In these studies where intervention and causality are tested, data precision and statistical homogeneity of the groups are central to the analysis.
- Randomized Controlled Trials (RCT): Starting from the process of randomly assigning participants to groups, we analyze the effectiveness of the intervention with the highest statistical power.
- Pre-Test / Post-Test Designs: We model pre- and post-intervention changes in a temporal dimension through repeated measures (Repeated Measures ANOVA or Mixed Design ANOVA).
- Biostatistical Parameters: We report Relative Risk (RR), Odds Ratio (OR), Sensitivity, and Specificity coefficients, which are vital in clinical studies, alongside their confidence intervals (95% CI).
- Does the independent variable (intervention) have a time-invariant main effect?
- Is there a statistically significant interaction effect between time and group variables?
Beyond statistical significance (p < 0.05), it provides an evidence-based presentation of the intervention's effect size. It enhances methodological validity by minimizing repeated measurement errors that may arise in time series data.