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Sensitivity Analysis of Randomized Trials with Missing Data

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Title: Sensitivity Analysis of Randomized Trials with Missing Data


1
Sensitivity Analysis of Randomized Trials with
Missing Data
  • Daniel Scharfstein
  • Department of Biostatistics
  • Johns Hopkins University
  • dscharf_at_jhsph.edu

2
ACTG 175
  • ACTG 175 was a randomized, double bind trial
    designed to evaluate nucleoside monotherapy vs.
    combination therapy in HIV individuals with CD4
    counts between 200 and 500.
  • Participants were randomized to one of four
    treatments AZT, AZTddI, AZTddC, ddI
  • CD4 counts were scheduled at baseline, week 8,
    and then every 12 weeks thereafter.
  • Additional baseline characteristics were also
    collected.

3
ACTG 175
  • One goal of the investigators was to compare the
    treatment-specific means of CD4 count at week 56
    had all subjects remained on their assigned
    treatment through that week.
  • The interest is efficacy rather than
    effectiveness.
  • We define a completer to be a subject who stays
    on therapy and is measured at week 56.
    Otherwise, the subject is called a drop-out.
  • 33.6 and 26.5 of subjects dropped out in the
    AZTddI and ddI arms, respectively.

4
ACTG 175
  • Completers-only analysis

Treatment Mean CD4 SE 95 CI
AZTddI 385 8.5
ddI 360 7.7
Difference 25 11.5 (3,48) p0.0027
5
ACTG 175
  • The completers-only means will be valid estimates
    if, within treatment groups, the completers and
    drop-outs are similar on measured and unmeasured
    characteristics.
  • Missing at random (MAR), with respect to
    treatment group.
  • Without incorporating additional information, the
    MAR assumption is untestable.
  • It is well known from other studies that, within
    treatment groups, drop-outs tend to be very
    different than completers.

6
Goal
  • Present a coherent paradigm for the presentation
    of results of clinical trials in which it is
    plausible that MAR fails (i.e., NMAR).
  • Sensitivity Analysis
  • Bayesian Analysis

7
Sensitivity Analysis
Step 1 Models
  • For each treatment group, specify a set of models
    for the relationship between the distributions of
    the outcome for drop-outs and completers.
  • Index the treatment-specific models by an
    untestable parameter (alpha), where zero denotes
    MAR.
  • alpha is called a selection bias parameter and it
    indexes deviations from MAR.
  • Pattern-mixture model

8
Treatment-specific imputed distributions of CD4
count at week 56 for drop-outs
9
Step 1 Models
Sensitivity Analysis
  • Selection model
  • The parameter alpha is interpreted as the log
    odds ratio of dropping out when comparing
    subjects whose log CD4 count at week 56 differs
    by 1 unit.
  • alphagt0 (lt0) indicates that subjects with higher
    (lower) CD4 counts are more likely to drop-out.
  • alpha0.5 (-0.5) implies that a 2-fold increase
    in CD4 count yields a 1.4 increase (0.7 decrease)
    in the odds of dropping out.

10
Step 2 Estimation
Sensitivity Analysis
  • For a plausible range of alphas, estimate the
    treatment-specific means by taking a weighted
    average of the mean outcomes from the completers
    and drop-outs.

11
Treatment-specific imputed distributions of CD4
count at week 56 for drop-outs
12
Treatment-specific estimated mean CD4 at week 56
as function of alpha
13
Step 3 Testing
Sensitivity Analysis
  • Test the null hypothesis of no treatment effect
    as a function of treatment-specific selection
    bias parameters.
  • For each combination of the treatment-specific
    selection bias parameters, form a Z-statistic by
    taking the difference in the estimated means
    divided by the estimated standard error of the
    difference.

14
Step 3 Testing
Sensitivity Analysis
  • If the selection bias parameters are correctly
    specified, this statistic is normal(0,1) under
    the null hypothesis.
  • Reject the null hypothesis at the 0.05 level if
    the absolute value of the Z-statistic is greater
    than 1.96.

15
Contour Plot of Z-statistic
16
Contour Plot of Z-statistic
17
Bayesian Analysis
  • Think of all model parameters as random.
  • Place prior distributions on these parameters.
  • Informative prior on alpha (e.g., normal with
    mean -0.5 and standard deviation 0.25).
  • Non-informative priors on all other parameters
    (e.g., the distribution of the outcome).
  • Results are summarized through posterior
    distributions.

18
Posterior Distributions
368 (342,391)
348 (330,365)
19
Posterior Distribution of Mean Difference
20 (-11,49) 91
20
Likelihood-based Inference
  • A parametric model for the outcome and a
    parametric for the probability of being a
    completer given the outcome.
  • For example, the outcome is log normal.
  • Inference proceeds by maximum likelihood (ML).
  • ML inference can be well approximated using
    Bayesian machinery.

21
Maximum Likelihood Distributions
303 (278,331)
368 (342,391)
-2.6 (-3.0,-2.1)
297 (271,324)
348 (330,365)
-2.8 (-3.3,-2.2)
22
Treatment-specific imputed distributions of CD4
count at week 56 for drop-outs
23
Maximum Likelihood Distribution of Mean Difference
20 (-11,49)
7 (-31,44)
24
Incorporating Auxiliary Information
  • MAR (with respect to all observable data)
  • Sensitivity analysis with respect alpha.
  • Bayesian methods under development.

Longitudinal/Time-to-Event Data
  • Same underlying principles.

25
LOCF
  • Bad idea
  • Imputing an unreasonable value.
  • Results may be conservative or anti-conservative.
  • Uncertainty is under-estimated.

26
Conjecture
  • There is information from previously conducted
    clinical studies to help in the analysis of the
    current trials.
  • Data from previous trials may be able to restrict
    the range of or estimate alpha.

27
Summary
  • We have presented a paradigm for reporting the
    results of clinical trials where missingness is
    plausibly related to outcomes.
  • We believe this approach provides a more honest
    characterization of the overall uncertainty,
    which stems from both sampling variability and
    lack of knowledge of the missingness mechanism.

28
dscharf_at_jhsph.edu
  • Scharfstein, Rotnitzky A, Robins JM, and
    Scharfstein DO Semiparametric Regression for
    Repeated Outcomes with Non-ignorable
    Non-response, Journal of the American
    Statistical Association, 93, 1321-1339, 1998.
  • Scharfstein DO, Rotnitzky A, and Robins, JM.
    Adjusting for Non-ignorable Drop-out Using
    Semiparametric Non-response Models (with
    discussion), Journal of the American Statistical
    Association, 94, 1096-1146, 1999.
  • Rotnitzky A, Scharfstein DO, Su TL, and Robins
    JM A Sensitivity Analysis Methodology for
    Randomized Trials with Potentially Non-ignorable
    Cause-Specific Censoring, Biometrics, 5730-113,
    2001
  • Scharfstein DO, Robin JM, Eddings W and Rotnitzky
    A Inference in Randomized Studies with
    Informative Censoring and Discrete Time-to-Event
    Endpoints, Biometrics, 57 404-413, 2001.
  • Scharfstein DO and Robins JM Estimation of the
    Failure Time Distribution in the Presence of
    Informative Right Censoring, Biometrika
    89617-635, 2002.
  • Scharfstein DO, Daniels M, and Robins JM
    Incorporating Prior Beliefs About Selection Bias
    in the Analysis of Randomized Trials with Missing
    Data, Biostatistics, 4 495-512, 2003.
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