HSS4303B - PowerPoint PPT Presentation

1 / 51
About This Presentation
Title:

HSS4303B

Description:

HSS4303B Intro to Epidemiology ... Pairs in which both the case and the controls were exposed 2. Pairs in which neither the case nor the control was exposed 3. – PowerPoint PPT presentation

Number of Views:101
Avg rating:3.0/5.0
Slides: 52
Provided by: Raywa8
Category:
Tags: hss4303b | pairs

less

Transcript and Presenter's Notes

Title: HSS4303B


1
HSS4303B Intro to Epidemiology
  • Mar 8, 2010 Matched Studies

2
Summary from Last Time
  • Case control study design
  • Sources of cases and controls
  • Problems in selection of controls
  • Practical and conceptual problems
  • Matching
  • Recall problems
  • Limitation in recall
  • Recall bias
  • Multiple controls
  • Type of case control studies
  • Nested case control study
  • Prevalence study

3
Summary of related studies
Table 10-10. Finding Your Way in the Terminology Jungle
Case-control study     Retrospective study
Cohort study Longitudinal study Prospective study
Prospective cohort study Concurrent cohort study Concurrent prospective study
Retrospective cohort study Historical cohort study Nonconcurrent prospective study
Randomized trial     Experimental study
Cross-sectional study     Prevalence survey
4
Review of Cohort studies
5
Design of cohort study (1)
6
Design of cohort study (2)
7
Prospective vs Retrospective Cohort
  • Prospective study
  • Identify a population and follow them
    prospectively until events develop
  • Concurrent cohort
  • Longitudinal study

8
Cohort study prospective design
Pitfalls of the study Loss of subjects Loss of
investigators Lifestyle changes in the subjects
9
Prospective vs Retrospective Cohort
  • Retrospective study
  • Identify a population and observe the events as
    they occur and retrospectively determine their
    exposure status from historical records
  • Non-current prospective study
  • Historical cohort study

10
Cohort study retrospective study
Pitfalls of the study Availability of
records Quality of records Recall bias
11
Prospective and retrospective studies
  • The designs of both prospective and retrospective
    study are similar
  • Exposed and unexposed population are compared for
    the events
  • Difference in time frame
  • Prospective study forward time frame
  • Retrospective study historical records for
    similar period of time as prospective study

12
Prospective and retrospective studies
13
Potential biases in cohort studies
  • Bias in assessment of the outcome
  • Information on exposure status biases outcome
    status
  • Information bias
  • Difference in available information for the
    exposed and unexposed
  • Biases from non-response and losses to follow-up
  • Attrition rate creates study power problems
  • Analytic biases
  • Subjectivity at the time of analyses

14
Table 82. Comparison of the Attributes of Retrospective and Prospective Cohort Studies.
Attribute Retrospective Approach Prospective Approach
Information Less complete and accurate More complete and accurate
Discontinued exposures Useful Not useful
Emerging new exposures Not useful Useful
Expense Less costly More costly
Completion time Shorter Longer
15
Advantages and Disadvantages of Cohort Studies.
Advantages Disadvantages
Direct calculation of risk ratio (relative risk) Time consuming
May yield information on the incidence of disease Often requires a large sample size
Clear temporal relationship between exposure and disease Expensive
Particularly efficient for study of rare exposures Not efficient for the study of rare diseases
Can yield information on multiple exposures Losses to follow-up may diminish validity
Can yield information on multiple outcomes of a particular exposure Changes over time in diagnostic methods may lead to biased results
Minimizes bias  
Strongest observational design for establishing cause and effect relationship  
16
Review of Odds Ratios (Case-Control Study)
  Cases Controls
Exposed 6 3
Nonexposed 4 7
  10 10
Compute odds ratio of this dataset
17
Case control study of 10 unmatched subjects
summary
Figure 11-8 A case-control study of 10 cases and 10 unmatched controls.
  Cases Controls
Exposed 6 3
Nonexposed 4 7
  10 10
18
But What if Data is Matched?
  • Why do we match again?

19
Matched case control study
  • Cases are matched with the controls on specific
    variables
  • Cases and controls are analyzed in pairs rather
    than individual subjects

1. Pairs in which both the case and the
controls were exposed 2. Pairs in which neither
the case nor the control was exposed 3. Pairs
in which the case was exposed but not the
control 4. Pairs in which the control was exposed
and not the case
Concordant pairs Discordant pairs
20
Data
Pair Outcome Yes (cases) Outcome No (controls)
1 2 3 4 Exposed Not exposed Not exposed Exposed Exposed Exposed Exposed Not exposed
Eg, outcome getting the runs (the cases) vs
not getting the runs (controls) exposure
did you attend the picnic and eat the egg salad?
confounder lactose intolerance (?)
21
Data
Pair Outcome Yes (cases) Outcome No (controls)
1 2 3 4 Exposed Not exposed Not exposed Exposed Exposed Exposed Exposed Not exposed
Assume this is an unmatched study. How does the
contingency table look?
22
Data
Pair Outcome Yes (cases) Outcome No (controls)
1 2 3 4 Exposed Not exposed Not exposed Exposed Exposed Exposed Exposed Not exposed
Outcome (cases) No outcome (controls) Totals
Exposed (picnic) 2 3 5
Not exposed (no picnic) 2 1 3
Totals 4 4 8
Odds ratio?
(2x1)/(3x2) 0.33
23
Data
Pair Outcome Yes (cases) Outcome No (controls)
1 2 3 4 Exposed Not exposed Not exposed Exposed Exposed Exposed Exposed Not exposed
Now lets organize the data considering that its
a matched study
24
Data
Pair Outcome Yes (cases) Outcome No (controls)
1 2 3 4 Exposed Not exposed Not exposed Exposed Exposed Exposed Exposed Not exposed
  Controls Controls
    Exposed Not Exposed
Cases Exposed
Cases Not Exposed
25
Data
Pair Outcome Yes (cases) Outcome No (controls)
1 2 3 4 Exposed Not exposed Not exposed Exposed Exposed Exposed Exposed Not exposed
  Controls Controls
    Exposed Not Exposed
Cases Exposed 1 1
Cases Not Exposed 2 0
26
Concordant and discordant pairs
  Control Control
    Exposed Not Exposed
Case Exposed a b
Case Not Exposed c d
a pairs both case and the control were
exposed b pairs case was exposed but not the
control c pairs case was not exposed but the
control is exposed d pairs neither case nor
control was exposed a and d pairs are concordant
pairs b and c pairs are discordant pairs
27
Data
Pair Outcome Yes (cases) Outcome No (controls)
1 2 3 4 Exposed Not exposed Not exposed Exposed Exposed Exposed Exposed Not exposed
  Controls Controls
    Exposed Not Exposed
Cases Exposed 1 1
Cases Not Exposed 2 0
concordant
28
Data
Pair Outcome Yes (cases) Outcome No (controls)
1 2 3 4 Exposed Not exposed Not exposed Exposed Exposed Exposed Exposed Not exposed
  Controls Controls
    Exposed Not Exposed
Cases Exposed 1 1
Cases Not Exposed 2 0
concordant
discordant
29
Individual matching (11)
  • Echovirus meningitis outbreak, Germany, 2001
  • Was swimming in pond A risk factor?
  • Case control study with each case matched to one
    control

Concordant pairs
Source A Hauri, RKI Berlin
30
Odds ratio for matched pairs
  • Odds ratio for matched pairs is
  • The ratio of the ratio of the discordant pairs
  • The ratio of the number of pairs in which the
    case was exposed and the control was not, to the
    number of pairs in which the control was exposed
    and the case was not exposed
  • b / c
  • The ratio of the number of pairs that support the
    hypothesis of an association to the number of
    pairs that negate the hypothesis of an association

?
31
Matched cases and controls 2 x 2 table
  Control Control
    Exposed Not Exposed
Case Exposed 2 4
Case Not Exposed 1 3
Concordant pairs 2 pairs (exposed and exposed)
and 3 pairs (not exposed and not
exposed) Discordant pairs 4 pairs (exposed and
not exposed and 1 pair (not exposed and
exposed) Odds ratio b / c 4 / 1 4
32
Picnic Data
Pair Outcome Yes (cases) Outcome No (controls)
1 2 3 4 Exposed Not exposed Not exposed Exposed Exposed Exposed Exposed Not exposed
Matched odds ratio
b/c 1/2 0.5
  Controls Controls
    Exposed Not Exposed
Cases Exposed 1 1
Cases Not Exposed 2 0
33
Remember this example?
Concordant pairs
Source A Hauri, RKI Berlin
34
Individual matching (11) Analysis
Echovirus meningitis outbreak, Germany, 2001 Was
swimming in pond A risk factor? Case control
study with each case matched to one control
35
What Else Can We Do With These Data?
  • Remember the Chi-Square test?

36
Chi-square
  • Chi square is a non-parametric test of
    statistical significance for bivariate tabular
    analysis
  • It lets you know the degree of confidence you can
    have in accepting or rejecting an hypothesis
  • It provides information on whether or not two
    different samples are different enough in some
    characteristic or aspect of their behaviour

37
Chi Square
  • There are actually all sorts of chi-square tests
    out there
  • Pearsons
  • Yates
  • Mantel-Haenszel
  • Portmanteau
  • Fishers Exact

lt- Well be using this one
38
Also need to compute something called degrees of
freedom
39
Chi-square calculation
Variable 1
 Variable 2  Data type 1  Data type 2  Totals
 Category 1  a b a b
 Category 2  c d c d
 Total a c b d a b c d N
Chi square N(ad-bc)2 / (ab) (cd) (bd) (ac)
The degrees of freedom (number of columns minus
one) x (number of rows minus one) not counting
the totals for rows or columns. For our data
this gives (2-1) x (2-1) 1.

40
Chi-square calculations
Number of animals that survived the treatment
   Dead  Alive Total
 Treated  36  14  50
 Not treated  30  25  55
 Total  66  39  105
(36x25)/(14x30) 2.14
Odds ratio
Chi square
105(36)(25) - (14)(30)2 / (50)(55)(39)(66)
3.418
(2-1)x(2-1) 1
DOF
Now what do we do with this?
41
Degrees of freedom and chi square table
Df 0.5 0.10 0.05 0.02 0.01 0.001
1 0.455 2.706 3.841 5.412 6.635 10.827
2 1.386 4.605 5.991 7.824 9.210 13.815
3 2.366 6.251 7.815 9.837 11.345 16.268
4 3.357 7.779 9.488 11.668 13.277 18.465
5 4.351 9.236 11.070 13.388 15.086 20.517
Using the Chi square table The corresponding
probability is 0.10ltPlt0.05. This is below the
conventionally accepted significance level of
0.05 or 5, so the null hypothesis that the two
distributions are the same is verified. In other
words, when the computed x2 statistic exceeds the
critical value in the table for a 0.05
probability level, then we can reject the null
hypothesis of equal distributions. Since our x2
statistic (3.418) did not exceed the critical
value for 0.05 probability level (3.841) we can
accept the null hypothesis that the survival of
the animals is independent of drug treatment
42
p-value
  • The p-value is the probability that your sample
    could have been drawn from the population being
    tested given the assumption that the null
    hypothesis is true.
  • A p-value of .05, for example, indicates that you
    would have only a 5 chance of drawing the sample
    being tested if the null hypothesis was actually
    true.
  • A p-value close to zero signals that your null
    hypothesis is false, and typically that a
    difference is very likely to exist.
  • Large p-values closer to 1 imply that there is no
    detectable difference for the sample size used.
  • A p-value of 0.05 is a typical threshold used to
    evaluate the null hypothesis.

43
p-value
  • So what does a p-value of 0.10 mean?
  • We fail to reject the null hypothesis

44
What is the null hyp that we are testing?
  • In cohort studies, the chi-square test tells us
    whether to accept or reject the null hypothesis
    that RR1
  • In case-control studies, the chi-square test
    tells us whether or accept or reject the null
    hypothesis that OR1
  • Piersons chi-square is NOT appropriate to test
    the null hypothesis of whether the matched study
    pairs are related
  • For that we use something called McNemars test,
    which we will not cover in this class

45
Remember the Picnic Data
Pair Outcome Yes (cases) Outcome No (controls)
1 2 3 4 Exposed Not exposed Not exposed Exposed Exposed Exposed Exposed Not exposed
Matched odds ratio
b/c 1/2 0.5
  Controls Controls
    Exposed Not Exposed
Cases Exposed 1 1
Cases Not Exposed 2 0
Pretend its unmatched and construct the
contingency table
46
Data
Can you compute a chi-square for this?
Pair Outcome Yes (cases) Outcome No (controls)
1 2 3 4 Exposed Not exposed Not exposed Exposed Exposed Exposed Exposed Not exposed
Outcome (cases) No outcome (controls) Totals
Exposed (picnic) 2 3 5
Not exposed (no picnic) 2 1 3
Totals 4 4 8
Odds ratio?
(2x1)/(3x2) 0.33
47
Caveat to Piersons Chi Square
  • Typically, does not work well if any cell has a
    count of lt5
  • If it does, better off using Fishers Exact Test
    or some other similar test
  • We will not be doing that in this class

48
Summary
Chi square (ad-bc)2 (abcd) / (ab) (cd)
(bd) (ac)
The degrees of freedom equal (number of columns
minus one) x (number of rows minus one) not
counting the totals for rows or columns.
49
If youre lazy
  • Lots of online OR, RR and chi-square calculators
  • Eg,
  • http//faculty.vassar.edu/lowry/odds2x2.html

50
Homework
12 women with uterine cancer and 12 without were
asked if theyd ever used supplemental estrogen.
Each woman with cancer was matched by race,
weight and parity to a woman without cancer
pair Women with cancer Women without cancel
1 2 3 4 5 6 7 8 9 10 11 12 Estrogen user Estrogen nonuser Estrogen user Estrogen user Estrogen user Estrogen nonuser Estrogen user Estrogen user Estrogen nonuser Estrogen nonuser Estrogen user Estrogen user Estrogen nonuser Estrogen nonuser Estrogen user Estrogen user Estrogen nonuser Estrogen nonuser Estrogen nonuser Estrogen nonuser Estrogen user Estrogen user Estrogen nonuser Estrogen nonuser
51
Homework
  1. What is the estimated relative risk of cancer
    when analyzing this study as a matched-pairs
    study?
  2. What is the estimated relative risk of cancer
    when analyzing this study as an unmatched study?
  3. What is the chi square statistic of the
    (unmatched) relationship between cancer and
    estrogen intake?
  4. What is the null hypothesis being tested by the
    chi-square test?
  5. What does the p-value of the statistic tell you
    about whether to reject or accept the null
    hypothesis?
Write a Comment
User Comments (0)
About PowerShow.com