The issues discussed in this paper are clearly not only prevalent in neuroscience… I know that this is a 2013 paper and hopefully the situation has improved, but allow me to seriously doubt it. Nevertheless, I decided to post it because of the general nature of the problems and also because this is an easy to read paper.

Facts

  • A study with low statistical power has a reduced chance of detecting a true effect, but it is less well appreciated that low power also reduces the likelihood that a statistically significant result reflects a true effect.
  • Authors of this paper show that the average statistical power of studies in the neurosciences is very low.
  • As a consequence:
    • Overestimation of reported effect size
    • Low reproducibility of results
    • Unreliable, inefficient and wasteful research
    • Ethical issues

Improving reproducibility in science is a key priority and requires attention to well-established but often ignored methodological principles.

recommendations for researchers
Recommendations for researchers
@See reference

Conclusions

  • In order to work around these issues, statistical thinking must be integrated into the planning of studies/trials/experiments.
  • Research scientists, reviewers must be trained in statistics.
  • Changes should be embraced to make the scientific method robust again
    • Requiring ≥ 80% power results in more reliable results and replicable experiments; blinded studies, determine minimal detectable difference and biological relevance in advance
    • Eliminate positivity bias – negative results need to be published
    • Embrace a more collaborative scientific model
    • The current system is in ‘over-drive’, publish fewer, but more transparent, robust and reproducible studies

Reference

Button, K., Ioannidis, J., Mokrysz, C. et al. Power failure: why small sample size undermines the reliability of neuroscience. Nat Rev Neurosci 14, 365–376 (2013). https://doi.org/10.1038/nrn3475