could produce heart failure, stroke, kidney failure, emboli, immunological disorders and
death. The aim is to obtained a tree decision classifier based on the symptoms (attributes) of patients (the data instances) observed by doctors to predict the possible
complications that can occur when a patient is in treatment of bacterial endocarditis and thus, help doctors to make an early diagnose so that they can treat more effectively the infection and aid to a patient faster recovery. The results obtained
using a real data set, show that with the information extracted form each case in an
early stage of the development of the patient a quite accurate idea of the complications that can arise can be extracted.
Palabras clave
Decision Tree
Infective Endocarditis
Bacterial Endocarditis
Kernel Cluster
Case Base Reasoning System
Materia
Informática
Computer science
Medicina
Medicine
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