Author/Authors :
Mello-Roman, Jorge D Universidad Nacional de Concepcion - Concepcion, Paraguay , Mello-Roman, Julio C Universidad Nacional de Concepcion - Concepcion, Paraguay , Gomez-Guerrero, Santiago Universidad Nacional de Asuncion - San Lorenzo, Paraguay , Garcıa-Torres, Miguel Universidad Pablo de Olavide - Sevilla, Spain
Abstract :
Early diagnosis of dengue continues to be a concern for public health in countries with a high incidence of this disease. In this
work, we compared two machine learning techniques: artificial neural networks (ANN) and support vector machines (SVM) as
assistance tools for medical diagnosis. The performance of classification models was evaluated in a real dataset of patients with a
previous diagnosis of dengue extracted from the public health system of Paraguay during the period 2012–2016. The ANN
multilayer perceptron achieved better results with an average of 96% accuracy, 96% sensitivity, and 97% specificity, with low
variation in thirty different partitions of the dataset. In comparison, SVM polynomial obtained results above 90% for accuracy,
sensitivity, and specificity.