AbstractThe increasing prevalence of diabetes and its related complications is raising the need for effective methods to predict patient evolution and for stratifying cohorts in terms of risk of developing diabetes-related complications. In this paper, we present a novel approach to the simulation of a type 1 diabetes population, based on Dynamic Bayesian Networks, which combines literature knowledge with data mining of a rich longitudinal cohort of type 1 diabetes patients, the DCCT/EDIC study. In particular, in our approach we simulate the patient health state and complications through discretized variables. Two types of models are presented, one entirely learned from the data and the other partially driven by literature derived knowledge...
Type 2 Diabetes affects over 415 million people worldwide. The condition is associated with an incre...
Research into possible risk factors for chronic conditions is a common theme in medical fields. Howe...
Diabetes mellitus is a chronic disease and a major public health challenge worldwide. Using data min...
his work presents a tool based on a Dynamic Bayesian Network (DBN) model to simulate the progression...
Abstract: This paper helps in predicting diabetes by applying data mining technique. The discovery o...
This article presents a new statistical approach to analysing the effects of everyday physical activ...
This paper introduces a Dynamic Bayesian network (DBN) model for representing survival of patients s...
Comorbidities such as hypertension and lipid metabolism are often associated in diseases such as dia...
dissertationMedicine is the art and science of diagnosis and treatment of disease - maintenance of o...
We propose a novel Bayesian network tool to model the probabilistic relations between a set of type ...
Predicting Diabetes Type 2 Mellitus (T2DM) complications such as retinopathy and liver disease is st...
Predicting the complexity level (i.e. the number of complications and their related hospitalizations...
Among the many related issues of diabetes management, its complications constitute the main part of ...
The Wisconsin Epidemiologic Study of Diabetic Retinopathy (WESDR) is a population based study to inv...
A prognostic model is a formal combination of multiple predictors from which risk probability of a s...
Type 2 Diabetes affects over 415 million people worldwide. The condition is associated with an incre...
Research into possible risk factors for chronic conditions is a common theme in medical fields. Howe...
Diabetes mellitus is a chronic disease and a major public health challenge worldwide. Using data min...
his work presents a tool based on a Dynamic Bayesian Network (DBN) model to simulate the progression...
Abstract: This paper helps in predicting diabetes by applying data mining technique. The discovery o...
This article presents a new statistical approach to analysing the effects of everyday physical activ...
This paper introduces a Dynamic Bayesian network (DBN) model for representing survival of patients s...
Comorbidities such as hypertension and lipid metabolism are often associated in diseases such as dia...
dissertationMedicine is the art and science of diagnosis and treatment of disease - maintenance of o...
We propose a novel Bayesian network tool to model the probabilistic relations between a set of type ...
Predicting Diabetes Type 2 Mellitus (T2DM) complications such as retinopathy and liver disease is st...
Predicting the complexity level (i.e. the number of complications and their related hospitalizations...
Among the many related issues of diabetes management, its complications constitute the main part of ...
The Wisconsin Epidemiologic Study of Diabetic Retinopathy (WESDR) is a population based study to inv...
A prognostic model is a formal combination of multiple predictors from which risk probability of a s...
Type 2 Diabetes affects over 415 million people worldwide. The condition is associated with an incre...
Research into possible risk factors for chronic conditions is a common theme in medical fields. Howe...
Diabetes mellitus is a chronic disease and a major public health challenge worldwide. Using data min...