Title: Gastroenteritis at a University in Texas
1 2Session IIIPart I
- Descriptive and Analytic Epidemiology
3Session Overview
- Define descriptive epidemiology
- Define incidence and prevalence
- Discuss examples of the use of descriptive data
- Define analytic epidemiology
- Discuss different study designs
- Discuss measures of association
- Discuss tests of significance
4Todays Learning Objectives
- Understand the distinction between descriptive
and analytic epidemiology, and their utility in
surveillance and outbreak investigations - Recognize descriptive and analytic measures used
in the epidemiological literature - Know how to interpret data for measures of
association and common statistical tests
5Descriptive Epidemiology
6What is Epidemiology?
- Study of the distribution and determinants of
states or events in specified populations, and
the application of this study to the control of
health problems - Study risk associated with exposures
- Identify and control epidemics
- Monitor population rates of disease and exposure
7What is Epidemiology?
- Looking to answer the questions
- Who?
- What?
- When?
- Where?
- Why?
- How?
8Descriptive vs. Analytic Epidemiology
- Descriptive epidemiology deals with the
questions Who, What, When, and Where - Analytic epidemiology deals with the remaining
questions Why and How
9Descriptive Epidemiology
- Provides a systematic method for characterizing a
health problem - Ensures understanding of the basic dimensions of
a health problem - Helps identify populations at higher risk for the
health problem - Provides information used for allocation of
resources - Enables development of testable hypotheses
10Case Definition
- A set of standard diagnostic criteria that must
be fulfilled in order to identify a person as a
case of a particular disease - Ensures that all persons who are counted as cases
actually have the same disease - Typically includes clinical criteria (lab
results, symptoms, signs) and sometimes
restrictions on person, place, and time
11Descriptive EpidemiologyWhat?
- Addresses the question How much?
- Most basic is a simple count of cases
- Good for looking at the burden of disease
- Not useful for comparing to other groups or
populations
Race of Salmonella cases
Black 119
White 497
Pop. size
1,450,675
5,342,532
http//www.vdh.virginia.gov/epi/Data/race03t.pdf
12Prevalence
- The number of affected persons present in the
population divided by the number of people in the
population - of cases
- Prevalence -------------------------------------
---- - of people in the population
13Prevalence Example
- In 1999, a US state reported an estimated
253,040 residents over 20 years of age with
diabetes. The US Census Bureau estimated that
the 1999 population over 20 in that state was
5,008,863. - 253,040
- Prevalence 0.051
- 5,008,863
- In 1999, the prevalence of diabetes was 5.1
- Can also be expressed as 51 cases per 1,000
residents over 20 years of age
14Prevalence
- Useful for assessing the burden of disease within
a population - Valuable for planning
- Not useful for determining what caused disease
15Incidence
- The number of new cases of a disease that occur
during a specified period of time divided by the
number of persons at risk of developing the
disease during that period of time - of new cases of disease over a
specific period of time - Incidence
- of persons at risk of disease
over that specific period of time
16Incidence Example
- A study in 2002 examined depression among persons
with dementia. The study recruited 201 adults
with dementia admitted to a long-term care
facility. Of the 201, 91 had a prior diagnosis
of depression. Over the first year, 7 adults
developed depression. - 7
- Incidence 0.064
- 110
- The one year incidence of depression among adults
with dementia is 6.4 - Can also be expressed as 64 cases per 1,000
persons with dementia
17Incidence
- High incidence represents diseases with high
occurrence low incidence represents diseases
with low occurrence - Can be used to help determine the causes of
disease - Can be used to determine the likelihood of
developing disease
18Prevalence and Incidence
- Prevalence is a function of the incidence of
disease and the duration of disease
19Prevalence and Incidence
Prevalence
prevalent cases
20Prevalence and Incidence
New prevalence
Incidence
Old (baseline) prevalence
No cases die or recover
prevalent cases
incident cases
21Prevalence and Incidence
prevalent cases
incident cases
deaths or recoveries
22Practice Scenario
- A town has a population of 3600. In 2003, 400
residents of the town are diagnosed with a
disease. - In 2004, 200 additional residents of the town
are diagnosed with the same disease. The disease
is lifelong but it is not fatal. - How would you calculate the prevalence in 2003?
In 2004? - How would you to calculate the incidence in 2004?
23Practice Scenario Answers
- Population 3600
- 2003 400 diagnosed with a disease
- 2004 200 additional diagnosed with the disease
- No death, no recovery
-
Numerator
Denominator
Prevalence (2003)
400
3600
11.1
Prevalence (2004)
600
3600
16.7
Incidence (2004)
200
3200
6.3
24Descriptive Epidemiology
25Descriptive EpidemiologyWho? When? Where?
- Related to Person, Place, and Time
- Person
- May be characterized by age, race, sex,
education, occupation, or other personal
characteristics - Place
- May include information on home, workplace,
school - Time
- May look at time of illness onset, when exposure
to risk factors occurred
26Person Data
- Age and Sex are almost always used in looking at
data - Age data are usually grouped intervals will
depend on what type of disease / event is being
looked at - May be shown in tables or graphs
- May look at more than one type of person data at
once
27Data Characterized by Person
Overweight and obesity by age United States,
1960-2002
Overweight including obese, 20-74 years
Overweight, but not obese, 20-74 years
Obese, 20-74 years
Overweight, 6-11 years
Overweight, 12-19 years
1960-62
1963-65
1966-70
1971-74
1976-80
1988-94
1999-2002
Year
SOURCES Centers for Disease Control and
Prevention, National Center for Health
Statistics, National Health Examination Survey
and National Health and Nutrition Examination
Survey.
28Data Characterized by PersonPrimary and
Secondary Syphilis, US, 1996-2000
Age White, Non-Hispanic White, Non-Hispanic Black, Non-Hispanic Black, Non-Hispanic Hispanic Hispanic Asian/Pacific Islander Asian/Pacific Islander American Indian/Alaska Native American Indian/Alaska Native
Group Male Female Male Female Male Female Male Female Male Female
10-14 0.1 3.0 0.5 6.9 0.2 1.8 0.0 0.2 0.0 0.3
15-19 7.0 67.6 18.3 99.3 6.0 33.5 0.5 3.4 0.6 4.0
20-24 12.1 55.8 23.0 81.0 8.7 34.7 0.8 3.6 0.6 3.6
25-29 5.3 16.4 11.1 26.4 4.7 15.9 0.5 1.6 0.3 1.5
30-34 2.5 5.9 5.6 9.4 2.2 6.9 0.3 0.9 0.2 0.7
35-39 1.6 2.6 3.1 4.3 1.0 2.8 0.2 0.5 0.1 0.4
40-44 0.9 1.2 1.5 1.7 0.5 1.1 0.1 0.2 0.1 0.2
45-54 0.7 0.7 1.1 0.9 0.3 0.7 0.1 0.1 0.0 0.1
55-64 0.2 0.1 0.2 0.2 0.0 0.1 0.0 0.0 0.0 0.0
65 0.1 0.2 0.1 0.2 0.0 0.1 0.0 0.0 0.0 0.0
TOTAL 30.5 153.8 64.9 231.0 23.8 97.9 2.5 10.4 2.0 10.9
http//www.cdc.gov/std/stats00/Tables/2000Table32A
.htm Data shown are /1,000
29Data Characterized by Person
30Data Characterized by PersonEmergency Room
Visits for Consumer-product Related Injuries
among the Elderly (65 years and older), 2002
31Time Data
- Usually shown as a graph
- Number / rate of cases on vertical (y) axis
- Time periods on horizontal (x) axis
- Time period will depend on what is being
described - Used to show trends, seasonality, day of week /
time of day, epidemic period
32Data Characterized by Time
http//www.dhhs.state.nc.us/docs/ecoli.htm
33Data Characterized by Time
http//www.hivclearinghouse.org/0Surveillance203r
d20Quarter20Report.pdf
34Data Characterized by Time
http//www.cdc.gov/mmwr/preview/mmwrhtml/mm5153a1.
htm
35Data Characterized by Time
http//www.health.qld.gov.au/phs/Documents/cdu/127
76.pdf
36Place Data
- Can be shown in a table usually better presented
pictorially in a map - Two main types of maps used
- choropleth and spot
- Choropleth maps use different shadings/colors to
indicate the count / rate of cases in an area - Spot maps show location of individual cases
37Children aged lt72 months for whom blood lead
surveillance data were reported to CDC and
children confirmed to have blood lead levels
(BLLs) gt10 µg/dL by state and year selected U.S.
sites, 19972001
http//www.cdc.gov/mmwr/preview/mmwrhtml/ss5210a1.
htm
38Data Characterized by Place
39Data Characterized by Place
Spot map of men who tested positive for HIV at
time of entry into the Royal Thai Army, Thailand,
November 1991May 2000.
http//www.cdc.gov/ncidod/EID/vol9no7/02-0653-G1.h
tm
40Data Characterized by Place
Source Olsen, S.J. et al. N Engl J Med. 2003
Dec 18 349(25)2381-2.