Literature DB >> 9315426

The relationship between study design, results, and reporting of randomized clinical trials of HIV infection.

J P Ioannidis1, J C Cappelleri, H S Sacks, J Lau.   

Abstract

We examined whether the study design of randomized clinical trials for medications against human immunodeficiency virus (HIV) may affect the results and whether the outcomes of these trials affect reporting and publication. We used a database of 71 published randomized HIV-related drug efficacy trials and considered the following study design factors: endpoint definition and method of analysis, masked design, sample size, and duration of follow-up. Large variation was noted in the methods of analysis for surrogate endpoints. Often statistical significance for a surrogate endpoint was not associated with statistical significance for the clinical endpoint or for survival in the same trial, although disagreements in the direction of the treatment effect for surrogate endpoints and survival within individual trials were uncommon. Open-label design seemed to affect the magnitude of the treatment effect for two treatments. The magnitude of the treatment effect in trials of zidovudine monotherapy was inversely related to their sample size, but this probably reflected the confounding effect of longer duration of follow-up in large trials (with a resulting loss of efficacy) rather than publication bias. There was, however, evidence for potential bias in reporting and publication of HIV-related trials. Meta-analyses of published trials for specific treatments demonstrated a sizable treatment benefit for all the examined medications regardless of whether these medications were officially approved, controversial, or abandoned, raising concerns about either publication bias or unjustifiable rejection of potentially useful medications. Compared with trials published in specialized journals, trials published in journals of wide readership were larger (p = 0.001) and 4.4 times more likely to report "positive" results (p = 0.01). We identified several examples of trials with "negative" results that have remained unpublished for a long time. In conclusion, study design factors may have an impact on the magnitude and significance of the treatment effect in HIV-related trials. Bias in reporting can further affect the information that these studies provide.

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Year:  1997        PMID: 9315426     DOI: 10.1016/s0197-2456(97)00097-4

Source DB:  PubMed          Journal:  Control Clin Trials        ISSN: 0197-2456


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