Title: MetaAnalysis
1Marjan Akbari Kamrani Students Scientific
Research Center Tehran university of medical
sciences
Meta-Analysis
2Meta-Analysis
- Meta-analysis is a statistical analysis of a
collection of studies - Meta-analysis methods focus on contrasting and
comparing results from different studies in
anticipation of identifying consistent patterns
and sources of disagreements among these results - Primary objective
- Synthetic goal (estimation of summary effect)
- vs
- Analytic goal (estimation of differences)
3Types of Information
In summarizing the results and facilitating their
analysis
- Key variables that characterize
- Participants
- Interventions
- Outcome Measures
- Internal validity of each study.
- Results in natural units that are easily
understood - Standardized results, if these can be derived in
a way that will facilitate comparisons across
studies without being misleading
4Steps of a Systematic Review
- Well formulated question
- Comprehensive data search
- Unbiased selection and extraction process
- Critical appraisal of data
- Synthesis of data
- Perform sensitivity and subgroup analyses if
appropriate and possible - Prepare a structured report
5Outcome
Discrete (event)
Continuous (measured)
Mean Standardized Difference Mean
Difference (MD) (SMD)
Odds Relative Risk Ratio Risk Difference (OR) (
RR) (RD)
(Basic Data)
(Basic Data)
Overall Estimate
Overall Estimate
6Effect measures discrete data
- P1 event rate in experimental group
- P2 event rate in control
group - OR Odds ratio P1/(1-P1)/P2/(1-P2)
- RD Risk difference P2 - P1
- NNT No. needed to treat 1 / (P2-P1)
-
7Discrete - Odds Ratio (OR)
Event No event Experimental a b ne Control c d n
c
Pea/ne
Pcc/nc
number of patients experiencing event number of
patients not experiencing event Odds in
Experimental group a.d Odds in Control
group b.c
Odds Odds ratio
8Odds Ratio (1)
Odds (E) Odds (C) OR
13/33 0.394
7/31 0.226
0.394/0.226 1.743
9Odds Ratio (2)
Odds (E) Odds (C) OR
14/119 0.118
128/20 6.4
0.118/6.4 0.018
10Discrete - Relative Risk (RR)
Event No event Experimental a b ne Control c d n
c
Pea/ne
Pcc/nc
number of patients experiencing event number of
patients Risk in Experimental group Risk
in Control group
Risk Risk Ratio
RR Pe/Pc a(cd)/(ab)c
11Relative Risk (1)
Risk (E) Risk (C) RR
13/46 0.283
7/38 0.184
0.283/0.184 1.538
12Relative Risk (2)
Risk (E) Risk (C) RR
14/133 0.105
128/148 0.865
0.105/0.865 0.121
13Discrete - Risk Difference (Absolute Risk
Reduction)
Event No event Experimental a b ne Control c d n
c
Pea/ne
Pcc/nc
number of patients experiencing event number of
patients
Risk Risk Difference (Risk in experimental
group) (Risk in Control Group)
RD Pe- Pc a/(ab) c/(cd)
14Risk Difference ARR (1)
13/46 0.283
Risk (E) Risk (C) RD
7/38 0.184
0.283 - 0.184 0.099
15Risk Difference ARR (2)
Risk (E) Risk (C) RD
14/133 0.105
128/148 0.865
0.105 - 0.865 -0.76
16NNT (Number Needed to Treat)
- NNT the number of people we need to treat to
prevent one extra person from having the event - NNT is the inverse of the risk difference
- NNT 1 / risk difference
- NNTs are specific to the particular length of
follow up
17Number Needed to Treat (1)
OR 1.743 RR 1.538 RD 0.099 NNT
1/0.099 10.1
18Number Needed to Treat (2)
OR 0.018 RR 0.121 RD -0.76 NNT
1/0.76 1.316
19When to use OR / RR / RD
Association OR RR RD (0,?) (0,?) (-
1,1) Decreased lt1 lt1 lt0 None 1 1 0 Increased
gt1 gt1 gt0
OR vs RR Odds Ratio Relative Risk if event
occurs infrequently (i.e. a and c
small relative to b and d) RR a(cd)/(ab)c
ad/bc OR Odds Ratio gt Relative Risk if event
occurs frequently RD vs RR When interpretation in
terms of absolute difference is better than in
relative terms (eg. Interest in absolute
reduction in adverse events)
20Three Principal Issues
Consider when choosing a summary statistic
- Communication, i.e. a straightforward and
clinically useful interpretation - Consistency of the statistic across different
studies - Reasonable mathematical properties.
21Risk ratio and odds ratio are better for
meta-analysis than the risk difference. Risk
ratios are easier to understand than odds ratios.
22- Absolute measures can be more informative than
relative measures because they reflect the
baseline risk as well as the change in risk with
the intervention. - obtaining confidence intervals for absolute
measures are problematic.
23- Remember that NNT is useful for presenting
results, but not for analysis purposes. The other
three statistics (OR, RR, RD) can be used for
either.
24Outcome
Discrete (event)
Continuous (measured)
Mean Standardized Difference Mean
Difference (MD) (SMD)
Odds Relative Risk Ratio Risk Difference (OR) (
RR) (RD)
(Basic Data)
(Basic Data)
Overall Estimate
Overall Estimate
25Continuous Data-Mean Difference (MD)
Number Mean Standard Deviation Experimental ne
se Control nc sc
26Continuous Data Standardized Mean Difference
(SMD)
Number Mean Standard Deviation Experimental ne
se Control nc sc
27When to use MD / SMD
- Mean Difference
- When studies have comparable outcome measures
(ie. Same scale, probably same length of
follow-up) - A meta-analysis using MDs is known as a weighted
mean difference (WMD) - Standardized Mean Difference
- When studies use different outcome measurements
which address the same clinical outcome (eg
different scales) - Converts scale to a common scale number of
standard deviations
28Heterogeneity
A variety of varieties
- Clinical diversity
- Methodological diversity
- Statistical heterogeneity
29Clinical diversity
- Study location and setting
- Age, sex, diagnosis and disease severity of
participants - Treatments people may be receiving at the start
of a study - Dose or intensity of the intervention
- Definitions of outcomes.
30Methodological diversity
- Sampling error may vary among studies (sample
size) - Study quality (for example, the extent to which
allocation to interventions was concealed, or
whether outcomes were assessed blind to treatment
allocation) - Analysis (for example, performing an
intention-to-treat analysis compared with an as
treated analysis)
31Statistical heterogeneity
- The individual estimates of treatment effect will
vary by chance, because of randomization. - We need to know whether there is more variation
than wed expect by chance alone.
32Heterogeneity
How to Identify it
- Common sense
- are the patients, interventions and outcomes in
each of the included studies sufficiently similar - Statistical tests
33Things You Can Do
With diversity and heterogeneity
- Using a different statistical model for combining
studies, called a random effects meta-analysis. - Investigate heterogeneity by splitting the
studies into subgroups and looking at the forest
plot. - Investigating heterogeneity using
meta-regression.
34Statistical Models
For Calculating overall effects
- Fixed effects model (FEM)
- Random effects model (REM)
35Fixed Effects Model
- Require from each study
- effect estimate and
- standard error of effect estimate
- Combine these using a weighted average
- pooled estimate
- where weight 1 / variance of estimate
- Assumes a common underlying effect behind every
trial
sum of (estimate ? weight) sum of weights
36Fixed-Effects Model
x
37Random-Effects Model
- Assume true effect estimates really vary across
studies - Two sources of variation
- within studies (between patients)
- between studies (heterogeneity)
- What the software does
- Revise weights to take into account both
components of variation - Weight
- When heterogeneity exists we get
- a different pooled estimate (but not necessarily)
with a different interpretation - a wider confidence interval
- a larger p-value
1 Variance heterogeneity
38Random-Effects Model
x
39Effect of model choice on study weights
Larger studies receive proportionally less weight
in RE model than in FE model
40- Thus,
- Random-effect model is more susceptible to
publication bias.
41Generic Inferential Framework
- Methodologic choices in dealing with
heterogeneous data
42Features in Graphic Display
- For each trial
- estimate (square)
- 95 confidence interval (CI) (line)
- size (square) indicates weight allocated
- Solid vertical line of no effect
- if CI crosses line then effect not significant
(pgt0.05) - Horizontal axis
- arithmetic RD, MD, SMD
- logarithmic OR, RR
- Diamond represents combined estimate and 95 CI
- Dashed line plotted vertically through combined
estimate
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48Fixed vs Random Effects Discrete Data
Fixed Effects
Random Effects
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50Cochrane Systematic Review
Steps
- Well formulated question
- Comprehensive data search
- Unbiased selection and extraction process
- Critical appraisal of data
- Synthesis of data
- Perform sensitivity and subgroup analyses if
appropriate and possible - Prepare a structured report
51Heterogeneity Exploring it
- Subgroup analyses
- subsets of trials
- subsets of patients
- subgroups should be pre-specified to avoid bias
- Meta-regression
- relate size of effect to characteristics of the
trials
52Exploring Heterogeneity
subgroup analysis
53- Perform a narrative, qualitative summary when
data are too sparse, of too low quality or too
heterogeneous to proceed with a meta-analysis
54Funnel Plot Publication Bias
55Possible sources of asymmetry in funnel plots
- Selection biases
- Publication bias
- Location biases
- Language bias
- Citation bias
- Multiple publication bias
- Poor methodological quality of smaller studies
- Poor methodological design
- Inadequate analysis
- Fraud
- True heterogeneity
- Size of effect according to study size (for
example, due to differences in the intensity of
interventions or differences in underlying risk
between studies of different sizes) - Artefactual
- chance
56Funnel Plot
- Scatter plot of effect estimates against sample
size - Used to detect publication bias
- If no bias, expect symmetric, inverted funnel
- If bias, expect asymmetric or skewed shape
x x x x
x x x x x x x x
x x x
x x x x x x x
Suggestion of missing small studies
57Symmetrical plot in the absence of bias.
In the absence of bias. smaller studies without
statistically significant effects are shown as
open circles in the figure.
58Asymmetrical Plot
In the presence of reporting bias
59Asymmetrical plot
In the presence of bias due to low methodological
quality of smaller studies.
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