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Statistical significance alone is no longer sufficient to support regulatory claims. Modern regulatory review requires careful interpretation of effect size, confidence intervals, robustness, and clinical relevance. This webinar provides a technically grounded, example-driven approach to interpreting p-values and statistical results in regulatory submissions.

For decades, statistical interpretation in regulatory submissions has centered on whether a p-value crosses a fixed threshold. However, regulatory agencies increasingly emphasize effect magnitude, precision, clinical relevance, and methodological robustness when evaluating evidence. Over-reliance on p-values can lead to weak justifications, regulatory questions, or delayed approvals.

This technically grounded session examines what p-values measure mathematically, why they are limited when used alone, and how confidence intervals, effect sizes, and sensitivity analyses strengthen evidentiary interpretation. Through worked examples and step-by-step analysis, participants will learn how to critically evaluate statistical findings to ensure they are defensible in regulatory decision-making.
 


  • P-value interpretation
  • Hypothesis testing in regulatory submissions
  • Statistical significance vs clinical significance
  • Confidence intervals in regulatory decision-making
  • Effect size interpretation
  • Regulatory statistical review
  • ICH E9 R1 estimand guidance
  • FDA statistical expectations
  • Non-inferiority margin justification
  • Multiplicity in clinical trials
  • Sensitivity analysis in submissions
  • Regulatory defensibility of statistical evidence
  • Benefit–risk statistical evaluation
  • Type I and Type II error in regulatory context
  • Clinical trial statistical interpretation
  • Pharmacovigilance statistical analysis
  • QA statistical review checklist
  • Regulatory submission statistical standards
  • Precision and uncertainty in clinical research
  • Statistical robustness in regulatory decisions

  • Logic of hypothesis testing
  • What a p-value measures — and its limitations
  • Relationship between p-values and confidence intervals
  • Effect size interpretation in regulatory context
  • Precision and uncertainty assessment
  • Large-sample vs small-sample interpretation challenges
  • Sensitivity analyses and robustness evaluation
  • Clinical vs statistical vs regulatory significance
  • Practical checklist for reviewing statistical evidence

Many regulatory professionals assume that achieving p < 0.05 is enough to support a claim. In reality, regulators frequently question whether results are clinically meaningful, precisely estimated, and methodologically robust.
Do you know how to interpret a statistically significant result with a trivial effect size? Can you defend a non-significant result when confidence intervals suggest potential benefit? Are your non-inferiority margins properly justified?
Misinterpreting statistical evidence can weaken submissions and invite regulatory scrutiny. This training equips QA and Regulatory professionals with a structured, technical framework to interpret statistical results beyond simple significance testing — reducing risk and strengthening regulatory defensibility.

  • Regulatory Affairs Directors and Managers
  • Quality Assurance Directors and Managers
  • Compliance Officers
  • Clinical Development Leaders
  • Medical Affairs Professionals
  • Biostatistics and Data Science Leaders
  • Regulatory Submission Strategists
  • Pharmacovigilance Managers

Elaine Eisenbeisz is a private practice statistician and owner of Omega Statistics, a statistical consulting firm based in Southern California.
Elaine earned her B.S. in Statistics at UC Riverside and received her Master’s Certification in Applied Statistics from Texas A&M.
Elaine is a member in good standing with the American Statistical Association and a member of the Mensa High IQ Society. Omega Statistics holds an A+ rating with the Better Business Bureau.

Elaine has designed the methodology and analyzes data for numerous studies in the clinical, biotech, and health care fields. Elaine has also works as a contract statistician with private researchers and biotech start-ups as well as with larger companies such as Allergan, Nutrisystem and Rio Tinto Minerals. Throughout her tenure as a private practice statistician, she has published work with researchers and colleagues in peer-reviewed journals.

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