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GRADE Guidelines 30: the GRADE approach to assessing the certainty of modeled evidence-An overview in the context of health decision-making.

Authors :
Brozek JL
Canelo-Aybar C
Akl EA
Bowen JM
Bucher J
Chiu WA
Cronin M
Djulbegovic B
Falavigna M
Guyatt GH
Gordon AA
Hilton Boon M
Hutubessy RCW
Joore MA
Katikireddi V
LaKind J
Langendam M
Manja V
Magnuson K
Mathioudakis AG
Meerpohl J
Mertz D
Mezencev R
Morgan R
Morgano GP
Mustafa R
O'Flaherty M
Patlewicz G
Riva JJ
Posso M
Rooney A
Schlosser PM
Schwartz L
Shemilt I
Tarride JE
Thayer KA
Tsaioun K
Vale L
Wambaugh J
Wignall J
Williams A
Xie F
Zhang Y
Schünemann HJ
Source :
Journal of clinical epidemiology [J Clin Epidemiol] 2021 Jan; Vol. 129, pp. 138-150. Date of Electronic Publication: 2020 Sep 24.
Publication Year :
2021

Abstract

Objectives: The objective of the study is to present the Grading of Recommendations Assessment, Development, and Evaluation (GRADE) conceptual approach to the assessment of certainty of evidence from modeling studies (i.e., certainty associated with model outputs).<br />Study Design and Setting: Expert consultations and an international multidisciplinary workshop informed development of a conceptual approach to assessing the certainty of evidence from models within the context of systematic reviews, health technology assessments, and health care decisions. The discussions also clarified selected concepts and terminology used in the GRADE approach and by the modeling community. Feedback from experts in a broad range of modeling and health care disciplines addressed the content validity of the approach.<br />Results: Workshop participants agreed that the domains determining the certainty of evidence previously identified in the GRADE approach (risk of bias, indirectness, inconsistency, imprecision, reporting bias, magnitude of an effect, dose-response relation, and the direction of residual confounding) also apply when assessing the certainty of evidence from models. The assessment depends on the nature of model inputs and the model itself and on whether one is evaluating evidence from a single model or multiple models. We propose a framework for selecting the best available evidence from models: 1) developing de novo, a model specific to the situation of interest, 2) identifying an existing model, the outputs of which provide the highest certainty evidence for the situation of interest, either "off-the-shelf" or after adaptation, and 3) using outputs from multiple models. We also present a summary of preferred terminology to facilitate communication among modeling and health care disciplines.<br />Conclusion: This conceptual GRADE approach provides a framework for using evidence from models in health decision-making and the assessment of certainty of evidence from a model or models. The GRADE Working Group and the modeling community are currently developing the detailed methods and related guidance for assessing specific domains determining the certainty of evidence from models across health care-related disciplines (e.g., therapeutic decision-making, toxicology, environmental health, and health economics).<br /> (Copyright © 2020. Published by Elsevier Inc.)

Details

Language :
English
ISSN :
1878-5921
Volume :
129
Database :
MEDLINE
Journal :
Journal of clinical epidemiology
Publication Type :
Academic Journal
Accession number :
32980429
Full Text :
https://doi.org/10.1016/j.jclinepi.2020.09.018