Title of article :
Application of Data Mining Algorithms for Dementia in People with HIV/AIDS
Author/Authors :
Ibiapina Cordeiro Calíope Pinheiro, Luana State University of Ceará - Fortaleza, Brazil , Lúcia Duarte Pereira, Maria State University of Ceará - Fortaleza, Brazil , Porto Fernandez, Marcial State University of Ceará - Fortaleza, Brazil , Mardônio Vieira Filho, Francisco State University of Ceará - Fortaleza, Brazil , Jorge Correia Pinto de Abreu, Wilson Porto School of Nursing - Porto, Portugal , Gabriel Calíope Dantas Pinheiro, Pedro University of Fortaleza - Fortaleza, Brazil
Abstract :
Dementia interferes with the individual’s motor, behavioural, and intellectual functions, causing him to be unable to perform
instrumental activities of daily living. This study is aimed at identifying the best performing algorithm and the most relevant
characteristics to categorise individuals with HIV/AIDS at high risk of dementia from the application of data mining. Principal
component analysis (PCA) algorithm was used and tested comparatively between the following machine learning algorithms:
logistic regression, decision tree, neural network, KNN, and random forest. The database used for this study was built from the
data collection of 270 individuals infected with HIV/AIDS and followed up at the outpatient clinic of a reference hospital for
infectious and parasitic diseases in the State of Ceará, Brazil, from January to April 2019. Also, the performance of the
algorithms was analysed for the 104 characteristics available in the database; then, with the reduction of dimensionality, there
was an improvement in the quality of the machine learning algorithms and identified that during the tests, even losing about
30% of the variation. Besides, when considering only 23 characteristics, the precision of the algorithms was 86% in random
forest, 56% logistic regression, 68% decision tree, 60% KNN, and 59% neural network. The random forest algorithm proved to
be more effective than the others, obtaining 84% precision and 86% accuracy.
Keywords :
HIV/AIDS , Dementia , Algorithms , PCA
Journal title :
Computational and Mathematical Methods in Medicine