Files
2025-11-29 17:58:28 +08:00

1.3 KiB

name, description, allowed-tools, version
name description allowed-tools version
sensitivity-analysis Conduct sensitivity analyses to test robustness of findings. Use when: (1) Testing assumption violations, (2) Meta-analysis robustness, (3) Handling missing data, (4) Examining outliers. Read, Write, Bash 1.0.0

Sensitivity Analysis Skill

Purpose

Test whether findings are robust to analytical decisions and assumptions.

Types of Sensitivity Analyses

1. Exclusion Analyses

  • Remove outliers
  • Remove high risk-of-bias studies
  • One-study-removed analysis

2. Analytical Decisions

  • Different statistical tests
  • Parametric vs non-parametric
  • Different transformations

3. Missing Data

  • Complete case analysis
  • Best-case scenario
  • Worst-case scenario
  • Multiple imputation

4. Measurement

  • Different outcome definitions
  • Different time points
  • Alternative scoring methods

Interpretation

Robust Findings:

  • Results consistent across analyses
  • Conclusions unchanged
  • High confidence

Sensitive Findings:

  • Results vary by decision
  • Interpret with caution
  • Report uncertainty

Example

"Results were robust to removal of the highest risk-of-bias study (d=0.48 vs d=0.52) and remained significant when using non-parametric tests (p=.002)."


Version: 1.0.0