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Metaanalysis

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Title: Metaanalysis


1
Meta-analysis
  • The EBM workshop
  • A.A.Haghdoost, MD PhD of Epidemiology
  • Ahaghdoost_at_kmu.ac.ir

2
Definition
  • Meta-analysis a type of systemic review that
    uses statistical techniques to quantitatively
    combine and summarize results of previous
    research
  • A review of literature is a meta-analytic review
    only if it includes quantitative estimation of
    the magnitude of the effect and its uncertainty
    (confidence limits).

3
Function of Meta-Analysis(1)
  • 1-Identify heterogeneity in effects among
    multiple studies and, where appropriate, provide
    summary measure
  • 2-Increase statistical power and precision to
    detect an effect
  • 3-Develop ,refine, and test hypothesis
  • continued

4
Function of Meta-Analysis(2)
  • continuation
  • 4-Reduce the subjectivity of study comparisons by
    using systematic and explicit comparison
    procedure
  • 5-Identify data gap in the knowledge base and
    suggest direction for future research
  • 6-Calculate sample size for future studies

5
Historical background
  • Ideas behind meta-analysis predate Glass work by
    several decades
  • R. A. Fisher (1944)
  • When a number of quite independent tests of
    significance have been made, it sometimes happens
    that although few or none can be claimed
    individually as significant, yet the aggregate
    gives an impression that the probabilities are on
    the whole lower than would often have been
    obtained by chance (p. 99).
  • Source of the idea of cumulating probability
    values
  • W. G. Cochran (1953)
  • Discusses a method of averaging means across
    independent studies
  • Laid-out much of the statistical foundation that
    modern meta-analysis is built upon (e.g., inverse
    variance weighting and homogeneity testing)

6
Basic concepts
  • The main outcome is the overall magnitude of the
    effect.
  • It's not a simple average of the magnitude in all
    the studies.
  • Meta-analysis gives more weight to studies with
    more precise estimates.
  • The weighting factor is 1/(standard error)2.

7
Main magnitude of effects
  • Descriptive
  • Mean
  • Prevalence
  • Analytical
  • Additive
  • Mean difference
  • Standardized mean difference
  • Risk, rate or hazard difference
  • Correlation coefficient
  • Multiplicative
  • Odds ratio, Risk, Rate or Hazard Ratio

8
Statistical concepts(1)
  • You can combine effects from different studies
    only when they are expressed in the same units.
  • Meta-analysis uses the magnitude of the effect
    and its precision from each study to produce a
    weighted mean.

9
Statistical concepts(2)
The impact of fish oil consumption on
Cardio-vascular diseases
10
Forest plot
  • the graphical display of results from individual
    studies on a common scale is a Forest plot.
  • In the forest plot each study is represented by a
    black square and a horizontal line (CI95).The
    area of the black square reflects the weight of
    the study in the meta-analysis.
  • A logarithmic scale should be used for plotting
    the Relative Risk.

11
Forest plot
12
Statistical concepts(3)
  • There are two basic approach to Quantitative meta
    analysis
  • Weighted-sum
  • Fixed effect model
  • Random effect model
  • Meta-regression model

13
Fixed effect model
  • General Fixed effect model- the inverse variance
    weighted method
  • Specific methods for combining odds ratio
  • Mantel- Haenszel method
  • Petos method
  • Maximum-Likelihood techniques
  • Exact methods of interval estimation

14
Fixed effect model
  • In this model, all of the observed difference
    between the studies is due to chance
  • Observed study effectFixed effect error
  • Xi ? ei ei is N (0,d2 )
  • Xi Observed study effect
  • ? Fixed effect common to all studies

15
General Fixed effect model
  • T? wiTi/ ? wi
  • The weights that minimize the variance of T are
    inversely proportional to the conditional
    variance in each study
  • Wi1/vi
  • Var(T)1/ ? wi

16
Mantel- Haenszel method
  • Each study is considered a strata.
  • T?ai di / ni / ?bi ci /ni

17
Random effect model
  • The random effect model, assumes a different
    underlying effect for each study.
  • This model leads to relatively more weight being
    given to smaller studies and to wider confidence
    intervals than the fixed effects models.
  • The use of this model has been advocated if there
    is heterogeneity between study results.

18
Source of heterogeneity
  • Results of studies of similar interventions
    usually differ to some degree.
  • Differences may be due to
  • - inadequate sample size
  • - different study design
  • - different treatment protocols
  • - different patient follow-up
  • - different statistical analysis
  • - different reporting
  • - different patient response

19
  • An important controversy has arisen over whether
    the primary objective a meta-analysis should be
    the estimation of an overall summary or average
    effect across studies (a synthetic goal)
  • or the identification and estimation of
    differences among study-specific effects
    (analytic goal)

20
Test of Homogeneity
  • This is a test that observed scatter of study
    outcomes is consistent with all of them
    estimating the same underlying effect.
  • Q X2homo?i1nwi (mi -M)2
  • dfn-1
  • wi weight
  • Mmeta analytic estimate of effect
  • mi effect measure of each study

21
Dealing with statistical heterogeneity
  • The studies must be examined closely to see if
    the reason for their wide variation in effect. If
    its found the analysis can be stratified by that
    factor.
  • Subgroup analysis
  • Exclusion of study
  • Choose another scale
  • Random effect model
  • Meta-regression

22
Random effect model
  • Assume there are two component of variability
  • 1)Due to inherent differences of the effect being
    sought in the studies (e.g. different design,
    different populations, different treatments,
    different adjustments ,etc.) (Between study)
  • 2)Due to sampling error (Within study)

23
Random effect model
  • There are two separable effects that can be
    measured
  • The effect that each study is estimating
  • The common effect that all studies are estimating
  • Observed study effectstudy specific (random
    )effect error

24
Random effect model
  • This model assumes that the study specific effect
    sizes come from a random distribution of effect
    sizes with a fixed mean and variance.
  • There are five approach for this model
  • Weighted least squares
  • Un-weighted least squares
  • Maximum likelihood
  • Restricted Maximum likelihood
  • Exact approach to random effects of binary data.

25
Random effect
  • Xi ?i ei ei is N (0,d2 )
  • Xi Observed study effect
  • ?i Random effect specific to each study ?i
    Udi
  • UGrand mean (common effect)
  • di is N (0, ?2 ) Random term

26
Weighted least squares for Random Effect
  • W?wi/k
  • S2w1/k-1(?wi2-k W2)
  • U(k-1)(W-S2w/kW)
  • ?20 if Qltk-1
  • ?2(Q-(k-1))/U if Qgtk-1
  • wi 1/var. ?2 var.within study
    variances

27
Weighted least squares for Random Effect (WLS)
  • T.RND? wi Ti/ ? wi
  • Var(T.RND)1/ ? wi
  • Where Ti is an estimate of effect size and ?i is
    the true effect size in the ith study
  • Ti ?i ei ei is the error with which Ti
    estimates ?i
  • var(Ti) ??2 vi

28
random versus fixed effect models
  • Neither fixed nor random effect analysis can be
    considered ideal.
  • Random effect models has been criticized on
    grounds that unrealistic distributional
    assumption have to be made.
  • Random effect models are consistent with the
    specific aims of generalization.

29
Petos advocates
  • He suggested a critical value .01 instead of
    usual .05 to decide whether a treatment effect is
    statistically significant for a fixed effect
    model.
  • This more conservative approach has the effect of
    reducing the differences between fixed and random
    effect models.

30
Meta-regression
  • If more than two groups of studies have been
    formed and the characteristic used for grouping
    is ordered, greater power to identify sources of
    heterogeneity may be obtained by regressing study
    results on the characteristic .
  • With meta-regression, it is not necessary or even
    desirable to groups the studies.
  • The individual study results can be entered
    directly in the analysis.

31
Meta-Regresion
  • 1- meta-Regression model( extension of fixed
    effect model)
  • 2- Mixed model( extension of random effect model)

32
Fixed-effects regression
  • TiB0B1xi1...Bpxip
  • Its the covariate predictor variables that are
    responsible for the variation not a random
    effect the variation is predictable, not random.

33
Mixed model
  • TiB0B1xi1...Bpxipui
  • This model assumes that part of the variability
    in true effects is unexplainable by the model.

34
Between studies variation
  • You can and should allow for real differences
    between studiesheterogeneityin the magnitude of
    the effect.
  • The t2 statistic quantifies of variation due to
    real differences.

35
Fixed effects model and heterogeneity
  • In fixed-effects meta-analysis, you do so by
    testing for heterogeneity using the Q statistic.
  • If plt0.10, you exclude "outlier" studies and
    re-test, until pgt0.10.
  • When pgt0.10, you declare the effect homogeneous.
  • But the approach is unrealistic, limited, and
    suffers from all the problems of statistical
    significance.

36
Random effects model and heterogeneity
  • In random-effect meta-analysis, you assume there
    are real differences between all studies in the
    magnitude of the effect.
  • The "random effect" is the standard deviation
    representing the variation in the true magnitude
    from study to study.
  • You need more studies than for traditional
    meta-analysis.
  • The analysis is not available in a spreadsheet.

37
Concept of analysis in random versus fixed effect
models
  • Fixed effects models within-study variability
  • "Did the treatment produce benefit on average in
    the studies at hand?"
  • Random effects models between-study and
    within-study variability
  • "Will the treatment produce benefit on
    average?"

38
Limitations
  • It's focused on mean effects and differences
    between studies. But what really matters is
    effects on individuals.
  • (Aggression bias)
  • A meta-analysis reflects only what's published or
    searchable.

39
Aggregation bias
  • Relation between group rates or and means may not
    resemble the relation between individual values
    of exposure and outcome.
  • This phenomenon is known as aggregation bias or
    ecologic bias.

40
Ecological fallacy
41
Meta-analysis of neoadjuvant chemotherapy for
cervical cancer
42
Type of reporting
43
Selection bias in Meta analysis
  • English language bias
  • Database bias
  • Publication bias
  • Bias in reporting of data
  • Citation bias
  • Multiple publication bias
  • Sample size

44
Publication bias
  • The results of a meta-analysis may be biased if
    the included studies are a biased sample of
    studies in general.
  • The classic form of this problem is publication
    bias, a tendency of journals to accept
    preferentially papers reporting an association
    over papers reporting no association

45
Publication bias
  • If such a bias is operating, a meta-analysis
    based on only published reports will yield
    results biased away from the null.
  • Because small studies tend to display more
    publication bias, some authors attempt to avoid
    or minimize the problem by excluding studies
    below a certain size.

46
  • Some meta-analysts present the effect magnitude
    of all the studies as a funnel plot, to address
    the issue of publication bias.
  • A plot of 1/(standard error) vs effect magnitude
    has an inverted funnel shape.
  • Asymmetry in the plot can indicate
    non-significant studies that werent published.

47
Funnel plot
48
Funnel plot
49
Measures of Funnel Plot Asymmetry
  • 1- Linear Regression Approach (Eggers method)
  • SNDa b. precision
  • SNDOR/SE
  • The intercept a provides a measure of
    asymmetry- the larger its deviation from zero the
    more pronounced the asymmetry.

50
Measures of Funnel Plot Asymmetry
  • 2- A rank correlation test
  • This method is based on association between
    the size of effect estimates and their variance.
    If publication bias is present, a positive
    correlation between effect size and variance
    emerges because the variance of the estimates
    from smaller studies will also be large.

51
Funnel plot
52
Key Messages
  • Funnel plot asymmetry was found in 38 of
    meta-analyses published in leading general
    medicine journals and in 13 of reviews from the
    Cochrane Database of Systematic Reviews.
  • Critical examination of systematic reviews for
    publication and related biases should be
    considered a routine procedure.

53
Sources of Funnel Plot asymmetry
  • Selection Bias
  • True Heterogeneity
  • Size of effect differs according to study size
  • Intensity of interventions
  • Difference on underlying risk
  • Data irregularities
  • Poor methodological design of small studies
  • Inadequate analyses
  • Fraud
  • Artefactual
  • Choice of effect measure
  • Chance

54
Sample size as source of bias
  • Consider a hypothetical literature summary
    stating, of 17 studies to date, 5 have found a
    positive association,11 have found no
    association, and 1 has found a negative
    association thus, the preponderance of evidence
    favors no association.
  • Mere lack of power might cause most or all of the
    study results to be reported as null.

55
Quality score
  • Some meta-analysts score the quality of a study.
  • Examples (scored yes1, no0)
  • Published in a peer-reviewed journal?
  • Experienced researchers?
  • Research funded by impartial agency?
  • Study performed by impartial researchers?
  • Subjects selected randomly from a population?
  • Subjects assigned randomly to treatments?
  • High proportion of subjects entered and/or
    finished the study?
  • Subjects blind to treatment?
  • Data gatherers blind to treatment?
  • Analysis performed blind?

56
Quality score
  • Use the score to exclude some studies, and/or
  • Include as a covariate in the meta-analysis, but
  • Some statisticians advise caution when using
    quality.

57
Quality scoring
  • A very common practice is to weight studies on a
    quality score usually based on some subjective
    assignment .
  • For example, 10 quality points for a cohort
    design, 8 points for a nested case control
    design, and 4 points for a population based case
    control design.

58
Quality scoring
  • Quality scoring submerges important information
    by combining disparate study features into a
    single score.
  • It also introduces an unnecessary and somewhat
    arbitrary subjective element in to the analysis.

59
Quality scores as weighing factors
  • study weight1/var.
  • Quality adjusted weight quality score /var.

60
Quality scores
  • The judgment that the studies should or should
    not be combined should be stated and justified
    explicitly.
  • There is some of a tendency to make this judgment
    on the basis of the quantitative results, but
    its critical to make a qualitative judgment.

61
What is an IPD Meta-analysis?
  • Involves the central collection, checking and
    analysis of updated individual patient data
  • Include all properly randomised trials, published
    and unpublished
  • Include all patients in an intention-to-treat
    analysis

62
IPD Meta-analysis
  • Individual patient data used
  • Analysis stratified by trial
  • IPD does not mean that all patients are combined
    into a single mega trial

63
IPD Analyses
  • Collect raw data from related studies, whether or
    not the studies collaborated at the design stage,
    exposures measures and other covariates that can
    be applied uniformly across the studies combined.
  • The major advantage of a IPD over an MA is the
    use of individual-based rather than group-based
    data.

64
sensitivity analysis
  • In sensitivity analysis, the sensitivity of
    inference to variations in or violations of
    certain assumptions is investigated.
  • For example, the sensitivity of inference to the
    assumption about the bias produced by failure to
    control for smoking can be checked by repeating
    the meta-analysis using other plausible values of
    the bias.

65
sensitivity analysis
  • If such reanalysis produces little change in an
    inference, one can be more confident that the
    inference is insensitive to assumptions about
    confounding by smoking.
  • In influence analysis, the extent to which
    inferences depend on a particular study or group
    of studies is examined this can be accomplished
    by varying the weight of that study or group.

66
sensitivity analysis
  • Thus , in looking at the influence of a study,
    one could repeat the meta-analysis without the
    study, or perhaps with half its usual weight .
  • If change in weight of a study produces little
    change in an inference, inclusion of the study
    can not produce a serious problem, even if
    unquantified biases exist in the study

67
Sensitivity and influence analysis
  • On the other hand, if an inference hinges on a
    single study or group of studies, one should
    refrain from making that inference

68
conclusion
  • Most meta-analysis will require from each study
    both a point estimate of effect and an estimate
    of its standard error .
  • A point estimate accompanied only by a P value
    will generally not provide for accurate
    computation of a standard error estimate, and
    should not be considered sufficient for reporting
    purposes.

69
Over conclusion
  • Like large epidemiologic studies, meta-analysis
    run the risk of appearing to give results more
    precise and conclusive that warranted.
  • The lager number of subjects contributing to a
    meta-analysis will often lead to very narrow
    confidence intervals for the effect estimate.
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