Systematic Reviews Critical appraisal - PowerPoint PPT Presentation

1 / 51
About This Presentation
Title:

Systematic Reviews Critical appraisal

Description:

I (E) - does education. C - compared with no education. O - reduce the risk of HIV ... of quality, decide how to score each item, and use the tool straightaway ... – PowerPoint PPT presentation

Number of Views:81
Avg rating:3.0/5.0
Slides: 52
Provided by: rezamaj
Category:

less

Transcript and Presenter's Notes

Title: Systematic Reviews Critical appraisal


1
Systematic ReviewsCritical appraisal
2
Formulating review questions
Searching selecting studies
Data collection
Quality assessment
Extracting data from studies
Data Synthesis
3
Roadmap
  • Bias
  • External validity
  • Chance error
  • Quality assessment tools
  • Key messages
  • Discussion questions

4
Roadmap
  • Bias
  • External validity
  • Chance error
  • Quality assessment tools
  • Key messages
  • Discussion questions

5
(No Transcript)
6
Source Population
Who took part?
7
Source Population
Eligible Population
Who took part?
8
Source Population
Participants
Eligible Population
Who took part?
9
GATE approach design
Exposure Grp (intervention)
Participants
Comparison Grp (control)
What groups were compared?
10
Outcomes? -
EG
Participants
CG
What outcomes were assessed?
11
PICO
4.Outcomes -
2. Intervention 3. Comparison
1. Participants
12
Outcomes -
measurement
EG CG
A B
Participants
Time
selection
confounding
measurement
13
part question
  • P General population
  • I (E) - does education
  • C - compared with no education
  • O - reduce the risk of HIV

14
Outcomes -
measurement
EG CG
A B
Participants
Time
selection
confounding
measurement
15
Roadmap
  • Bias
  • External validity
  • Chance error
  • Quality assessment tools
  • Key messages
  • Discussion questions

16
How we investigate a research question?
Study
What they did
What you see
What they tested
17
External Validity
Theory
Cause Construct
Effect Construct
cause-effect construct
  • Can we generalize to other persons, places, times?

18
How Do We Generalize?
specified persons, places , times
Population
19
How Do We Generalize?
Population
draw sample
Sample
draw sample
20
How Do We Generalize?
generalize back
generalize back
Population
Sample
21
How Do We Generalize?
Our Study
22
How Do We Generalize?
settings
Our Study
times
people
places
23
How Do We Generalize?
less similar
settings
Our Study
less similar
less similar
times
people
places
less similar
24
How Do We Generalize?
less similar
settings
Our Study
less similar
less similar
times
people
places
Gradients of Similarity
less similar
25
How Do We Generalize?
generalize back
generalize back
Population
Sample
26
Source Population
Who took part?
27
Roadmap
  • Bias
  • External validity
  • Chance error
  • Quality assessment tools
  • Key messages
  • Discussion questions

28
(No Transcript)
29
Statistical measures of chance I(Test of
statistical significance)
Type I error
Type II error
30
Dealing with chance error
  • During design of study
  • Sample size
  • Power
  • During analysis (Statistical measures of chance)
  • Test of statistical significance (P value)
  • Confidence intervals

31
P-value
  • the probability the observed results occurred by
    chance
  • statistically non-significant results are not
    necessarily attributable to chance due to small
    sample size

32
Statistical Power
  • Power 1 type II error
  • Power 1 - ß

33
Power
high
low
34
Power
high
low
35
Power
Very high
High enough
36
P value
  • 0.00001
  • Clinical Importance
  • VS
  • Statistical Significance

37
Question?
  • 20 out of 100 participants 20
  • 80 out of 400 participants 20
  • 2000 out of 10000 participants 20
  • What is the difference?

38
95 Confidence Interval (95 CI)
  • 20 out of 100 participants 20
  • 95 CI 12 to 28
  • 80 out of 400 participants 20
  • 95 CI 16 to 24
  • 2000 out of 10000 participants 20
  • 95 CI 19.2 to 20.8

39
  • Confidence Interval
  • vs
  • P value

40
Roadmap
  • Bias
  • External validity
  • Chance error
  • Quality assessment tools
  • Key messages
  • Discussion questions

41
Quality assessment tools
  • Checklist the components are evaluated
    separately and do not have numerical scores
    attached to them
  • Scale each item is scored numerically and an
    overall quality score is generated.

42
Validity assessment can be used - as a
threshold for inclusion of studies - as a
possible explanation for heterogeneity - in
sensitivity analyses - as weights in
meta-analysis
43
  • You can create the tool by selecting a group of
    items according to your definition of quality,
    decide how to score each item, and use the tool
    straightaway

44
  • A systematic search of the literature identified
    9 checklists and 25 scales for assessing trial
    quality . (Moher1995 )
  • These scales and checklists include anywhere from
    3 to 57 items and take from 10 to 45 minutes to
    complete.

45
http//ssrc.tums.ac.ir/systematicreview
46
http//ssrc.tums.ac.ir/systematicreview
47
Limitations of quality assessment
  • scoring is based on reporting (rather than doing
    appropriately in the study.

48
Trial quality and estimated treatment effect
Generation of allocation sequence
Empirical studies show that inadequate quality of
trials may distort the results of trials Juni et
al BMJ 2001, 32342-6
Concealment of allocation
Double blinding
Note RORlt1 indicates that inadequate trial
design was associated with larger estimated
treatment effects
49
Roadmap
  • Bias
  • External validity
  • Chance error
  • Quality assessment tools
  • Key messages
  • Discussion questions

50
Key messages
  • Different aspects of quality must considered in a
    study review
  • Sources of bias and chance error must be
    considered for quality assessment of a study
  • External validity is more or less a conceptual
    concept

51
Discussion questions
  • When we can look at external validity of a study?
  • Can we use quality scores for weighting studies?
  • Can we create a quality assessment tool for our
    specific study?
  • How we must deal with unpublished information
    which could be necessary for quality judgment?
Write a Comment
User Comments (0)
About PowerShow.com