This paper focus on a neural network classification model to estimate the association among gender, race, BMI, age, smoking, kidney disease and diabetes in hypertensive patients. It also shows that artificial neural network techniques applied to large clinical data sets may provide a meaningful data-driven approach to categorize patients for population health management, and support in the control and detection of hypertensive patients, which is part of the critical factors for diseases of the heart. Data was obtained from the National Health and Nutrition Examination Survey from 2007 to 2016. This paper utilized an imbalanced data set of 24,434 with (69.71%) non-hypertensive patients, and (30.29%) hypertensive patients. The results indicat...
Aim. To assess the prospects of using artificial intelligence technologies in predicting the outcome...
Many modifiable and non-modifiable risk factors have been associated with hypertension. However, cur...
Hypertension is the world\u27s leading factor in cardiovascular disease. Forty-seven percent or clos...
The effects of hypertension are often lethal thus its early detection and prevention is very importa...
The purpose of this paper is to investigate the use of machine learning models to develop a diagnost...
Background: Diabetes and hypertension are important non-communicable diseases and their prevalence i...
This study outlines and developed a multilayer perceptron (MLP) neural network model for adolescent ...
We have previously shown, in a large cross-sectional study, that intima media thickness (IMT) of car...
Background and objectivesHypertension (HTN), a major global health concern, is a leading cause of ca...
The study applied the ANN (12, 12, 1) model in order to analyze hypertension cases for Gweru Provinc...
This paper presents the development of a multilayer feed-forward neural network for the diagnosis of...
Hypertension, a global burden, is associated with several risk factors and can be treated by lifesty...
The study applied the ANN (12, 12, 1) model in order to analyze hypertension cases for Gweru Provinc...
There are a lot oftechniques that can be used to make predictions, but the technique which is suitab...
Background and objectiveHypertension, a global burden, is associated with several risk factors and c...
Aim. To assess the prospects of using artificial intelligence technologies in predicting the outcome...
Many modifiable and non-modifiable risk factors have been associated with hypertension. However, cur...
Hypertension is the world\u27s leading factor in cardiovascular disease. Forty-seven percent or clos...
The effects of hypertension are often lethal thus its early detection and prevention is very importa...
The purpose of this paper is to investigate the use of machine learning models to develop a diagnost...
Background: Diabetes and hypertension are important non-communicable diseases and their prevalence i...
This study outlines and developed a multilayer perceptron (MLP) neural network model for adolescent ...
We have previously shown, in a large cross-sectional study, that intima media thickness (IMT) of car...
Background and objectivesHypertension (HTN), a major global health concern, is a leading cause of ca...
The study applied the ANN (12, 12, 1) model in order to analyze hypertension cases for Gweru Provinc...
This paper presents the development of a multilayer feed-forward neural network for the diagnosis of...
Hypertension, a global burden, is associated with several risk factors and can be treated by lifesty...
The study applied the ANN (12, 12, 1) model in order to analyze hypertension cases for Gweru Provinc...
There are a lot oftechniques that can be used to make predictions, but the technique which is suitab...
Background and objectiveHypertension, a global burden, is associated with several risk factors and c...
Aim. To assess the prospects of using artificial intelligence technologies in predicting the outcome...
Many modifiable and non-modifiable risk factors have been associated with hypertension. However, cur...
Hypertension is the world\u27s leading factor in cardiovascular disease. Forty-seven percent or clos...