A generalized Bayesian inference nets model (GBINM) is proposed to aid researchers to construct Bayesian inference nets for various applications. The benefit of such a model is well demonstrated by applying GBINM in constructing a hierarchical Bayesian fuzzy inference nets (HBFIN) to diagnose five important types of cardiovascular diseases (CVD). The patients' medical records with doctors' confirmed diagnostic results obtained from two hospitals in China are used to design and verify HBFIN. Bayesian theorem is used to calculate the propagation of probability and address the uncertainties involved in each sequential stage of inference nets to deduce the disease(s). The validity and effectiveness of proposed approach is witnessed clearly from...
Coronary heart disease is a heart disease that involves disorders of the blood vessels (coronary art...
Cardiovascular decision-making support experiences increasing research interest of scientists.Ongoin...
This chapter introduces a probabilistic approach to modelling in physiology and medicine: the quanti...
An intelligent cardiovascular disease (CVD) diagnosis system using hemodynamic parameters (HDPs) der...
With millions of people dying of Cardiovascular diseases (CVDs) annually, the application of Artific...
Bayesian networks are graphical probabilistic models that represent causal and other relationships b...
Generalized linear models offer convenient and highly applicable tools for modeling and predicting t...
Heart disease is a deadly disease in the world. Some countries that have a high risk of death are Am...
Bayesian networks have established themselves as an indispensable tool in artificial intelligence, ...
The paper presents a casual-probabilistic approach to the technical diagnosis in which the solution ...
Computer-based diagnostic decision support systems (DSS) will play an increasingly important role in...
[eng] An extensive, in-depth study of cardiovascular risk factors (CVRF) seems to be of crucial impo...
Bayesian networks (BN) are a valid method to analyze causal dependencies with uncertainties and to c...
We introduce the concept of generalized probabilistic queries in Dynamic Bayesian Networks (DBN) - c...
We introduce the concept of generalized probabilistic queries in Dynamic Bayesian Networks (DBN) — ...
Coronary heart disease is a heart disease that involves disorders of the blood vessels (coronary art...
Cardiovascular decision-making support experiences increasing research interest of scientists.Ongoin...
This chapter introduces a probabilistic approach to modelling in physiology and medicine: the quanti...
An intelligent cardiovascular disease (CVD) diagnosis system using hemodynamic parameters (HDPs) der...
With millions of people dying of Cardiovascular diseases (CVDs) annually, the application of Artific...
Bayesian networks are graphical probabilistic models that represent causal and other relationships b...
Generalized linear models offer convenient and highly applicable tools for modeling and predicting t...
Heart disease is a deadly disease in the world. Some countries that have a high risk of death are Am...
Bayesian networks have established themselves as an indispensable tool in artificial intelligence, ...
The paper presents a casual-probabilistic approach to the technical diagnosis in which the solution ...
Computer-based diagnostic decision support systems (DSS) will play an increasingly important role in...
[eng] An extensive, in-depth study of cardiovascular risk factors (CVRF) seems to be of crucial impo...
Bayesian networks (BN) are a valid method to analyze causal dependencies with uncertainties and to c...
We introduce the concept of generalized probabilistic queries in Dynamic Bayesian Networks (DBN) - c...
We introduce the concept of generalized probabilistic queries in Dynamic Bayesian Networks (DBN) — ...
Coronary heart disease is a heart disease that involves disorders of the blood vessels (coronary art...
Cardiovascular decision-making support experiences increasing research interest of scientists.Ongoin...
This chapter introduces a probabilistic approach to modelling in physiology and medicine: the quanti...