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OPC

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Title: OPC Criteria Author: George Woodworth Last modified by: George Woodworth Created Date: 9/28/2006 4:12:45 PM Document presentation format: On-screen Show – PowerPoint PPT presentation

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Title: OPC


1
OPC
  • Koustenis, Breiter

2
General Comments
  • Surrogate for Control Group
  • Benchmark for Minimally Acceptable Values
  • Not a Control Group
  • Driven by Historical Data
  • Requires Pooling of Different Investigations

3
(continued)
  • Periodical Re-Evaluation and Updating the OPCs
  • Policy not yet formalized
  • Specific Guidance on Methodology to Derive an OPC
  • Is urgently needed

4
Bayesian Issues in Developing OPC
  • Objective means?
  • Derived from (conditionally?) exchangeable
    studies
  • Non-informative hyper-prior
  • For new Bayesian trials should the OPC be
    expressed as a (presumably tight) posterior
    distribution rather than a fixed number?
  • E.g. logit(opc) normal(?,?), etc

5
Does OPC Preempt an Informative Prior?
  • An objective informative prior would be derived
    from some of the same trials used to set the OPC.
  • This could be dealt with by computing the joint
    posterior distribution of opc and pnew. But this
    would be extremely burdensome to implement for
    anything but an in-house OPC (Breiter).
  • A non-informative prior might be least
    burdensome.

6
Bayesian Endpoints
  • Superiority
  • P(pnew lt opc New Data)
  • Non-inferiority
  • P(pnew lt opc D New Data)
  • PP(pnew lt kopc New Data)

7
OPC as an Agreed upon Standard
  • Historical Data ???
  • Are evaluated to produce an agreed upon OPC as a
    fixed number with no uncertainty.
  • Can I used some of these same data to develop an
    informative prior?
  • Probably yes but needs work. The issue is what
    claim will be made for a successful device trial.

8
The prior depends on the Claim
  • Claim The complication rate (say) of the new
    device is not larger than (say) the median of
    comparable devices D.
  • If the new device is exchangeable with a subset
    of comparable devices then the correct prior
    for the new device is the joint distribution of
    (pnew, opc) prior to the new data.
  • If the new device is not exchangeable with any
    comparable devices, then a non-informative prior
    should be used.

9
(continued)
  • Claim The complication rate of the new device
    is not greater than a given number (opc D).
  • The prior can be based on device trials that are
    considered exchangeable with the planned trial
    (e.g. in house).

10
Logic Chopping?
  • Not necessarily. Consider
  • The average male U of IA professor is taller
    than the average male professor.
  • vs
  • The average male U of IA professor is taller than
    511
  • How you or I arrived at the 511 is not relevant
    to the posterior probability.

11
But perhaps thats a bit disingenuous
  • The regulatory goal is clearly to set an OPC that
    will not permit the reduction of average safety
    or efficacy of a class of devices.
  • Of necessity, it has to be related to an estimate
    of some sort of average.
  • So a claim of superiority or non-inferiority to
    an opc is clearly made at least indirectly with
    reference to a control

12
Would it Make sense to Express the OPC as a PD?
  • If the OPC is derived from a hierarchical
    analysis of exchangeable device trials it would
    be possible to compute the predictive
    distribution of xnew.
  • Could inferiority (superiority) be defined as the
    observed xnew being below the 5th (above the
    95th) percentile of the predictive distribution?

13
Poolability
  • Roseann White

14
Binary Response Setup
  • i arm (T or C) j center k Ss
  • Response variable yijk bernoulli(pij)
  • logit(pCj) gj logit(pTj) gj t dj
  • Primary t gt -D
  • Secondary djs are within clinical tolerance

15
Specify Secondary Goal ?
  • If the difference between the treatment group
    varies more than twice the non-inferiority
    margin D
  • Possible interpretations
  • Random CxT interaction sd lt 2D
  • Multiple comparisons max dj dk lt 2D

16
(continued)
  • Modify ... Liu et. al...
  • Center j is non-inferior t dj gt -kt
  • All centers must be non-inferior?
  • ID the inferior centers?

17
Why Bootstrap Resample?
  • To increase n of Ss in clusters? --- Probably
    invalid
  • To generate a better approximation of the null
    sampling distribution? --- OK, but what are the
    details? Do you combine the two arms and
    resample?
  • Why not use random-effects Glimmix if you want to
    stick to frequentist methods.

18
Bayesian Analysis
  • Ad-hoc pooling is not necessary
  • Can produce the posterior distribution of any
    function of the parameters.
  • Can use non-informative hyper-priors, so is
    objective data driven.
  • Will have the best frequentist operating
    characteristics (which could be calculated by
    simulation.)

19
Bayesian Setup
  • Define tj t dj (logit of p in the T arm)
  • (gj, tj) iid N((mg,mt),S)
  • m, S have near non-informative priors
  • Primary goal P(mt gt -D Data) (or t-bar)
  • Secondary goal(s) ??
  • P(st lt 2D Data) (or st )
  • For each (j,j) P(tj tj lt 2D Data)
  • For each j P(tj mt lt 2D Data)
  • For each j P(tj gt -kmt Data)

20
Bayes Could Use the Original Metric
  • pCj 1/(1exp(-gj)) pTj 1/(1exp(-gj-tj))
  • pC 1/(1exp(-mg)) pT 1/(1exp(-mg-mt))
  • Primary P(pT pC gt D Data)
  • Secondary
  • e.g. P(pTj pCj gt k(pT pC ) Data)
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