Generalized linear models offer convenient and highly applicable tools for modeling and predicting the behavior of random variables in terms of observable factors and covariates. This paper investigates applications of a special case of generalized linear model to improve the accuracy of predictions and decisions adopting Bayesian methods, in the specific context of assessing coronary artery disease. The basic model is developed for this application using binary response. The results clearly demonstrate the potential advantages offered by this approach. Key words: Bayesian methods, coronary artery diseas
The number of testing modalities available for the diagnosis of significant coronary artery disease ...
Development and application of statistical models for medical scientific researchAnalysis and suppor...
Background and hypothesisThe recently introduced Bayesian quantile regression (BQR) machine-learning...
Generalized linear models offer convenient and highly applicable tools for modeling and predicting t...
Bayesian analysis versus discriminant function analysis: their relative utility in the diagnosis of ...
Ischemic heart disease (or Coronary Artery Disease) is the most common cause of death in various cou...
Ischemic heart disease (or Coronary Artery Disease) is the most common cause of death in various cou...
To analyse the risk factors of coronary heart disease (CHD), we apply the Bayesian model averaging a...
A generalized Bayesian inference nets model (GBINM) is proposed to aid researchers to construct Baye...
Coronary artery disease (CAD) continues to be one of the leading causes of morbidity and mortality g...
Coronary artery disease (CAD) continues to be one of the leading causes of morbidity and mortality g...
This study focuses on statistical modelling on cardiovascular disease (CVD) patients in Malaysia. A ...
Introduction: Angiography is used as the gold standard for diagnosis of coronary artery disease (CAD...
At the present time heart disease is a major cause of death. Factors such as physical inactiveness, ...
Identifying biomarkers with predictive value for disease risk stratification is an important task in...
The number of testing modalities available for the diagnosis of significant coronary artery disease ...
Development and application of statistical models for medical scientific researchAnalysis and suppor...
Background and hypothesisThe recently introduced Bayesian quantile regression (BQR) machine-learning...
Generalized linear models offer convenient and highly applicable tools for modeling and predicting t...
Bayesian analysis versus discriminant function analysis: their relative utility in the diagnosis of ...
Ischemic heart disease (or Coronary Artery Disease) is the most common cause of death in various cou...
Ischemic heart disease (or Coronary Artery Disease) is the most common cause of death in various cou...
To analyse the risk factors of coronary heart disease (CHD), we apply the Bayesian model averaging a...
A generalized Bayesian inference nets model (GBINM) is proposed to aid researchers to construct Baye...
Coronary artery disease (CAD) continues to be one of the leading causes of morbidity and mortality g...
Coronary artery disease (CAD) continues to be one of the leading causes of morbidity and mortality g...
This study focuses on statistical modelling on cardiovascular disease (CVD) patients in Malaysia. A ...
Introduction: Angiography is used as the gold standard for diagnosis of coronary artery disease (CAD...
At the present time heart disease is a major cause of death. Factors such as physical inactiveness, ...
Identifying biomarkers with predictive value for disease risk stratification is an important task in...
The number of testing modalities available for the diagnosis of significant coronary artery disease ...
Development and application of statistical models for medical scientific researchAnalysis and suppor...
Background and hypothesisThe recently introduced Bayesian quantile regression (BQR) machine-learning...