Bayesian Methods in Health Economics

Bayesian Methods in Health Economics
Title Bayesian Methods in Health Economics PDF eBook
Author Gianluca Baio
Publisher CRC Press
Total Pages 246
Release 2012-11-12
Genre Mathematics
ISBN 1439895554

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Health economics is concerned with the study of the cost-effectiveness of health care interventions. This book provides an overview of Bayesian methods for the analysis of health economic data. After an introduction to the basic economic concepts and methods of evaluation, it presents Bayesian statistics using accessible mathematics. The next chapters describe the theory and practice of cost-effectiveness analysis from a statistical viewpoint, and Bayesian computation, notably MCMC. The final chapter presents three detailed case studies covering cost-effectiveness analyses using individual data from clinical trials, evidence synthesis and hierarchical models and Markov models. The text uses WinBUGS and JAGS with datasets and code available online.

A Primer on Bayesian Statistics in Health Economics and Outcomes Research

A Primer on Bayesian Statistics in Health Economics and Outcomes Research
Title A Primer on Bayesian Statistics in Health Economics and Outcomes Research PDF eBook
Author Bryan Luce
Publisher
Total Pages
Release 2003
Genre
ISBN 9780974364100

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Bayesian Cost-Effectiveness Analysis of Medical Treatments

Bayesian Cost-Effectiveness Analysis of Medical Treatments
Title Bayesian Cost-Effectiveness Analysis of Medical Treatments PDF eBook
Author Elias Moreno
Publisher CRC Press
Total Pages 284
Release 2019-01-30
Genre Mathematics
ISBN 1351744372

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Cost-effectiveness analysis is becoming an increasingly important tool for decision making in the health systems. Cost-Effectiveness of Medical Treatments formulates the cost-effectiveness analysis as a statistical decision problem, identifies the sources of uncertainty of the problem, and gives an overview of the frequentist and Bayesian statistical approaches for decision making. Basic notions on decision theory such as space of decisions, space of nature, utility function of a decision and optimal decisions, are explained in detail using easy to read mathematics. Features Focuses on cost-effectiveness analysis as a statistical decision problem and applies the well-established optimal statistical decision methodology. Discusses utility functions for cost-effectiveness analysis. Enlarges the class of models typically used in cost-effectiveness analysis with the incorporation of linear models to account for covariates of the patients. This permits the formulation of the group (or subgroup) theory. Provides Bayesian procedures to account for model uncertainty in variable selection for linear models and in clustering for models for heterogeneous data. Model uncertainty in cost-effectiveness analysis has not been considered in the literature. Illustrates examples with real data. In order to facilitate the practical implementation of real datasets, provides the codes in Mathematica for the proposed methodology. The motivation for the book is to make the achievements in cost-effectiveness analysis accessible to health providers, who need to make optimal decisions, to the practitioners and to the students of health sciences. Elías Moreno is Professor of Statistics and Operational Research at the University of Granada, Spain, Corresponding Member of the Royal Academy of Sciences of Spain, and elect member of ISI. Francisco José Vázquez-Polo is Professor of Mathematics and Bayesian Methods at the University of Las Palmas de Gran Canaria, and Head of the Department of Quantitative Methods. Miguel Ángel Negrín is Senior Lecturer in the Department of Quantitative Methods at the ULPGC. His main research topics are Bayesian methods applied to Health Economics, economic evaluation and cost-effectiveness analysis, meta-analysis and equity in the provision of healthcare services.

Bayesian Cost-Effectiveness Analysis with the R package BCEA

Bayesian Cost-Effectiveness Analysis with the R package BCEA
Title Bayesian Cost-Effectiveness Analysis with the R package BCEA PDF eBook
Author Gianluca Baio
Publisher Springer
Total Pages 168
Release 2017-05-25
Genre Medical
ISBN 3319557181

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The book provides a description of the process of health economic evaluation and modelling for cost-effectiveness analysis, particularly from the perspective of a Bayesian statistical approach. Some relevant theory and introductory concepts are presented using practical examples and two running case studies. The book also describes in detail how to perform health economic evaluations using the R package BCEA (Bayesian Cost-Effectiveness Analysis). BCEA can be used to post-process the results of a Bayesian cost-effectiveness model and perform advanced analyses producing standardised and highly customisable outputs. It presents all the features of the package, including its many functions and their practical application, as well as its user-friendly web interface. The book is a valuable resource for statisticians and practitioners working in the field of health economics wanting to simplify and standardise their workflow, for example in the preparation of dossiers in support of marketing authorisation, or academic and scientific publications.

Empirical Health Economics

Empirical Health Economics
Title Empirical Health Economics PDF eBook
Author Andrew M. Jones
Publisher Edward Elgar Publishing
Total Pages 0
Release 2019
Genre Medical economics
ISBN 9781788119795

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This important collection gathers the most influential literature in the area of empirical health economics. Health economics provides empirical evidence to aid decision-making across a broad spectrum of issues in health and health care. This evidence is often derived from econometric methods. This title brings together landmark contributions to the development and application of these methods which span the field, ranging from structural models, models for health care costs and other microeconometric approaches, including bayesian methods, longitudinal data, applications to health technology assessment, along with field experiments and policy evaluation. Prefaced by an original introduction from the editor, this collection will be of interest to economic researchers and students as well as health scholar's wishing to explore the development of modern econometrics applied to health policy.

Modeling in Medical Decision Making

Modeling in Medical Decision Making
Title Modeling in Medical Decision Making PDF eBook
Author Giovanni Parmigiani
Publisher John Wiley & Sons
Total Pages 288
Release 2002-03
Genre Mathematics
ISBN

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Medical decision making has evolved in recent years, as more complex problems are being faced and addressed based on increasingly large amounts of data. In parallel, advances in computing power have led to a host of new and powerful statistical tools to support decision making. Simulation-based Bayesian methods are especially promising, as they provide a unified framework for data collection, inference, and decision making. In addition, these methods are simple to implement and can help to address the most pressing practical and ethical concerns arising in medical decision making. * Provides an overview of the necessary methodological background, including Bayesian inference, Monte Carlo simulation, and utility theory. * Driven by three real applications, presented as extensively detailed case studies. * Case studies include simplified versions of the analysis, to approach complex modelling in stages. * Features coverage of meta-analysis, decision analysis, and comprehensive decision modeling. * Accessible to readers with only a basic statistical knowledge. Primarily aimed at students and practitioners of biostatistics, the book will also appeal to those working in statistics, medical informatics, evidence-based medicine, health economics, health service research and health policy.

Statistical Topics in Health Economics and Outcomes Research

Statistical Topics in Health Economics and Outcomes Research
Title Statistical Topics in Health Economics and Outcomes Research PDF eBook
Author Demissie Alemayehu, PhD
Publisher CRC Press
Total Pages 242
Release 2017-11-22
Genre Mathematics
ISBN 1351252674

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With ever-rising healthcare costs, evidence generation through Health Economics and Outcomes Research (HEOR) plays an increasingly important role in decision-making about the allocation of resources. Accordingly, it is now customary for health technology assessment and reimbursement agencies to request for HEOR evidence, in addition to data from clinical trials, to inform decisions about patient access to new treatment options. While there is a great deal of literature on HEOR, there is a need for a volume that presents a coherent and unified review of the major issues that arise in application, especially from a statistical perspective. Statistical Topics in Health Economics and Outcomes Research fulfils that need by presenting an overview of the key analytical issues and best practice. Special attention is paid to key assumptions and other salient features of statistical methods customarily used in the area, and appropriate and relatively comprehensive references are made to emerging trends. The content of the book is purposefully designed to be accessible to readers with basic quantitative backgrounds, while providing an in-depth coverage of relatively complex statistical issues. The book will make a very useful reference for researchers in the pharmaceutical industry, academia, and research institutions involved with HEOR studies. The targeted readers may include statisticians, data scientists, epidemiologists, outcomes researchers, health economists, and healthcare policy and decision-makers.