Overestimation
Overestimation refers to the act of assigning greater value, effect, importance, or certainty to a finding or intervention than is justified by the available evidence.
Characteristics
- Reporting results with exaggerated effect sizes
- Presenting statistically significant but clinically trivial findings as meaningful
- Ignoring confidence intervals, sample limitations, or study design flaws
- Assuming an intervention is more effective than it truly is due to bias or methodological error
Common Causes
- Small sample sizes (→ inflated effect estimates)
- Selective reporting or publication bias
- Lack of blinding or randomization
- Inappropriate statistical methods (e.g., p-hacking)
Examples in Medical Research
- A pilot study claims “dramatic symptom reduction” based on a 10-patient sample
- Overinterpreting early subgroup analyses or interim data
- Drawing strong conclusions from observational associations without controlling for confounders
Why It Matters
- Leads to misinformed clinical decisions
- May result in harmful overuse of unproven treatments
- Fuels false expectations among clinicians, patients, and policymakers