Estimating the true effectiveness of smoking cessation interventions under variable comparator conditions: A systematic review and meta-regression

Jannis Kraiss, Wolfgang Viechtbauer, Nicola Black, Marie Johnston, Jamie Hartmann-Boyce, Maarten Eisma, Neza Javornik, Alessio Bricca, Susan Michie, Robert West, Marijn de Bruin* (Corresponding Author)

*Corresponding author for this work

Research output: Contribution to journalReview articlepeer-review

2 Citations (Scopus)

Abstract

BACKGROUND AND AIMS: Behavioural smoking cessation trials have used comparators that vary considerably between trials. Although some previous meta-analyses made attempts to account for variability in comparators, these relied on subsets of trials and incomplete data on comparators. This study aimed to estimate the relative effectiveness of (individual) smoking cessation interventions while accounting for variability in comparators using comprehensive data on experimental and comparator interventions.

METHODS: A systematic review and meta-regression was conducted including 172 randomised controlled trials with at least 6 months follow-up and biochemically verified smoking cessation. Authors were contacted to obtain unpublished information. This information was coded in terms of active content and attributes of the study population and methods. Meta-regression was used to create a model predicting smoking cessation outcomes. This model was used to re-estimate intervention effects, as if all interventions have been evaluated against the same comparators. Outcome measures included log odds of smoking cessation for the meta-regression models and smoking cessation differences and ratios to compare relative effectiveness.

RESULTS: The meta-regression model predicted smoking cessation rates well (pseudo R 2  = 0.44). Standardising the comparator had substantial impact on conclusions regarding the (relative) effectiveness of trials and types of intervention. Compared with a 'no support comparator', self-help was 1.33 times (95% CI = 1.16-1.49), brief physician advice 1.61 times (95% CI = 1.31-1.90), nurse individual counselling 1.76 times (95% CI = 1.62-1.90), psychologist individual counselling 2.04 times (95% CI = 1.95-2.15) and group psychologist interventions 2.06 times (95% CI = 1.92-2.20) more effective. Notably, more elaborate experimental interventions (e.g. psychologist counselling) were typically compared with more elaborate comparators, masking their effectiveness.

CONCLUSIONS: Comparator variability and underreporting of comparators obscures the interpretation, comparison and generalisability of behavioural smoking cessation trials. Comparator variability should, therefore, be taken into account when interpreting and synthesising evidence from trials. Otherwise, policymakers, practitioners and researchers may draw incorrect conclusions about the (cost) effectiveness of smoking cessation interventions and their constituent components.

Original languageEnglish
Pages (from-to)1835-1850
Number of pages16
JournalAddiction
Volume118
Issue number10
Early online date2 May 2023
DOIs
Publication statusPublished - Oct 2023

Bibliographical note

ACKNOWLEDGEMENTS
This work was funded by Cancer Research UK (application number C50862/A18446). The systematic review protocol was previously peer-reviewed by Cancer Research UK as part of the funding process. The funder had no role in protocol design, decision to publish, or preparation of the manuscript. We thank the authors of included studies who responded to our requests for intervention material. We also thank the members of our advisory board panels who provided valuable input into the broader study design.

Data Availability Statement


Data is available on the OSF website of this project (https://osf.io/23hfv/).

Keywords

  • behavioural interventions
  • comparators
  • effectiveness
  • meta-regression
  • randomised controlled trial
  • smoking cessation

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