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Introduction to Clinical Epidemiology Class 2

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Title: Introduction to Clinical Epidemiology Class 2


1
Introduction to Clinical EpidemiologyClass 2
  • Spring 1999 Elective
  • UT-H HSC
  • Jan Risser, PhD and Will Risser, MD PhD

2
Case Reports / Case Series
  • Epidemiology is involved with
  • What case definition
  • When time
  • Where place
  • Who person
  • Why causes

3
Case Reports / Case Series
  • Case reports describe the experience of a single
    patient or group of patients with a similar DX.
  • Does halothane cause hepatitis
  • rare disease (halothane induced hepatitis)
  • single anesthetist with recurrent hepatitis
  • symptoms could be elicited with halothane
  • hepatitis could be documented
  • single case report clarified the
    halothane/hepatitis association

4
Case Reports / Case Series
  • Case reports are susceptible to bias.
  • NEVER use case reports to make treatment
    decisions.
  • CATS (critically appraised topics - PBL)
  • avoid cluttering your mind doing a CAT on a case
    series - some are very interesting - but the
    point of a CAT is to help in patient care - and
    more rigorous study designs are necessary.

5
Case Series
  • Over a period of 18 months,
  • 65 individuals were seen with
  • fever, hypotension, diffuse rash, desquamation,
    and impairment of multiple organ systems.
  • 59 female, 6 male
  • 8 deaths
  • age range 8 to 52.

6
Development of Case Definition
  • Case definition
  • fever, hypotension, rash, and desquamation
  • involvement of 3 organ systems
  • absence of evidence of other etiologies

7
CDC investigation of Toxic Shock Syndrome
  • 1978 - new shock illness described
  • staphylococcus aureus infections Todd et al.
  • 1979 - 3 new cases reported
  • Wisconsin State Health Department - all women
  • Surveillance began - by January of 1980 -
  • 12 cases, all women identified
  • 11/12 menstruating at onset of illness.
  • By May of 1980, 55 cases reported / 7 deaths

8
Epidemiologic Approach
  • What cases meeting TSS case definition
  • When since Todds 1979 report
  • Where any where in the U.S. (a bit vague)
  • Who women (age, menstruating)
  • Why proximate - staphylococcus aureus
  • distal - Menstruation?

9
How to evaluate case series
  • Is this rare?
  • How would we determine this?
  • What would we use as denominator?
  • Is the association with menstruation real?
  • What is the case-fatality rate?
  • Is this rate biased?

10
Definitions in Epidemiology
  • Bias
  • Confounding
  • Frequency Measures
  • Prevalence
  • Incidence
  • Measures of Association
  • Causal Inference

11
Frequency measures
  • Ratio value obtained by dividing one quantity
    by another.
  • The ratio of male to female birth in U.S. in
    1979
  • 1,791,000 / 1,703,000 1.052
  • Proportion a ratio where the numerator is
    always part of denominator
  • The proportion of males among all birth in 1979
  • 1,791,000 / 3,494,000 51.3
  • Rate a change in one quantity per unit change
    in another The rate of developing lung cancer
    during a 5 year study is
  • 7 / 50 persons5 years or 7 / 250 person-years
  • 0.028 cases of lung cancer per person-year

12
Prevalence
  • Prevalence (a proportion)
  • the proportion of the population at a given time
    that have the factor of interest.
  • Prevalence of an exposure
  • what proportion of this class have BMI gt 25
  • Prevalence of outcome
  • what proportion of this class have hypertension
  • Point Prevalence - existing cases at a point in
    time
  • Period Prevalence - existing cases plus those
    developing over a specified period of time

13
Prevalence
  • Numerator
  • all those with the attribute at a particular time
  • Denominator
  • the population at risk of having the attribute
    during that same time period

14
Prevalence
  • Choice of denominator may be difficult.
  • in 1997 there were 1854 cases of syphilis in
    Harris County
  • what should be used for the denominator?
  • 55 cases of a new disease reported in three
    states
  • what should be used for the denominator?

15
Incidence
  • Incidence density the probability (risk) of an
    individual developing the disease (outcome)
    during a specific period of time, using total
    person-time as the denominator. One subject
    followed one year contributes one person-year
    (PY).

16
Incidence
  • Cumulative Incidence the probability (risk) of
    an individual developing the disease (outcome)
    during a specific period of time.

17
Incidence, Prevalence
Onset
A
B
C
D
E
F
1994
1986
1988
1990
1992
What was prevalence of disease in 1992? What is
risk of developing disease within 2 years?
1 case (A) / 4 subjects) 25
18
Incidence, Prevalence
Incidence within 2 years
1/6 17
19
Measure of Disease Association
  • Ratios
  • rate ratio, risk ratio or relative risk (all
    abbreviated RR)
  • odds ratio (OR), and
  • prevalence ratios.
  • Difference measurements of disease frequencies
    include attributable risk

20
Case Reports and Medical Advancement
  • These all started with case reports - what study
    design next?
  • Lyme Disease (1975)
  • Legionellosis (1976)
  • AIDS (1981)
  • Hantavirus (1993)
  • DES exposure (1989)
  • EMS l-tryptophan (1970)
  • TSS (1980)

21
What next?
  • CDC outbreak investigation guidelines
  • create case definition
  • active case finding
  • descriptive epidemiology
  • characterize the cases person, place, time
  • formulate hypotheses

test hypotheses with case-control studies
22
The case-control study
  • Retrospective study design
  • identifies cases
  • finds controls
  • asks about history of exposure
  • Measure of association
  • odds ratio

23
Retrospective vs. prospective study designs
Retrospective (Case-control)
Disease
Present (Cases)
Absent (Controls)
Risk Factor
a
Present (Exposed)
b
Prospective (Cohort)
d
c
Absent (Not Exposed)
24
Case control studies
Disease Status
Yes
No
Total
b
a
Yes
Exposure Status
a b
No
d
c
c d
b d
a c
N
25
Case-control studies
  • Selection of cases
  • Case definition is very important
  • All cases have an equal probability for
    selection reduce selection bias
  • Selection of controls
  • Identical in every respect except disease of
    interest

26
Case control studies
  • Strengths
  • Good for unusual or rare diseases
  • Smaller in size, quick, easy, cost-effective
  • Can use secondary data on disease
  • More easily replicated
  • Can test hypotheses
  • Weaknesses
  • Uncertainty is exposure-disease time relationship
  • Representativeness of cases or controls
  • Memory problems
  • Rare exposure a problem
  • Survivor problem
  • Bias potential (selection)

27
Case-control and the Odds Ratio
Disease
Y
N
How much risk is too much risk?
a
b
ab
Y
Exposure
cd
d
c
N
ac
N
bd
Odds of exposure if case a / (ac) / c /
(ac) a/c Odds of exposure if control b /
(bd) / d /(bd) b/d Odds exposure given
disease (a/c)/(b/d) (ad)/(cb)
28
Case-control and the Odds Ratio
Y
N
Y
N

29
TSS - 3 case-control studies
(50/0) / (43/7) 17.4
(30/1) / (71/22) 6.4
(12/0) / (32/8) 6.5
NOTE A correction factor of 0.5 was added to
each cell when 1 cell contained 0
30
Study Methods
  • CDC - 1 52 TSS cases with age-matched
    acquaintance controls
  • Wisconsin Study 31 cases, 93 controls from
    gynecologic clinics, matched only for
    menstruation
  • Utah 12 TSS cases, 40 neighborhood-matched
    controls

31
Matched Pair analysis
OR 16 /1 16
How many cases used tampons continually? How many
cases did not use tampons continually? What about
controls?
32
How Big is Big?
  • Is an OR of 16 big?
  • Is an OR of 16 statistically significant?

33
BRIEF INTERLUDE - STATISTICS
  • Before proceeding we need to know a little about
    inference and statistical association

34
How Big is Big?
  • Is an OR of 16 big?
  • Is an OR of 16 statistically significant?

35
  • The whole purpose for doing research is to learn
    something new.
  • The result of a research project is the goal
  • this is the important information that the
    researchers want the informed public to remember.
  • As we read the literature - we should ask
    ourselves
  • What is the major result?
  • What does this result mean?

36
Statistical Issues in Epidemiology
  • We have to remember that epidemiologic studies
    draw inferences about the experiences of an
    entire population based on an evaluation of only
    a sample.

37
Statistical Issues in Epidemiology
  • When studying a sample of the population the
    observed associations can be due to
  • Bias
  • Confounding
  • Chance
  • Or it can be due to a true association

38
Statistical Issues in Epidemiology
  • What do we mean by chance and how does this
    relate to determining a
  • true association
  • Where do we start?

39
Statistical Issues in Epidemiology
  • Association does not mean cause and effect
  • Assessing causality involves judgement based on
    the totality of evidence
  • Making judgements about causality involves a
    chain of logic that addresses two major areas

1. Whether the observed association is valid
2. Whether the totality of evidence supports a
judgement of causality
40
Statistical Issues in Epidemiology
  • The evaluation of the role of chance is done in 2
    steps

1. Estimate the magnitude of the association
  • We do this with OR, RR, correlations, AR

2. Hypothesis testing
  • Calculate a test statistic, obtain a p value or
    confidence interval

41
Statistical Issues in Epidemiology
  • p-value the probability of obtaining a sample
    showing an association of the observed size or
    larger by chance alone under the hypothesis that
    no association exists.
  • Confidence interval a range of values that one
    can say, with a specific degree of confidence,
    contains the true population value.
  • Sample statistic a number which describes some
    aspect of a sample which represents a population.

42
Statistical Issues in Epidemiology
  • This can be done by calculating a test statistic
    of the general format
  • The selection of the particular test used depends
    on the specific hypothesis being tested and
    characteristics of the collected data.

43
Statistical Issues in Epidemiology
  • If we were to toss a coin 30 times while trying
    to determine if it was a fair coin, and we got 24
    heads, how would we determine if 24 was different
    that the expected number?
  • Observed - Expected (under the null)
  • Estimated variability in the sample
  • We observed 24 - how many did we expect?
  • How would we estimate variability?

44
Statistical Issues in Epidemiology
  • Observed - Expected (under the null)
  • Estimated variability in the sample
  • 24/30 - 15/30
  • ? Variability
  • Variability p(1-p)/n1/2 (24/306/30)/301/2
    0.07
  • (24/30) - (15/30) /0.07 4.3
  • p lt0.001

45
Statistical Issues in Epidemiology
  • The p value indicates the possibility that
    findings at least as extreme as those observed
    were unlikely to have occurred by chance alone.
  • In 1000 experiments with 30 tosses with a fair
    coin - we would expect only 1 to result in 24
    heads or more.

46
Statistical Issues in Epidemiology
  • A statistically significant finding does not mean
    that the results DID NOT occur by chance - only
    that it is unlikely that they occurred by chance.
  • A non-significant finding does not mean that the
    results DID occur by chance.

47
Statistical Issues in Epidemiology
  • More often in epidemiology we are examining
    discrete data - the 2 x 2 table presents discrete
    data. Here we are testing whether the
    distribution of counts in the 4 cells is
    different than expected under the null
    hypothesis.

48
Statistical Issues in Epidemiology
  • But how do we determine the expected value for
    the cells of a 2 x 2 table?
  • O Observed Count in a category
  • E Expected Count in a category
  • å Sum of all categories
  • df Degrees of freedom

49
Statistical Issues in Epidemiology
  • All tests of statistical significance lead to a
  • probability statement
  • usually expressed as a p value
  • The p-value obtained is based on the principle
    that, given the distribution of interest, it is
    possible to calculate the exact probability or
    likelihood of obtaining a result at least as
    extreme as that observed by chance alone assuming
    there is truly no association.

50
Statistical Issues in Epidemiology
  • A probability of 0.05 is the usual (arbitrary)
    cut-off level for statistical significance
  • If p lt0.05, we conclude that chance is an
    unlikely explanation for the finding. The null
    hypothesis is rejected, and the statistical
    association is said to be significant.
  • If p gt0.05, we conclude that chance cannot be
    excluded as an explanation for the finding we
    fail to reject the null hypothesis.

51
Statistical Issues in Epidemiology
  • No p value
  • however small - completely excludes chance
  • No p value
  • however large - completely mandates chance
  • p values only evaluate the role of chance
  • they say nothing about other alternative
    explanations or about causality
  • p values reflect the strength of the association
    and the study sample size

52
Statistical Issues in Epidemiology
  • A small difference may achieve statistical
    significance if the sample size is large
  • A large difference may not achieve statistical
    significance if the sample size is too small

53
Statistical Issues in Epidemiology
  • We address these problems by calculating
    confidence intervals (CI)
  • CI indicates the range within which the true
    magnitude of effect lies with a certain degree of
    assurance. The degree of assurance is defined by
    the p value you assign.
  • The CI gives all the information of a p value
    PLUS the expected range of effect sizes.

54
Statistical Issues in Epidemiology
  • If the null value is included in a 95 confidence
    interval, then the corresponding p value is, by
    definition, greater than 0.05.
  • If the null value is not included, the
    association is considered to be statistically
    significant.
  • WHAT IS THE NULL VALUE for Odds Ratios and
    Relative Risks (Rate Ratios)?

55
Statistical Issues in Epidemiology
  • Test Based CI for either OR or RR
  • NOTE variance for either RR or OR may be
    estimated using the chi-square test statistic.
    Miettinen, Am J Epidemiol 103226-235, 1976

56
Statistical Issues in Epidemiology
  • Taylor Series to estimate the lnOR variance
    Woolf, Ann Human Gen 19251-253, 1955

Note e is a function on you calculator. You
need a key marked ex and you enter the OR times e
raised to the power of the results between the
brackets .
57
Statistical Issues in Epidemiology
  • Taylor Series to estimate the lnRR variance
    Katz, Biometrics, 34469, 1973

Note e is a function on you calculator. You
need a key marked ex and you enter the OR times e
raised to the power of the results between the
brackets .
58
Statistical Issues in Epidemiology
  • Inference involves making a generalization about
    a larger group of individuals on the basis of a
    subset or sample.
  • The p value indicates the probability or
    likelihood of obtaining a result at least as
    extreme as that observed in a study by chance
    alone, assuming that there is truly no
    association between the study variables.

59
Statistical Issues in Epidemiology
  • HOWEVER Before we get to the major result - we
    need to examine several issues
  • 1. What was the question that this study
    intended to answer?
  • 2. What were the methods used to answer this
    question?
  • 3. Are there errors in the study design that
    might invalidate the results?

60
Statistical Issues in Epidemiology
  • For the purposes of critical understanding, we
    want to consider information that is often not
    given in the summary.
  • Is chance a likely explanation for the results?
  • Is selection bias a likely explanation for the
    results?
  • Is information bias a likely explanation for the
    results?
  • Are the authors conclusions reasonable in terms
    of the information presented?

61
Cancer Case Series
What next with this case-series?
62
DES exposure and Vaginal Cancer
  • matched-pair analysis (1 case, 4 controls)
  • maternal factors and breast fed
  • no statistically significant differences in
    maternal age

63
Matched Case-control
  • Case Control OR
  • prior pregnancy loss Yes 6 5
  • No 2 27
  • Estrogens this pregnancy Yes 7 0
  • No 1 32
  • Breast Feeding Yes 3 3
  • No 3 29

64
DES associated with Vaginal Carcinoma
  • What are the risks to women exposed to DES
  • How could we determine the risks?

65
Cohort studies
  • longitudinal or prospective studies
  • starts with people free of disease with varying
    degree of exposure from cause to effect
  • two points in time, individual is unit of
    observation and analysis
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