Cost-effectiveness analysis with unordered decisions

Díez, Francisco Javier, Luque, Manuel, Arias, Manuel y Pérez-Martín, Jorge . (2021) Cost-effectiveness analysis with unordered decisions. Artificial Intelligence in Medicine

Ficheros (Some files may be inaccessible until you login with your e-spacio credentials)
Nombre Descripción Tipo MIME Size
Diez_Vegas_Francisco_Javier_unordered_decisions.pdf Diez Vegas_Francisco Javier_unordered decisions.pdf application/pdf 701.92KB

Título Cost-effectiveness analysis with unordered decisions
Autor(es) Díez, Francisco Javier
Luque, Manuel
Arias, Manuel
Pérez-Martín, Jorge
Materia(s) Ingeniería Informática
Abstract Introduction Cost-effectiveness analysis (CEA) is used increasingly in medicine to determine whether the health benefit of an intervention is worth the economic cost. Decision trees, the standard decision modeling technique for non-temporal domains, can only perform CEAs for very small problems. Influence diagrams can model much larger problems, but only when the decisions are totally ordered. Objective To develop a CEA method for problems with unordered or partially ordered decisions, such as finding the optimal sequence of tests for diagnosing a disease. Methods We explain how to model those problems using decision analysis networks (DANs), a new type of probabilistic graphical model, somewhat similar to Bayesian networks and influence diagrams. We present an algorithm for evaluating DANs with two criteria, cost and effectiveness, and perform some experiments to study its computational efficiency. We illustrate the representation framework and the algorithm using a hypothetical example involving two therapies and several tests and then present a DAN for a real-world problem, the mediastinal staging of non-small cell lung cancer. Results The evaluation of a DAN with two criteria, cost and effectiveness, returns a set of intervals for the willingness to pay, separated by incremental cost-effectiveness ratios (ICERs). The cost, the effectiveness, and the optimal intervention are specific for each interval, i.e., they depend on the willingness to pay. Conclusion Problems involving several unordered decisions can be modeled with DANs and evaluated in a reasonable amount of time. OpenMarkov, an open-source software tool developed by our research group, can be used to build the models and evaluate them using a graphical user interface.
Palabras clave Cost-effectiveness analysis
Decision trees
Probabilistic graphical models
Influence diagrams
Decision analysis networks
Editor(es) Elsevier
Fecha 2021-07
Formato application/pdf
Identificador bibliuned:95-Fjdiez-0002
e-spacio.uned.es/fez/view/bibliuned:95-Fjdiez-0002
DOI - identifier 10.1016/j.artmed.2021.102064
ISSN - identifier 1873-2860
Nombre de la revista Artificial Intelligence in Medicine
Número de Volumen 117
Publicado en la Revista Artificial Intelligence in Medicine
Idioma eng
Versión de la publicación acceptedVersion
Tipo de recurso Article
Derechos de acceso y licencia http://creativecommons.org/licenses/by-nc-nd/4.0
info:eu-repo/semantics/openAccess
Tipo de acceso Acceso abierto
Notas adicionales This is an Accepted Manuscript of an article published by Elsevier in Artificial Intelligence in Medicine, available at: https://doi.org/10.1016/j.artmed.2021.102064
Notas adicionales Este es el manuscrito aceptado del artículo publicado por Elsevier en Artificial Intelligence in Medicine, disponible en línea: https://doi.org/10.1016/j.artmed.2021.102064

 
Versiones
Versión Tipo de filtro
Contador de citas: Google Scholar Search Google Scholar
Estadísticas de acceso: 37 Visitas, 15 Descargas  -  Estadísticas en detalle
Creado: Wed, 07 Feb 2024, 02:56:11 CET