Assessment of Bayesian Estimators for Osteoporosis Analysis

Autor: Abigail Lopes, Maitê Gabriel dos Passos, Paulo João Martins, Luciane Bisognin Ceretta, Diego Garcia, Eros Comunello, Leandro Luiz Mazzuchello, Ramon Venson, Maria Marlene de Souza Pires, Carolina Pedrassani de Lira, Larissa Letieli Toniazzo de Abreu, Priscyla Waleska Targino de Azevedo Simões
Rok vydání: 2015
Předmět:
Zdroj: International Archives of Medicine.
ISSN: 1755-7682
DOI: 10.3823/1839
Popis: Background : Bayesian classifiers have the advantage of determining the class to which a given record belongs compared to traditional classifiers, taking as base the probability of an element belonging to a class. Thus, the diagnosis of diseases such as osteoporosis and osteopenia can become faster and precise.This paper presents an assessment of the accuracy of the Bayesian classifiers Bayes Net, Naive Bayes and Averaged One-Dependence Estimators to support diagnoses of osteopenia and osteoporosis. Method : The methodology that guided the development of this research relied on the choice of database, the study of the Bayes Net, Naive Bayes and Averaged One-Dependence Estimators algorithms, and the description of the experiments. Results: The algorithm with the highest specificity was Bayes Net, (53.0±0.27). The highest accuracy was obtained using the AODE classifier (83.0±0.17). Our results showed higher mean instances correctly classified using the Naive Bayes algorithm (82.84±14.42), and the average of incorrectly classified instances was higher for Bayes Net (17.46±14.76). Conclusion: Based on the statistical measures analyzed in the experiments (instances classified correctly and incorrectly, the kappa coefficient, mean absolute error, sensitivity, specificity, accuracy, recall, F-measure, and Area Under Curve (AUC)), all classifiers showed good results, thus, given these data, it is possible to produce a reasonably accurate estimate of the diagnosis.
Databáze: OpenAIRE