Among the many related issues of diabetes management, its complications constitute the main part of the heavy burden of this disease. The aim of this paper is to develop a risk advisor model to predict the chances of diabetes complications according to the changes in risk factors. As the starting point, an inclusive list of (k) diabetes complications and (n) their correlated predisposing factors are derived from the existing endocrinology text books. A type of data meta-analysis has been done to extract and combine the numeric value of the relationships between these two. The whole n (risk factors) - k (complications) model was broken down into k different (n-1) relationships and these (n-1) dependencies were broken into n (1-1) models. App...
Diabetes mellitus is a chronic condition characterized by a disturbance in the metabolism of carbohy...
Abstract Diabetes is a significant health concern with more than 30 million Americans living with di...
Aims: We developed a prediction equation for 10-year risk of a combined endpoint (incident coronary ...
Among the many related issues of diabetes management, its complications constitute the main part of ...
© 2015 Sangi et al. This is an open access article distributed under the terms of the Creative Commo...
AbstractAimTo derive and validate a set of computational models able to assess the risk of developin...
Type II diabetes mellitus (T2DM) is a growing health concern in the United States, affecting almost ...
To identify risk factors, neural network analysis is used to create disease prediction models, inclu...
textabstractObjectives: This study develops neural network models to improve the prediction of diabe...
The continuous progress of computer science and technology has accelerated the pace of informatizati...
Abstract Background Diabetes is a highly prevalent chronic disease that places a large burden on in...
One of the areas where Artificial Intelligence is having more impact is machine learning, which deve...
This research focuses on presenting an empirical method to gather necessary data and then developing...
AbstractThe purpose of this study was to compare the performance of logistic regression, artificial ...
BACKGROUND: Methods of data mining and analytics can be efficiently applied in medicine to develop m...
Diabetes mellitus is a chronic condition characterized by a disturbance in the metabolism of carbohy...
Abstract Diabetes is a significant health concern with more than 30 million Americans living with di...
Aims: We developed a prediction equation for 10-year risk of a combined endpoint (incident coronary ...
Among the many related issues of diabetes management, its complications constitute the main part of ...
© 2015 Sangi et al. This is an open access article distributed under the terms of the Creative Commo...
AbstractAimTo derive and validate a set of computational models able to assess the risk of developin...
Type II diabetes mellitus (T2DM) is a growing health concern in the United States, affecting almost ...
To identify risk factors, neural network analysis is used to create disease prediction models, inclu...
textabstractObjectives: This study develops neural network models to improve the prediction of diabe...
The continuous progress of computer science and technology has accelerated the pace of informatizati...
Abstract Background Diabetes is a highly prevalent chronic disease that places a large burden on in...
One of the areas where Artificial Intelligence is having more impact is machine learning, which deve...
This research focuses on presenting an empirical method to gather necessary data and then developing...
AbstractThe purpose of this study was to compare the performance of logistic regression, artificial ...
BACKGROUND: Methods of data mining and analytics can be efficiently applied in medicine to develop m...
Diabetes mellitus is a chronic condition characterized by a disturbance in the metabolism of carbohy...
Abstract Diabetes is a significant health concern with more than 30 million Americans living with di...
Aims: We developed a prediction equation for 10-year risk of a combined endpoint (incident coronary ...