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An Alternative to Data Imputation in Analgesic Clinical Trials David Petullo, Thomas Permutt, Feng Li Division of Biometrics II, Office of Biostatistics.

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Presentation on theme: "An Alternative to Data Imputation in Analgesic Clinical Trials David Petullo, Thomas Permutt, Feng Li Division of Biometrics II, Office of Biostatistics."— Presentation transcript:

1 An Alternative to Data Imputation in Analgesic Clinical Trials David Petullo, Thomas Permutt, Feng Li Division of Biometrics II, Office of Biostatistics Office of Translational Sciences, Center for Drug Evaluation and Research U.S. Food & Drug Administration

2 2 Chronic Pain Trial - Not Missing Data If patient discontinues study drug, the pain score at planned endpoint becomes irrelevant Completers with bad outcomes All considered equally bad outcomes You have an outcome just not a numerical score www.fda.gov

3 3 Continuous Responder Curve www.fda.gov

4 4 Continuous Responder Curve www.fda.gov

5 5 Continuous Responder Curve www.fda.gov

6 6 Why Half? www.fda.gov Doesn’t have to be half Can be adaptive – Trim only dropouts for the group with more dropouts – Dropouts plus others for the other group to make fractions equal Why isn’t this completers analysis?

7 7 Trim Same Fraction www.fda.gov If equal fractions – It is difference in completer means If active has more completers – Bonus: compare your best completers to all placebo completers – Because more completers is good drug effect If placebo has more completers – Test drug not “penalized” or disqualified – But you picked your best – So it’s fair to compare to placebo best – This is an insoluble problem with MAR methods

8 8 Permutation Test www.fda.gov Calculate difference in trimmed means Rerandomize and recalculate, many times Use rerandomization distribution as reference See how far real value is in tail of reference distribution Exact, randomization-based test – That’s easy, even completers analysis can do that – But based on interpretable statistic Especially in the case of more dropouts in the active group

9 9 Case Study 1 www.fda.gov

10 10 Lyrica- Efficacy www.fda.gov Indication: management of pain associated with spinal cord injury (SCI) Two randomized, multi-center, placebo-controlled, double-blind trials – Study 1107: 4-week dose escalation, 12-week fixed, 1-week taper – Study 125: 3-week dose escalation, 9-week fixed

11 11 Study 1107 - Efficacy www.fda.gov Primary efficacy parameter was duration adjusted average change (DAAC) – A significant result on DAAC by itself would not support efficacy – Must use a conservative imputation strategy

12 12 Disposition www.fda.gov

13 13 Results www.fda.gov

14 14 Difference in Better Half www.fda.gov Mean change from baseline pain at Week 16

15 15 Permutation Test www.fda.gov

16 16 Case 1: Summary www.fda.gov Discontinuations – 15% placebo, 17% active BOCF and mBOCF – treatment effect Better Half estimand – treatment effect

17 17 Case Study 2 www.fda.gov

18 18 Drug X ( approved 2010) www.fda.gov Drug X Management of pain severe enough to require daily, around the clock, long term, opioid treatment Two studies provided evidence of efficacy Study 1: DB, R, PC, AC study in subjects with moderate to severe chronic low back pain Study 2: DB, R, PC, AC study in subjects with OA of the knee

19 19 Study 2: Efficacy www.fda.gov Change from baseline to the end of the maintenance period in the average pain Pain measured using 11-point NRS scale during the past 12- hours Analysis ANCOVA with treatment, baseline pain score and pooled center Analysis population was all randomized subjects that received at least 1 dose of study drug Missing data imputed using LOCF

20 20 Disposition www.fda.gov Active

21 21 Results www.fda.gov Active

22 22 Sensitivity Analyses Active

23 23 Difference in Better Half www.fda.gov Average change from baseline pain at Week 12

24 24 Permutation Test www.fda.gov

25 25 Case 2: Summary www.fda.gov Discontinuations – 39% placebo, 43% active LOCF –treatment effect BOCF and mBOCF – no treatment effect Better Half – no treatment effect

26 26 Conclusion www.fda.gov Complete observations – just not numerical Exact test for hypothesis of no drug effect All randomized patients Accounts for – Excess placebo dropouts for lack of efficacy (bonus) – Excess active dropouts for toxicity Guaranteed fair comparison in an adherent subset

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