» Articles » PMID: 23374036

Cost-effectiveness of a Novel E-health Depression Service

Overview
Date 2013 Feb 5
PMID 23374036
Citations 8
Authors
Affiliations
Soon will be listed here.
Abstract

Objectives: A recent trial assessed feasibility of an e-health service (" Improvehealth.eu ") to support depression care and reported positive outcomes. Our objective was to examine cost-effectiveness of the Improvehealth.eu service. A baseline model was used to evaluate cost and effects of the intervention. Given the high uncertainty in the input space, a series of alternative scenarios were evaluated to challenge the result. The aim was to find if conservative or even pessimistic estimates and assumptions could result in a change of the cost-effectiveness from the baseline model.

Materials And Methods: A probabilistic depression model combined with bootstrapping was built and populated with data from the literature and from the pilot efficacy trial of the e-health service. The core of the model was a stochastic mapping function that translated depression-specific outcomes to quality-adjusted life years. Correlated sampling was used to obtain unbiased and consistent piecewise linear transformation of Beck Depression Inventory scores to utilities. The results are shown as cost-effectiveness acceptability curves with value of information data. An extreme scenario analysis was then performed to deal with parameter, structural, and modeling uncertainty.

Results: Cost-effectiveness of the e-health service was favorable because of low cost and high efficacy of the intervention. Apart from the most pessimistic one, none of the 13 alternative scenarios changed the preferred alternative.

Conclusions: Improvehealth.eu is cost-effective relative to usual care, given the available efficacy data. Results of the health economic evaluation were robust to alternative assumptions, despite considerable uncertainty in input data.

Citing Articles

Digital interventions in mental health: evidence syntheses and economic modelling.

Gega L, Jankovic D, Saramago P, Marshall D, Dawson S, Brabyn S Health Technol Assess. 2022; 26(1):1-182.

PMID: 35048909 PMC: 8958412. DOI: 10.3310/RCTI6942.


Determining if Telehealth Can Reduce Health System Costs: Scoping Review.

Snoswell C, Taylor M, Comans T, Smith A, Gray L, Caffery L J Med Internet Res. 2020; 22(10):e17298.

PMID: 33074157 PMC: 7605980. DOI: 10.2196/17298.


Systematic Review and Critique of Methods for Economic Evaluation of Digital Mental Health Interventions.

Jankovic D, Bojke L, Marshall D, Goncalves P, Churchill R, Melton H Appl Health Econ Health Policy. 2020; 19(1):17-27.

PMID: 32803521 DOI: 10.1007/s40258-020-00607-3.


Model-Based Economic Evaluation of Treatments for Depression: A Systematic Literature Review.

Kolovos S, Bosmans J, Riper H, Chevreul K, Coupe V, Van Tulder M Pharmacoecon Open. 2018; 1(3):149-165.

PMID: 29441493 PMC: 5691837. DOI: 10.1007/s41669-017-0014-7.


Telepsychiatry as an Economically Better Model for Reaching the Unreached: A Retrospective Report from South India.

Moirangthem S, Rao S, Kumar C, Narayana M, Raviprakash N, Math S Indian J Psychol Med. 2017; 39(3):271-275.

PMID: 28615759 PMC: 5461835. DOI: 10.4103/IJPSYM.IJPSYM_441_16.