Diabetes disease prediction system using HNB classifier based on discretization method.
Abdulrahman A AlsewariAbdulRahman A AlsewariShadi S BasurraJagdev BhogalMohammed A H AliPublished in: Journal of integrative bioinformatics (2023)
Diagnosing diabetes early is critical as it helps patients live with the disease in a healthy way - through healthy eating, taking appropriate medical doses, and making patients more vigilant in their movements/activities to avoid wounds that are difficult to heal for diabetic patients. Data mining techniques are typically used to detect diabetes with high confidence to avoid misdiagnoses with other chronic diseases whose symptoms are similar to diabetes. Hidden Naïve Bayes is one of the algorithms for classification, which works under a data-mining model based on the assumption of conditional independence of the traditional Naïve Bayes. The results from this research study, which was conducted on the Pima Indian Diabetes (PID) dataset collection, show that the prediction accuracy of the HNB classifier achieved 82%. As a result, the discretization method increases the performance and accuracy of the HNB classifier.
Keyphrases
- type diabetes
- cardiovascular disease
- end stage renal disease
- glycemic control
- ejection fraction
- newly diagnosed
- chronic kidney disease
- machine learning
- healthcare
- deep learning
- prognostic factors
- peritoneal dialysis
- electronic health record
- metabolic syndrome
- adipose tissue
- patient reported
- depressive symptoms
- artificial intelligence
- wound healing