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Potential impact of missing outcome data on treatment effects in systematic reviews: imputation study

OBJECTIVE: To assess the risk of bias associated with missing outcome data in systematic reviews. DESIGN: Imputation study. SETTING: Systematic reviews. POPULATION: 100 systematic reviews that included a group level meta-analysis with a statistically significant effect on a patient important dichoto...

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Autores principales: Kahale, Lara A, Khamis, Assem M, Diab, Batoul, Chang, Yaping, Lopes, Luciane Cruz, Agarwal, Arnav, Li, Ling, Mustafa, Reem A, Koujanian, Serge, Waziry, Reem, Busse, Jason W, Dakik, Abeer, Schünemann, Holger J, Hooft, Lotty, Scholten, Rob JPM, Guyatt, Gordon H, Akl, Elie A
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BMJ Publishing Group Ltd. 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7448113/
https://www.ncbi.nlm.nih.gov/pubmed/32847800
http://dx.doi.org/10.1136/bmj.m2898
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author Kahale, Lara A
Khamis, Assem M
Diab, Batoul
Chang, Yaping
Lopes, Luciane Cruz
Agarwal, Arnav
Li, Ling
Mustafa, Reem A
Koujanian, Serge
Waziry, Reem
Busse, Jason W
Dakik, Abeer
Schünemann, Holger J
Hooft, Lotty
Scholten, Rob JPM
Guyatt, Gordon H
Akl, Elie A
author_facet Kahale, Lara A
Khamis, Assem M
Diab, Batoul
Chang, Yaping
Lopes, Luciane Cruz
Agarwal, Arnav
Li, Ling
Mustafa, Reem A
Koujanian, Serge
Waziry, Reem
Busse, Jason W
Dakik, Abeer
Schünemann, Holger J
Hooft, Lotty
Scholten, Rob JPM
Guyatt, Gordon H
Akl, Elie A
author_sort Kahale, Lara A
collection PubMed
description OBJECTIVE: To assess the risk of bias associated with missing outcome data in systematic reviews. DESIGN: Imputation study. SETTING: Systematic reviews. POPULATION: 100 systematic reviews that included a group level meta-analysis with a statistically significant effect on a patient important dichotomous efficacy outcome. MAIN OUTCOME MEASURES: Median percentage change in the relative effect estimate when applying each of the following assumption (four commonly discussed but implausible assumptions (best case scenario, none had the event, all had the event, and worst case scenario) and four plausible assumptions for missing data based on the informative missingness odds ratio (IMOR) approach (IMOR 1.5 (least stringent), IMOR 2, IMOR 3, IMOR 5 (most stringent)); percentage of meta-analyses that crossed the threshold of the null effect for each method; and percentage of meta-analyses that qualitatively changed direction of effect for each method. Sensitivity analyses based on the eight different methods of handling missing data were conducted. RESULTS: 100 systematic reviews with 653 randomised controlled trials were included. When applying the implausible but commonly discussed assumptions, the median change in the relative effect estimate varied from 0% to 30.4%. The percentage of meta-analyses crossing the threshold of the null effect varied from 1% (best case scenario) to 60% (worst case scenario), and 26% changed direction with the worst case scenario. When applying the plausible assumptions, the median percentage change in relative effect estimate varied from 1.4% to 7.0%. The percentage of meta-analyses crossing the threshold of the null effect varied from 6% (IMOR 1.5) to 22% (IMOR 5) of meta-analyses, and 2% changed direction with the most stringent (IMOR 5). CONCLUSION: Even when applying plausible assumptions to the outcomes of participants with definite missing data, the average change in pooled relative effect estimate is substantive, and almost a quarter (22%) of meta-analyses crossed the threshold of the null effect. Systematic review authors should present the potential impact of missing outcome data on their effect estimates and use this to inform their overall GRADE (grading of recommendations assessment, development, and evaluation) ratings of risk of bias and their interpretation of the results.
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spelling pubmed-74481132020-09-02 Potential impact of missing outcome data on treatment effects in systematic reviews: imputation study Kahale, Lara A Khamis, Assem M Diab, Batoul Chang, Yaping Lopes, Luciane Cruz Agarwal, Arnav Li, Ling Mustafa, Reem A Koujanian, Serge Waziry, Reem Busse, Jason W Dakik, Abeer Schünemann, Holger J Hooft, Lotty Scholten, Rob JPM Guyatt, Gordon H Akl, Elie A BMJ Research OBJECTIVE: To assess the risk of bias associated with missing outcome data in systematic reviews. DESIGN: Imputation study. SETTING: Systematic reviews. POPULATION: 100 systematic reviews that included a group level meta-analysis with a statistically significant effect on a patient important dichotomous efficacy outcome. MAIN OUTCOME MEASURES: Median percentage change in the relative effect estimate when applying each of the following assumption (four commonly discussed but implausible assumptions (best case scenario, none had the event, all had the event, and worst case scenario) and four plausible assumptions for missing data based on the informative missingness odds ratio (IMOR) approach (IMOR 1.5 (least stringent), IMOR 2, IMOR 3, IMOR 5 (most stringent)); percentage of meta-analyses that crossed the threshold of the null effect for each method; and percentage of meta-analyses that qualitatively changed direction of effect for each method. Sensitivity analyses based on the eight different methods of handling missing data were conducted. RESULTS: 100 systematic reviews with 653 randomised controlled trials were included. When applying the implausible but commonly discussed assumptions, the median change in the relative effect estimate varied from 0% to 30.4%. The percentage of meta-analyses crossing the threshold of the null effect varied from 1% (best case scenario) to 60% (worst case scenario), and 26% changed direction with the worst case scenario. When applying the plausible assumptions, the median percentage change in relative effect estimate varied from 1.4% to 7.0%. The percentage of meta-analyses crossing the threshold of the null effect varied from 6% (IMOR 1.5) to 22% (IMOR 5) of meta-analyses, and 2% changed direction with the most stringent (IMOR 5). CONCLUSION: Even when applying plausible assumptions to the outcomes of participants with definite missing data, the average change in pooled relative effect estimate is substantive, and almost a quarter (22%) of meta-analyses crossed the threshold of the null effect. Systematic review authors should present the potential impact of missing outcome data on their effect estimates and use this to inform their overall GRADE (grading of recommendations assessment, development, and evaluation) ratings of risk of bias and their interpretation of the results. BMJ Publishing Group Ltd. 2020-08-26 /pmc/articles/PMC7448113/ /pubmed/32847800 http://dx.doi.org/10.1136/bmj.m2898 Text en © Author(s) (or their employer(s)) 2019. Re-use permitted under CC BY-NC. No commercial re-use. See rights and permissions. Published by BMJ. http://creativecommons.org/licenses/by-nc/4.0/This is an Open Access article distributed in accordance with the Creative Commons Attribution Non Commercial (CC BY-NC 4.0) license, which permits others to distribute, remix, adapt, build upon this work non-commercially, and license their derivative works on different terms, provided the original work is properly cited and the use is non-commercial. See: http://creativecommons.org/licenses/by-nc/4.0/.
spellingShingle Research
Kahale, Lara A
Khamis, Assem M
Diab, Batoul
Chang, Yaping
Lopes, Luciane Cruz
Agarwal, Arnav
Li, Ling
Mustafa, Reem A
Koujanian, Serge
Waziry, Reem
Busse, Jason W
Dakik, Abeer
Schünemann, Holger J
Hooft, Lotty
Scholten, Rob JPM
Guyatt, Gordon H
Akl, Elie A
Potential impact of missing outcome data on treatment effects in systematic reviews: imputation study
title Potential impact of missing outcome data on treatment effects in systematic reviews: imputation study
title_full Potential impact of missing outcome data on treatment effects in systematic reviews: imputation study
title_fullStr Potential impact of missing outcome data on treatment effects in systematic reviews: imputation study
title_full_unstemmed Potential impact of missing outcome data on treatment effects in systematic reviews: imputation study
title_short Potential impact of missing outcome data on treatment effects in systematic reviews: imputation study
title_sort potential impact of missing outcome data on treatment effects in systematic reviews: imputation study
topic Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7448113/
https://www.ncbi.nlm.nih.gov/pubmed/32847800
http://dx.doi.org/10.1136/bmj.m2898
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