Early risk prediction and appropriate treatment are believed to be able to delay the occurrence of hypertension and attendant conditions. Many hypertension prediction models have been developed across the world, but they cannot be generalized directly to all populations, including for Indonesian population. This study aimed to develop and validate a hypertension risk-prediction model using machine learning (ML). The modifiable risk factors are used as the predictor, while the target variable on the algorithm is hypertension status. This study compared several machinelearning algorithms such as decision tree, random forest, gradient boosting, and logistic regression to develop a hypertension prediction model. Several parameters, including th...
Many modifiable and non-modifiable risk factors have been associated with hypertension. However, cur...
2014 7th International Conference on Information and Automation for Sustainability, ICIAfS 2014, Sri...
The purpose of this paper is to investigate the use of machine learning models to develop a diagnost...
Hypertension is a widespread chronic disease. Risk prediction of hypertension is an intervention tha...
BackgroundHypertension is the most common modifiable risk factor for cardiovascular diseases in Sout...
Hypertension, a global burden, is associated with several risk factors and can be treated by lifesty...
Background and objectiveHypertension, a global burden, is associated with several risk factors and c...
Background and objectivesHypertension (HTN), a major global health concern, is a leading cause of ca...
Many modifiable and non-modifiable risk factors have been associated with hypertension. However, cur...
The use of anthropometric measurements in machine learning algorithms for hypertension prediction en...
The use of anthropometric measurements in machine learning algorithms for hypertension prediction en...
Hypertension is one of the non-communicable disease (NCD) that is classify as a global health risk w...
The present study investigates the prediction of increased blood pressure by body mass index (BMI), ...
Aim. To assess the prospects of using artificial intelligence technologies in predicting the outcome...
This article presents an estimation of the hypertension risk based on a dataset on 1007 individuals....
Many modifiable and non-modifiable risk factors have been associated with hypertension. However, cur...
2014 7th International Conference on Information and Automation for Sustainability, ICIAfS 2014, Sri...
The purpose of this paper is to investigate the use of machine learning models to develop a diagnost...
Hypertension is a widespread chronic disease. Risk prediction of hypertension is an intervention tha...
BackgroundHypertension is the most common modifiable risk factor for cardiovascular diseases in Sout...
Hypertension, a global burden, is associated with several risk factors and can be treated by lifesty...
Background and objectiveHypertension, a global burden, is associated with several risk factors and c...
Background and objectivesHypertension (HTN), a major global health concern, is a leading cause of ca...
Many modifiable and non-modifiable risk factors have been associated with hypertension. However, cur...
The use of anthropometric measurements in machine learning algorithms for hypertension prediction en...
The use of anthropometric measurements in machine learning algorithms for hypertension prediction en...
Hypertension is one of the non-communicable disease (NCD) that is classify as a global health risk w...
The present study investigates the prediction of increased blood pressure by body mass index (BMI), ...
Aim. To assess the prospects of using artificial intelligence technologies in predicting the outcome...
This article presents an estimation of the hypertension risk based on a dataset on 1007 individuals....
Many modifiable and non-modifiable risk factors have been associated with hypertension. However, cur...
2014 7th International Conference on Information and Automation for Sustainability, ICIAfS 2014, Sri...
The purpose of this paper is to investigate the use of machine learning models to develop a diagnost...