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GRADE guidelines: 18. How ROBINS-I and other tools to assess risk of bias in nonrandomized studies should be used to rate the certainty of a body of evidence

Schünemann, Holger J. and Cuello, Carlos and Akl, Elie A. and Mustafa, Reem A. and Meerpohl, Jörg J. and Thayer, Kris and Morgan, Rebecca L. and Gartlehner, Gerald and Kunz, Regina and Katikireddi, S. Vittal and Sterne, Jonathan and Higgins, Julian Pt and Guyatt, Gordon and Kunz, Regina. (2018) GRADE guidelines: 18. How ROBINS-I and other tools to assess risk of bias in nonrandomized studies should be used to rate the certainty of a body of evidence. Journal of clinical epidemiology, 111. pp. 105-114.

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Official URL: https://edoc.unibas.ch/74737/

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Abstract

To provide guidance on how systematic review authors, guideline developers, and health technology assessment practitioners should approach the use of the risk of bias in nonrandomized studies of interventions (ROBINS-I) tool as a part of GRADE's certainty rating process.; The study design and setting comprised iterative discussions, testing in systematic reviews, and presentation at GRADE working group meetings with feedback from the GRADE working group.; We describe where to start the initial assessment of a body of evidence with the use of ROBINS-I and where one would anticipate the final rating would end up. The GRADE accounted for issues that mitigate concerns about confounding and selection bias by introducing the upgrading domains: large effects, dose-effect relations, and when plausible residual confounders or other biases increase certainty. They will need to be considered in an assessment of a body of evidence when using ROBINS-I.; The use of ROBINS-I in GRADE assessments may allow for a better comparison of evidence from randomized controlled trials (RCTs) and nonrandomized studies (NRSs) because they are placed on a common metric for risk of bias. Challenges remain, including appropriate presentation of evidence from RCTs and NRSs for decision-making and how to optimally integrate RCTs and NRSs in an evidence assessment.
Faculties and Departments:03 Faculty of Medicine > Bereich Medizinische Fächer (Klinik) > Versicherungsmedizin > Versicherungsmedizin (Kunz)
03 Faculty of Medicine > Departement Klinische Forschung > Bereich Medizinische Fächer (Klinik) > Versicherungsmedizin > Versicherungsmedizin (Kunz)
UniBasel Contributors:Kunz, Regina
Item Type:Article, refereed
Article Subtype:Research Article
ISSN:1878-5921
Note:Publication type according to Uni Basel Research Database: Journal article
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Last Modified:02 Apr 2020 17:23
Deposited On:02 Apr 2020 17:23

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