Title: M2 Medical Epidemiology
1M2 Medical Epidemiology
- How to Fairly Compare Disease Frequencies Between
Groups
2How to Fairly Compare Disease Frequencies Between
Groups
- Simple epidemiologic indices review/summary
- Interpreting epidemiologic comparisons overview
- chance
- bias
- confounding
- Adjustment of epidemiologic indices for
confounding - direct
- indirect
3Simple epidemiologic indices review/summary
- Questions
- What fraction of a group has the condition now?
- What fraction of the community carries the
condition at any one time? - What is the endemic level of the condition,
relative to the size of a community? - What fraction of UI students has hay fever now?
4 Simple epidemiologic indices review/summary
Answer
- Point prevalence, or prevalence for short.
- A dimensionless proportion.
- Sometimes erroneously called prevalence rate
5 Simple epidemiologic indices
review/summary Questions
- What is the cumulative risk (probability) of
developing a condition at least once during a
fixed time period? - What fraction of a group can we predict will have
developed a condition over a given time period,
or during an epidemic? - Why must I take this medicine, doctor? What are
my chances of a heart attack in the next ten
years, if I don't?
6 Simple epidemiologic indices review/summary
Answers
- Cumulative incidence
- A dimensionless proportion
- Called the attack rate when describing infectious
disease outbreaks, - e.g., The attack rate in the county during the
West Branch hepatitis outbreak was estimated as
6.565 cases/1000 population. - One women in 11 (9) is expected to develop
breast cancer during her lifetime.Â
7 Simple epidemiologic indices
review/summary Questions
- How strong is the process causing new cases?
- How many new cases occur per person per unit
time, or other unit of experience (e.g., per
passenger-trip, per passenger-mile traveled)? - How many new cases of esophageal cancer occur in
Illinois/1000 population per year? - How many ruptured spleens occur from automotive
accidents in Illinois, per million person-miles
traveled? - How many new HIV infections occur per 1000 acts
of vaginal intercourse? Of anal intercourse?
8Simple epidemiologic indices review/summaryAnsw
er
- Incidence density (rate, dimension new cases
per unit of experience, such as person-year,
passenger-mile, sexual acts) - e.g. 5 new cases per 1000 persons per year
- 5 new cases per 1000 person-years
- .005 new cases per person per year
- Units e.g.
- New cases / persons x years
- New cases / million passenger-miles
- New cases / 100 sexual acts
9 Simple epidemiologic indices
review/summary Examples
- Mortality rate The death density, i.e. the
incidence density of death. - For political units in which records are kept
routinely and where the population size may be
constantly changing, often calculated using the
mid-year population as denominator. - The mid-year population approximates the total
person-years exposure in the population for the
full year.
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11 Simple epidemiologic indices
review/summary Examples
- Case-Fatality rate The cumulative incidence of
death due to a disease, during the course of the
disease. - i.e. the fraction of cases which result in death
from the illness. - Equivalently, the chance of dying from a case of
the disease.
12Case Fatality Rate
- The cumulative incidence of death due to a
disease, during the course of the disease. - i.e. the fraction of cases which result in death
from the illness. - Equivalently, the chance of dying from a case of
the disease. - Number of deaths from a specific disease/number
of cases of the disease. - Usually overestimates. Why?
13Simple epidemiologic indices review/summary
14Simple epidemiologic indices review/summary
- the rate (incidence density) of 52 per 100
person-years or, equivalently, 1 per 100
person-weeks.
Incidence density (ID) vs. Cumulative incidence
(CI) Question In a population of 100
persons, deaths occur at the rate (incidence
density) of 52 per 100 person-years or,
equivalently, 1 per 100 person-weeks. After
one year of this, what proportion of the 100
people will have died?
15 Simple epidemiologic indices review/summary
16Simple epidemiologic indices review/summary
- For all factors stable,
- P ID x MD
- where
- P Prevalence
- MD Mean Duration
17Example
- If incidence is 12 new cases per 1000
person-years. - And duration of illness is 6 months.
- What is the average prevalence?
- 6 per thousand
18Simple epidemiologic indices review/summary
Relative Risk RReither CUMULATIVE INCIDENCE
RATIO CIR CI1/CI0 or INCIDENCE DENSITY RATIO
IDR ID1/ID0
19Association a statistical feature of
comparisons(s), with six possible explanations
- Causation, with exposure promoting disease
- Chance
- Bias 2 categories
- Selection Bias
- Measurement bias
- Confounding variable(s)
- Causation, with disease promoting appearance of
the exposure - Always ask are there plausible alternative
explanations for the data?Â
20Chance
- due to random variation from sampling or
measurement - addressed using
- statistical tests of hypotheses (p-values)
- confidence intervals
- power analyses
21Bias. 2 types
- Selection, the way you selected subjects for the
study biased your results. - Measurement, the way you measured variables in
your subjects biased the results.
22Selection bias
- Bias from the use of a non-representative group
as the basis of generalization to a broader
population of subjects or patients. - For instance, a common bias of this type appears
when - the prognosis of patients newly diagnosed with a
given disease is inferred from the study of
hospitalized patients with this disease at a
major referral center, - and
- the disease in question has a broad spectrum
behavior.Â
23Selection bias
- More commonly
- We have 2 groups
- Exposed and unexposed
- We compare them with regards to an outcome.
- But the way we selected the 2 groups causes
differences in the outcome that have nothing to
do with the exposure. - Example if we used hospitalized smokers as the
exposed and healthy volunteer non-smokers as the
unexposed.
24Selection Bias (Admission Rate -- Berkson)
25Selection Bias (Berkson)
Necropsies
26More Selection Biases
- Whenever we compare a group of patients who use a
drug to those who dont in a non experimental
observational study (cohort, not randomized). - The 2 groups differ in many respects.
- One of the most important respects is that the
patients on the drug have a reason to be on it
(indication). The others dont. Called Bias by
indication.
27Bias by indication
- For example calcium channel blockers have 2
indications hypertension and coronary disease. - If you compare hypertensive patients who are on
Ca blockers to those who are on other agents (not
randomized, totally at the discretion of their
doctors), we would find
28Bias by indication
- Patient on Ca blockers have higher prevalence of
CAD - Also higher prevalence of risk factors for CAD
- So if you do an observational study of
hypertensive patients, comparing the outcome in
those on Ca blockers to those on other agents,
you may find
29Bias by indication
- That patients on Ca blockers have much worse
outcomes. - This is bias by indication.
- You can adjust and correct for preexisting heart
disease and for risk factors, but may not be
enough.
30Bias by indication
- If you compare hypertensive patients who are on
minoxidil or hydralazine to those on other agents
you find - That patients on those agents have higher BP
- Is it because they dont work as well ?
- No, the opposite. They are reserved for those
with severe resistant hypertension. - That is the indication for those agents.
31Survivor Treatment Bias
- Patients who received statin during admission for
MI had much lower in-hospital mortality. - Statin?
- The ones who died are different.
- Some died very soon after admission (no statin).
32Competing Medical Issues Bias
- Some were so sick that they were treated with
multiple drugs, modalities, ICU etc. - No statin
33Bias by contraindication
- If you compare hypertensive patients who are on
beta blockers to those on other agents you find
that they have better outcomes. - That does not mean they are better for you. No,
this comparison is biased by contraindication. - Beta blockers are contraindicated in severe COPD,
CHF, PVD etc.
34Measurement bias
- Systematic or non-uniform failure of a
measurement process to accurately represent the
measurement target, e.g. - different approaches to questioning, when
determining past exposures in a case-control
study. - more complete medical history and physical
examination of subjects who have been exposed to
an agent suspected of causing a disease than of
those who haven't been exposed to the agent.Â
35- Measurement Bias -- Recall Bias
36Measurement Bias
Family information biasThe flow of family
information about exposures and illnesses is
stimulated by and directed to a new case in its
midst.
37Measurement Bias
38Measurement Bias -- Family Information
39Avoid confounding
- Confounding refers to distortion of the true
biologic relation between an exposure and a
disease outcome of interest, due to a research
design and analysis that fail to properly account
for additional variables associated with both.
Such variables are referred to as confounders or,
less formally, as lurking variables.Â
40Confounding
41Confounding
42Confounding
43Direct Rate Adjustment
44Age specific mortality rate
45Direct Rate Adjustment
46Direct Rate Adjustment
47Direct Rate Adjustment
48Direct Rate Adjustment
49Direct Rate Adjustment
50Direct Rate Adjustment
51Direct Rate Adjustment
52Indirect Rate Adjustment
- Calculate Expected Deaths
- ?
- Divide Observed Deaths by Expected Deaths (O/E)
- ?
- SMR (Standardized Mortality Ratio)
53Indirect Rate Adjustment
- Calculate SMR standardized mortality ratio.
- SMR Observed mortality / Expected mortality
- To Calculate that you need to calculate expected
mortality.
54Indirect Rate Adjustment
55Indirect Rate Adjustment
56Indirect Rate Adjustment
- Calculate Expected Deaths
- ?
- Divide Observed Deaths by Expected Deaths (O/E)
- ?
- SMR (Standardized Mortality Ratio)
57Indirect Rate Adjustment
- STANDARDIZED MORTALITY RATIO (SMR)
- OBSERVED DEATHS/EXPECTED DEATH
- 54/73.2 74
58Indirect Rate Adjustment
59Indirect Rate Adjustment
- STANDARDIZED MORTALITY RATIO (SMR)
- OBSERVED DEATHS/EXPECTED DEATHS
- 22/38 58
60Proportional Mortality
- The 4 leading causes of death in Chamapign County
are. - CAD is the leading cause being responsible for
32 of all deaths in the County in 2002.
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62Proportional Mortality
- Number of deaths from a specific cause/ Total
number of deaths in same time
63Proportional Mortality RatioPMR
- Proportional Mortality Ratio
- Proportion of deaths from specified cause
/Proportion of deaths from specified cause in
comparison population
64Proportional Mortality RatioPMR
- CAD is responsible for 32 of all deaths in the
County in 2002. (Compared to 40 in the State of
Illinois) - PMR 32/40 32/40 0.8
- Is that good or bad ?
65PMR
- Relative frequency of other causes of death can
affect the PMR for the cause of interest - An epidemic of a fatal disease in your population
will decrease PMR for all other causes - Low mortality from a very common cause (CAD for
example) in your population will increase PMR for
all other causes
66PMR
- Fast, easy, cheap
- Can be calculated when all you have is death
certificates - Dont need information on demography of
population. - Leading Causes of Death
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68How does one decide whether to present a set of
data using crude, adjusted, or category-specific
indices?
If possible, use crude indices only to produce a
quick picture of the magnitude of a problem in a
population, for the purpose of establishing a
prima facie need for public health and/or medical
services, and as a first-cut at estimating the
resources needed.
69How does one decide whether to present a set of
data using crude, adjusted, or category-specific
indices?Use category-specific indices when you
wish to focus attention on the problem in one or
a few population subgroups, when space is
available to give a detailed presentation in
order to communicate the fullest understanding of
the data, and especially if specific indices vary
between two populations being compared in a
different manner in different population
subgroups (e.g. effects are modified by age, sex
or race).
70How does one decide whether to present a set of
data using crude, adjusted, or category-specific
indices?
- Use adjusted rates when
- you wish to avoid possible confounding,
- but do not have the space to present the full
schedules of specific indices, or your audience
does not have the patience for that, - Avoid adjusted rates when
- there variable being adjusted out is an effect
modifier, that is, the relationship between
groups being compared changes from stratum to
stratum -- more later on this.
71How does one decide whether to present a set of
data using crude, adjusted, or category-specific
indices? Note that
- crude indices require one only to know the
numerator cases and the denominator (population
size or exposure-time) of each total population
to be compared - indirect adjustment requires knowledge of only
the numerator cases from the total populations
and the (joint) distributions of confounder(s) in
the populations to be compared - direct adjustment and specific rates require
knowledge of both the numerator cases and the
corresponding denominators within levels of the
confounding variable(s), for all populations
under comparison.
72Note that
- A directly adjusted rate of a single community
means nothing by itself. It is only used to
compare different communities and only if all of
them are adjusted to the same standard
population. - SMR of a single community IS useful. It does by
itself compare 2 populations.