Medical decisions such as benefit-risk assessments of treatments should be based on the best clinical evidence but also require subjective value judgements regarding the impact of disease and treatment outcomes. This thesis argues for a Bayesian implementation of Multi-Criteria Decision Analysis (MCDA) for such problems. It seeks to establish whether suitable Bayesian models can be constructed given the variety of data formats and the interdependencies between the many variables involved. A modelling framework is developed for joint multivariate Bayesian inference of treatment effects and preference values based on data from clinical trials and stated preference studies. This method allows the sampling uncertainty of the...
This paper introduces Bayesian frameworks for tackling various aspects of multi-criteria decision-ma...
Drug benefit-risk (BR) analysis is based on firm clinical evidence regarding various safety and effi...
BACKGROUND: Bayesian methods may be defined as the explicit quantitative use of external evidence in...
Background Estimating the value of medical treatments to patients is an essential part of healthcare...
The need for patient engagement has been recognized by regulatory agencies, but there is no consensu...
The National Institute for Health and Clinical Excellence (NICE) is responsible for making recomme...
Les objectifs de ma thèse étaient d'analyser les avantages et les inconvénients de l'approche bayési...
The motivation for this research was the study of a medical cost data set from a clinical trial. If ...
In health technology assessment, decisions are based on complex cost-effectiveness models which requ...
Decision makers in different health care settings need to weigh the benefits and harms of alternativ...
A decision maker confronted with the task of designing a clinical trial has to consider a multitude ...
AbstractBackgroundThe Problem formulation, Objectives, Alternatives, Consequences, Trade-offs, Uncer...
Multi-criteria decision analysis (MCDA) is increasingly used to support decisions in healthcare invo...
ABSTRACT This paper considers an individual making a treatment choice. The individual has access to ...
Multi-criteria decision analysis is a quantitative approach to the drug benefit–risk assessment whic...
This paper introduces Bayesian frameworks for tackling various aspects of multi-criteria decision-ma...
Drug benefit-risk (BR) analysis is based on firm clinical evidence regarding various safety and effi...
BACKGROUND: Bayesian methods may be defined as the explicit quantitative use of external evidence in...
Background Estimating the value of medical treatments to patients is an essential part of healthcare...
The need for patient engagement has been recognized by regulatory agencies, but there is no consensu...
The National Institute for Health and Clinical Excellence (NICE) is responsible for making recomme...
Les objectifs de ma thèse étaient d'analyser les avantages et les inconvénients de l'approche bayési...
The motivation for this research was the study of a medical cost data set from a clinical trial. If ...
In health technology assessment, decisions are based on complex cost-effectiveness models which requ...
Decision makers in different health care settings need to weigh the benefits and harms of alternativ...
A decision maker confronted with the task of designing a clinical trial has to consider a multitude ...
AbstractBackgroundThe Problem formulation, Objectives, Alternatives, Consequences, Trade-offs, Uncer...
Multi-criteria decision analysis (MCDA) is increasingly used to support decisions in healthcare invo...
ABSTRACT This paper considers an individual making a treatment choice. The individual has access to ...
Multi-criteria decision analysis is a quantitative approach to the drug benefit–risk assessment whic...
This paper introduces Bayesian frameworks for tackling various aspects of multi-criteria decision-ma...
Drug benefit-risk (BR) analysis is based on firm clinical evidence regarding various safety and effi...
BACKGROUND: Bayesian methods may be defined as the explicit quantitative use of external evidence in...