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Sequential analysis in clinical trials and epidemiological studies

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Title: Sequential analysis in clinical trials and epidemiological studies


1
Sequential analysis in clinical trials and
epidemiological studies
  • Ingeborg van der Tweel
  • Centre for Biostatistics
  • Utrecht University
  • 25-11-2004

2
Sequential methods in statistics
  • the whole of life is sequential,
  • for our future actions are conditioned
  • to some extent by our past experience
  • (Wetherill and Glazebrook, 1986)

3
Outline
  • Sequential analysis in
  • clinical trials
  • epidemiological studies
  • quality control
  • safety monitoring

4
Clinical Trial
  • recruitment and inclusion sequentially
  • ?
  • response available sequentially
  • ?
  • analysis sequentially

5
Interim analysis
  • after each new response or group of responses
  • an interim analysis is performed
  • ?
  • enough evidence to stop the trial
  • or
  • continue the trial
  • ? continuous sequential or group sequential
    analysis

6
Why interim analyses?
  • Ethics superiority of a treatment
  • Safety inferiority of a treatment /
  • toxicity of a treatment
  • Economy costly therapy
  • no clinically relevant difference in
    effect between treatments

7
ICH E9 (International guideline)Statistical
principles for clinical trials
  • 4.5
  • The goal of an interim analysis is to stop the
    trial early
  • if the superiority of the treatment under
    study is clearly established,
  • if the demonstration of a relevant treatment
    difference has become unlikely or
  • if unacceptable adverse effects are apparent.

8
Effect of interim analyses
  • total significance
  • number of analyses level ?
  • 1 0.05
  • 2 0.08
  • 3 0.11
  • 4 0.13
  • 5 0.14
  • 10 0.19

9
Effect of interim analyses
  • The more often one analyses the accumulating
    data, the greater the chance of eventually and
    wrongly detecting a difference, and thus drawing
    incorrect conclusions from the trial.
  • Increase in overall significance level ?
  • decrease in nominal significance level ?
  • per interim analysis

10
Critical Z values per interim analysis (overall
?0.05)



. Pocock ---- Haybittle-Peto ___ OBrien-Fleming
11
RST vs boundaries
  • Repeated Significance Tests (Pocock, OBF, HP)
  • fixed number and timing of the
  • interim analyses
  • More flexible (alpha-spending function) design
  • by Lan DeMets
  • Most flexible is the boundaries approach
  • (Wald, Whitehead)

12
A. Wald (1947)
  • Sequential Probability Ratio Test (SPRT)
  • stop and reject H0 as soon as Ln ? A A
    (1-?)/?
  • stop and accept H0 as soon as Ln ? B B ?/ (1-
    ?)
  • continue as long as B lt Ln lt A

13
A (hypothetical) example
  • Cross-over trial on treatment of hypertension
  • standard treatment S and new treatment N
  • probability of superiority of N over S ? 0.7
  • under H0 ? 0.5
  • one-sided ? 0.05 power 1- ? 0.80

14
A (hypothetical) example
15

A (hypothetical) example


after n13 patients H0 can be accepted
16
J. Whitehead (University of Reading, UK)
  • flexible boundaries approach
  • continuous and group sequential testing
  • SPRT, TT, . (one- and two-sided)
  • outcome dichotomous, Normal, survival,
  • H0 ? 0 vs H1 ? ? ?R
  • test statistics V (amount of information)
  • and Z (effect size)

17
The (hypothetical) example
  • Z Y n?0 observed expected
  • Y number of preferences for N
  • n total number of patients with a preference
  • ?0 probability of a preference for N under H0
  • Z Y n/2 under H0
  • V n ?0(1- ?0) n/4 under H0
  • ?R log(OR) log(0.7x0.5)/(0.3x0.5) 0.847

18
The (hypothetical) example a (truncated) SPRT
after n13 patients H0 can be accepted
19
The (hypothetical) example a triangular test
(TT)
after n14 patients H0 can be accepted
20
Important
  • on average, less observations necessary to come
    to a decision with the same type I and type II
    errors
  • ? sample size is not fixed beforehand, but
    stochastic

21
An example
  • Amyotrophic Lateral Sclerosis (ALS)
  • progressive weakness in skeletal muscles leading
    to death due to respiratory failure
  • 50 of the patients do not survive 3 years
  • no medical treatment available yet
  • Trial to compare placebo to dietary supplement
  • possible positive effect on muscle strength

22
ALS-example (continued)
  • death from any cause, tracheostomy and persistent
    assisted ventilation were considered events for
    survival analysis
  • cumulative survival after 16 months
  • with placebo 60
  • with dietary supplement ? 80
  • one-sided ?0.05 power 1-?0.90
  • fixed total number of events ? 56
  • fixed total number of patients ? 190

23
ALS-example (continued)
  • Fixed sample analysis can not take place before
    all patients are included, followed-up and
    analyzed.
  • Total duration
  • duration of the inclusion period
  • 16 months after inclusion of the last patient

24
ALS-example (continued)
  • Ethical considerations
  • minimize the burden for ALS-patients
  • total trial duration as short as possible
  • number of included patients as small as possible
  • Enough evidence? ?STOP

25
ALS-example (continued)
  • Hazard Ratio log(0.8) / log(0.6) 0.437
  • ?R -log(HR) 0.828
  • Z observed number of events in the control
    group
  • expected number of events under H0
  • V ? (number of events)/4 (11 randomisation)
  • Z²/V logrank test statistic

26
ALS-example (continued)
27
ALS-example (continued)
  • Lower boundary was crossed after 34 events in 164
    included patients ? accept H0
  • Eventually 175 patients included
  • placebo 30 / 87 died
  • supplement 28 / 88 died
  • Adjusted HR 0.78 (95 CI 0.47 1.48)
  • No real gain in number of patients,
  • but in follow-up time

28
Epidemiological studies
  • Why a sequential analysis?
  • efficiency and economical aspects
  • quality control
  • savings in money, time, biological samples,
    ...
  • screening of new hypotheses

29
Epidemiological studies
  • the DOM project a breast cancer screening
    programme in Utrecht and surroundings
  • biological material stored in a biobank
  • regional cancer registration ? cases
  • large number of interesting hypotheses
  • vs
  • limited number and amount of biological samples
  • ? efficient statistical methods needed

30
data OL vd Hel et al (1998)
11 matching
13 matching
cohort-nested case-control study relating
exposure to the MTHFR-gene to the occurrence of
rectal cancer (2?0.05, power 1-?0.80, ?R0.5)
31
data OL vd Hel et al (2002)
non-hierarchical GxE-interaction, breast
cancer P(G)0.30, P(E)0.30, 2?0.05, 1-?0.80,
OR2 Nfixed 308, Nseq 5x44 220 ? 29 gain
32
data OL vd Hel et al (2002)
hierarchical GxE-interaction breast cancer
P(G)0.30, P(E)0.30, 2?0.05, 1-?0.80,
OR2 Nfixed 674, Nseq 9x44 396 ? 41 gain
33
Quality control
  • MR de Leval et al.
  • Analysis of a cluster of surgical failures
  • J Thorac Cardiovasc Surg (1994)107914-924
  • 104 neonatal arterial switch operations for
    transposition of the great arteries
  • 1 in the first 52 patients
  • then nrs 53, 55, 59, 63, 64, 67, 68
  • H0 p0.02 versus H1 p0.05
  • ? 0.05, power 0.80

34
Quality control(MR de Leval et al (1994))

35
Safety monitoring
  • Example
  • RCT in head injury
  • active drug vs placebo
  • evaluation of functional status after 6 months
  • safety monitoring of mortality within 21 days
  • placebo 21-day mortality rate 0.35
  • If exp. 21-day mortality rate is larger than
    0.52,
  • it is undesirable to continue the trial

36
Safety monitoring
  • cum. nr of patients
  • date of interim active placebo
  • died entered died entered
  • 07/02/1994 0 16 4 14
  • 27/04/1994 1 33 7 27
  • 09/05/1994 4 49 12 44
  • 26/08/1994 6 64 14 58
  • 30/11/1994 8 76 17 77
  • 05/05/1995 14 118 26 117
  • 28/06/1995 18 139 27 134
  • 04/08/1995 20 153 28 150
  • 21/11/1995 29 190 38 184
  • 17/05/1996 33 230 43 223

37
Safety monitoring
38
Newer statistical methods
  • W.G. Cochran (1959)
  • In the sequential trial, at the beginning the
    doctor is forced to make decisions about the
    desired sensitivity of the trial which he can
    dodge in the fixed-size trial.
  • But to make an intelligent choice of the number
    of patients in a fixed-size trial, the same
    questions, or similar ones must be answered.
  • When sequential trials are better explained and
    better understood, they should not be any harder
    than fixed-size trials.
  • In Quantitative methods in human pharmacology and
    therapeutics, ed D.R. Laurence, pp 119-143,
    London Pergamon.

39
Conclusion
  • Sequential design and analysis
  • of clinical trials and epidemiological studies
  • could be considered more often for
  • ethical reasons
  • superiority or inferiority of a treatment
  • toxicity
  • efficiency and economical reasons
  • quality control
  • savings in money, time, biological samples,
    ...
  • screening of new hypotheses

40
PEST 4.4 (2004)
41
Some literature
  • Lewis JA.
  • Statistical principles for clinical trials (ICH
    E9).
  • An introductory note on an international
    guideline.
  • Stat in Med 1999 (18) 1903-1942
  • Whitehead J.
  • The design and analysis of sequential clinical
    trials.
  • Chichester Wiley 1997 (rev. 2nd ed.)
  • PEST 4.4 Operating Manual. MPS Research Unit.
  • Reading the University of Reading 2004
  • Wetherill GB, Glazebrook KD.
  • Sequential methods in statistics, 3d ed.
  • London Chapman and Hall, 1986.

42
Some literature
  • Todd S, Whitehead A, Stallard N, Whitehead J.
  • Interim analyses and sequential designs in phase
    III studies.
  • Br J Clin Pharmacol 2001 (51) 394-399
  • Van der Tweel I, Schipper M.
  • Sequentiële analysen in klinisch en
    epidemiologisch onderzoek.
  • NTvG 2002 (146) 2348-2352 (in Dutch)
  • Groeneveld GJ, Veldink JH, Van der Tweel I, ,
    van den Berg LH.
  • A randomized sequential trial of creatine in
    amyotrophic lateral sclerosis. Ann Neurol 2003
    (53) 437-445
  • Van der Tweel I.
  • Application and efficiency of sequential tests
    in matched case-control studies. PhD thesis.
    Utrecht University. March 2nd, 2004
  • Baksh M.F.
  • Sequential tests of association with
    applications in genetic epidemiology. PhD thesis.
    University of Reading. 2002

43
Some literature
  • Baksh MF, Todd S, Whitehead J, Lucini MM.
  • Design considerations in the sequential analysis
    of matched case-control data.
  • Stat in Med (2004) to appear
  • Van der Tweel I, Schipper M.
  • Sequential tests for gene-environment
    interactions in matched case-control studies.
  • Stat in Med (2004) to appear
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