Abstract

Despite the massive distribution of different vaccines globally, the current pandemic has revealed the crucial need for an efficient treatment against COVID-19. Meta-analyses have historically been extremely useful to determine treatment efficacy but recent debates about the use of hydroxychloroquine for COVID-19 patients resulted in contradictory meta-analytical results. Different factors during the COVID-19 pandemic have impacted key features of conducting a good meta-analysis. Some meta-analyses did not evaluate or treat substantial heterogeneity (I2 > 75%); others did not include additional analysis for publication bias; none checked for evidence of p–hacking in the primary studies nor used recent methods (i.e., p-curve or p-uniform) to estimate the average population-size effect. These inconsistencies may contribute to contradictory results in the research evaluating COVID-19 treatments. A prominent example of this is the use of hydroxychloroquine, where some studies reported a large positive effect, whereas others indicated no significant effect or even increased mortality when hydroxychloroquine was used with the antibiotic azithromycin. In this paper, we first recall the benefits and fundamental steps of good quality meta-analysis. Then, we examine various meta-analyses on hydroxychloroquine treatments for COVID-19 patients that led to contradictory results and causes for this discrepancy. We then highlight recent tools that contribute to evaluate publication bias and p-hacking (i.e., p-curve, p-uniform) and conclude by making technical recommendations that meta-analyses should follow even during extreme global events such as a pandemic.

Highlights

  • The 2020 COVID-19 pandemic has highlighted the urgent need for the development and administration of a new treatment for COVID-19

  • A prominent example of this is the use of hydroxychloroquine (HCQ), where some studies reported a large protective effect, whereas others indicated no significant effect or even increased mortality when HCQ was administered with the antibiotic azithromycin

  • At the beginning of the pandemic, preliminary studies [18,19,20] suggested that HCQ might have a positive effect on the treatment of COVID-19 patients. This led the U.S Food and Drug Administration (FDA) to issue an emergency-use (EUA) authorization on March 28, 2020 allowing for HCQ sulfate and CQ phosphate to be donated to the Strategic National Stockpile for use in hospitalized COVID-19 patients

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Summary

Introduction

The 2020 COVID-19 pandemic has highlighted the urgent need for the development and administration of a new treatment for COVID-19. Meta-analysis is an important tool to determine the effectiveness of COVID-19 treatments, but it is essential that the strength of evidence be maintained by adhering to all components of Keeping Meta-Analyses Hygienic the methodology. Some meta-analyses did not evaluate publication bias, nor treat substantial heterogeneity (I2 > 75%); none checked for evidence of p–hacking in the primary studies nor used recent techniques (i.e., p-curve or p-uniform) to estimate average population-size effect. Journals greatly favor publishing significant findings in comparison to non-significant findings, resulting in publication bias which can overestimate effect sizes (the strength of the relationship between two variables). These discrepancies may contribute to opposing results in the research evaluating COVID-19 treatments. A prominent example of this is the use of hydroxychloroquine (HCQ), where some studies reported a large protective effect, whereas others indicated no significant effect or even increased mortality when HCQ was administered with the antibiotic azithromycin

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