On 2017 Apr 17, Regina El Dib commented:
In his comment, Dr. Hajek states that ‘in smoking cessation trials, drop-outs are classified as non-abstainers;. The approach to dealing with missing data in meta-analysis is differnet from that in trials. A survey of the methods literature identified four proposed approaches for dealing with missing outcome data when conducting a meta-analysis (https://www.ncbi.nlm.nih.gov/pubmed/26202162). All approaches recommended the use of a complete case analysis as the primary analysis. This is exactly how we conducted our meta-analysis (figure 5 in the published paper); the pooled relative ratio (RR) was 2.03 (95% CI 0.94 to 4.38) for smoking cessation with ENDS relative to ENNDS.
The same proposed approaches recommended additional sensitivity analyses using different imputation methods. The main purpose of these additional analyses is to assess the extent to which missing data may be biasing the findings of the primary analysis (https://www.ncbi.nlm.nih.gov/pubmed/23451162). Accordingly, we have conducted two sensitivity analyses respectively assuming that all participants with missing data had success or failure in smoking cessation. When assuming success, the pooled RR was 0.95 (95% CI 0.76 to 1.18, p=0.63) with ENDS relative to ENNDS; when assuming failure, the pooled RR was 2.27 (95% CI 1.04 to 4.95, p=0.04). This dramatic variation in the results when making different assumptions is clearly an indicator that the missingness of data is associated with a risk of bias, and that decreases our confidence in the results. We have already reflected that judgment in our risk of bias assessment of these two studies, in table 4 and figure 2; and in our assessment of the quality of evidence in table 7.
Even if we were going to consider the RR of 2.27 as the best effect estimate (i.e., assuming all those with missing data had failure with smoking cessation), the findings would not be supporting the effectiveness of e-cigarettes on smoking cessation. Indeed, the included trials do not address that question, and our review found no study comparing e-cigarettes to no e-cigarettes. The included trials compare two forms of e-cigarettes.
When assessing an intervention A (e.g., e-cigarettes) that has two types A1 (e.g., ENDS) and A2 (e.g., ENNDS), it would be important to first compare A (A1 and/or A2) to the standard intervention (e.g., no intervention or nicotine replacement therapy (NRT)), before comparing A1 to A2. If A1 and A2 are inferior to the standard intervention with A1 being less inferior than A2 (but still inferior to the standard intervention), focusing on the comparison of A1 to A2 (and ignoring the comparison to the standard intervention) will show that A1 is better than A2. That could also falsely suggest that at least A1 (and maybe A2) is favorable. Therefore, a recommendation of A1 vs. A2 should be considered only if A is already recommended over the standard intervention (i.e. A is non inferior to the standard intervention).
Dr. Hajek also criticizes the inclusion of studies that recruited smokers who used e-cigarettes in the past but continue to smoke. When discussing treatment and examining evidence, we refer to effectiveness (known as pragmatic; a treatment that works under real-world conditions). This includes (among other criteria) the inclusion all participants who have the condition of interest, regardless of their anticipated risk, responsiveness, comorbidities or past compliance. Therefore, the inclusion of studies that recruited smokers who used e-cigarettes in the past but continue to smoke had a role in portraying the impact of ENDS and ENNDS in cigarette smokers on long-term tobacco use.
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