Title: SMRs, PMRs and Survival Measures
1SMRs, PMRs and Survival Measures
- Principles of Epidemiology
- Lecture 3
- Dona Schneider, PhD, MPH, FACE
2REVIEW Adjusted Rates are Created Through
Standardization
- Standardization
- The process by which you derive a summary figure
to compare health outcomes of groups - The process can be used for mortality, natality,
or morbidity data
3Standardization Examples
- Direct Method requires
- Age-specific rates in the sample population
- The age of each case
- The population-at-risk for each age group in the
sample - Age structure (percentage of cases in each age
group) of a standard population - Summary figure is an AGE-ADJUSTED RATE
4Standardization Age Adjustment (cont.)
- Indirect method requires
- Age structure of the sample population at risk
- Total cases in the sample population (not ages of
cases) - Age-specific rates for a standard population
- Summary figure is a STANDARDIZED MORTALITY RATIO
(SMR)
5Indirect Standardization
- Instead of a standard population structure, you
utilize a standard rate to adjust your sample - Indirect standardization does not require that
you know the stratum-specific rates of your cases - The summary measure is the SMR or standardized
mortality/morbidity ratio - SMR Observed X 100
- Expected
6Indirect Standardization (cont.)
- An SMR of 100 or 100 means no difference between
the number of outcomes in the sample population
and that which would be expected in the standard
population
7- Example SMR for Male Farmers, England and
Wales, 1951
Expected Number of Deaths for Farmers and Farm
Managers per 1,000,000
Standard Death Rates per 1,000,000 (All Causes of
Death)
Number of Farmers and Farm Managers (Census, 1951)
Age Group
(3) (1) X (2)
(2)
(1)
11
1,383
7,989
20-24
59
1,594
37,030
25-34
174
2,868
60,838
35-44
564
8,212
68,687
45-54
1,275
22,953
55,565
55-64
- Total expected deaths per year 2,083
SMR 1,464 X 100 70.3 2,083
Total observed deaths per year 1,464
8In 1951, male farmers in England and Wales had a
mortality rate 30 percent lower than the
comparably-aged general population.
9SMR for Tuberculosis for White Miners Ages 20 to
59 Years, United States, 1950
Expected Deaths From TBC in White Miners if They
Had the Same Risk as the General Population
Observed Deaths from TBC in White Miners
Death Rate (per 100,000) for TBC in Males in the
General Population
Estimated Population of White Miners
Age (yr)
(4)
(3) (1) X (2)
(2)
(1)
10
9.14
12.26
74,598
20-24
20
13.71
16.12
85,077
25-29
22
17.41
21.54
80,845
30-34
98
50.55
33.96
148,870
35-44
174
58.32
56.82
102,649
45-54
112
31.96
75.23
42,494
55-59
181.09
Totals
436
SMR Observed / Expected X 100 SMR (for 2059 yr
olds) 436 / 181.09 X 100 241
10In the United States in 1950, white miners ages
20 to 59 years died of tuberculosis almost 2.5
times as often as comparably-aged males in the
general population
11- Individuals in a cohort may contribute different
amounts of risk due to length of exposure
(person-years)
Calculation of stratum or age-specific and total
SMRs SMR O/E X100 179/88.15 X 100 203
Study Cohort
Reference Population Rate per 1,000
Person-Years in TOTAL cohort
Number or outdomes of interest (Obs)
Exp
Age (yr)
SMR
(1) / (4)
(4) (2) X (3)
(3)
(2)
(1)
3.00
2.00
2.5
1,200
6
40-49
14.27
1.89
6.1
2,340
27
50-59
46.50
2.11
12.4
3,750
98
60-69
70-79
24.38
1.97
25.0
975
48
88.15
2.03
179
Total
12Workers in this cohort were twice as likely to
have the outcome of interest as the general
population
- Those ages 60-69 had the highest age-specific SMR
- Those ages 50-59 had the lowest age-specific SMR
13SMRs (cont)
- Sometimes exposures change over time and
individuals may have different amounts of
exposure when they are in a cohort over multiple
years - Example Over a period of years, the
manufacturing process of product X changed. The
occupational cohort involved in the processes had
58 deaths (we do not know their ages). Was this
more or less than would be expected in the
general population? - Stratify the cohort by known exposure periods
14Exp. Cancer Deaths
US White Male CA Deaths (per 100,000)
Person-years in Cohort
Age Group
1948-1952
0.1
9.9
1,250
15-24
0.6
17.7
3,423
25-34
1.5
44.5
3,275
35-44
3.1
150.8
2,028
45-54
4.7
409.4
1,144
55-64
1953-1957
0.1
11.2
544
15-24
.06
17.5
3,702
25-34
1.9
44.2
4,382
35-44
4.7
157.7
2,968
45-54
6.7
432.0
1,552
55-64
1958-1963
0.0
10.3
4
15-24
0.4
18.8
2,206
25-34
2.2
46.3
4,737
35-44
6.8
164.1
4,114
45-54
9.5
450.9
2,098
55-64
42.9
TOTAL
SMR observed/expected x 100 58 / 42.9 x 100
135
15Persons in this cohort had the outcome 35 more
often than would be expected in the general
population.We could not calculate age-specific
SMRs without the ages of the cases.If we have
the ages of cases
161980-84
1975-79
1970-74
Person-years
200
500
1000
Age 20-24
1000
1500
1000
25-29
1500
500
500
30-34
Observed Deaths
0
1
2
Age 20-24
2
4
3
25-29
S Obs 15
2
1
0
30-34
Population rates(per 1,000)
1.6
1.8
1.8
Age 20-24
1.5
1.5
1.7
25-29
1.7
1.8
1.9
30-34
Expected deaths population rates x
person-years / 1000
0.3
0.9
1.8
Age 20-24
1.5
2.3
1.7
25-29
S Exp 12.9
2.6
0.9
0.9
30-34
SMR S Obs / S Exp X 100 15 / 12.9 X 100 116
17From these data you can compute
- A total SMR (116)
- Age-specific SMRs (age 20-25, SMR 100)
- Time period SMRs (1970-1974, SMR 114)
- Age-specific and time period SMRs (age 20-24,
1970-74, SMR 111)
18SMRs
- Expect a Healthy worker effect
- Occupational studies should have SMRs lt 100
- Workers tend to be healthier than the general
population which comprises both healthy and
unhealthy individuals - You cannot compare SMRs between studies -- only
to the standard population
19Comparison of Rates
Disadvantages
Advantages
Actual Summary rates
Difficult to interpret because of differences in
population structures
Crude
Readily calculable
Controls for homogeneous subgroups
Cumbersome if there are many subgroups
Specific
No summary figure
Provides detailed information
Fictional rate
Provides a summary figure
Adjusted
Magnitude depends on population standard
Controls confounders
Hides subgroup differences
Permits group comparison
20- In Summary
- One type of rate is not necessarily more
important than another. Which you choose depends
on the information sought. - Crude rates are often used to estimate the burden
of disease and to plan health services. - To compare rates among subpopulations or for
various causes, specific rates are preferred. - To compare the health of entire populations,
adjusted rates are preferred because they allow
for comparison of populations with different
demographic structures.
21CDC Wonder
22Additional Outcome Measures
- Proportionate Mortality Ratio
- Proportionate Mortality Rate
- Case Fatality Rate
- Years of Potential Life Lost
- Measures of Survival
23Additional Outcome Measures
- Proportionate Mortality Ratio
- The ratio of observed/expected deaths (in terms
of proportions of deaths in the standard
population) x 100 - PMRs are explained similarly to SMRs
- 100 no difference between groups
24Computing a PMR
All Deaths
Cancer Deaths
observed
expected
PMR Observed/Expected x 100 (15/7.6) x 100
197
25PMR 197The study population has twice the
proportion of cancer deaths as the standard
population.
26CHD Proportionate Mortality Rate
27Ten Leading Causes of Death, 25-44 Years, All
Races, Both Sexes, United States, 1991
(Population 82,438,000)
Number
Cause of Death
Proportionate mortality rate ()
Rank Order
Cause-specific death rate per 100,000
32.2
18.0
26,526
1
Accidents and adverse effects
27.0
15.0
22,228
Malignant neoplasms
2
26.4
14.7
21,747
HIV infection
3
Diseases of the heart
19.2
10.7
15,822
4
Homicide and legal intervention
5
15.0
8.4
12,372
14.9
8.3
12,281
Suicide
6
Chronic liver disease and cirrhosis
7
5.4
3.0
4,449
4.1
8
Cerebrovascular diseases
2.3
3,343
2.7
1.5
2,211
Diabetes mellitus
9
2.7
1.5
2,203
10
Pneumonia and influenza
All causes
147,750
100
28Comparing Mortality and Case-Fatality Rates
- Assume a 1995 population of 100,000 people where
20 contract disease X and 18 people die from the
disease. One remains stricken and one recovers.
What is the mortality rate and what is the
case-fatality rate for disease X? - Mortality rate from disease X
- 18 / 100,000 .00018 .018
- Case-fatality rate from disease X
- 18 / 20 .9 90
29Years of Potential Life Lost
- Death occurring in a particular individual at an
early age results in a greater loss of that
individuals productivity than if that same
individual lived to an average life span. - By convention, YPLL (or PYLL) is based on a life
expectancy of 75 years - YPLL can be calculated for individual or group
data
30Example Individual data method
- A person who died at age 20 would contribute 55
potential years of life lost (75-2055 YPLL) - Deaths in individuals 75 years or older are
excluded - The rate is obtained by dividing total potential
years of life lost by the total population less
than 75 years of age.
31YPLL Contributed (75-age)
Age at Death (Years)
Individual
74.5
6 months
1
20
55
2
60
15
3
xx
85
4
15
60
5
169.5
xxx
Sum
excluded YPLL from Disease X 169.5 / 4
42.4 per person
32Example Age Group MethodIn a population of
12,975,615, what is the rate of YPLL for 2000?
- Obtain the ages at the time of death for each
case (column 1) - Exclude those over age 75
- Calculate the mean age for each age group (column
2) - Subtract the mean age from 75 (column 3)
- Calculate stratum-specific YPLL by multiplying
column 1 by column 3 - Sum the stratum-specific YPLL
- Divide by the total population for the ages
selected
33Age 75-mean(3)
YPPL(1)x(3)
Mean Age at Death(2)
Deaths(1)
Age
74.5
298.0
0.5
4
lt1
72.0
2016.0
3.0
28
1-4
67.5
3510.0
7.5
52
5-9
62.5
4000.0
12.5
64
10-14
57.5
18112.5
17.5
315
15-19
52.5
21525.0
22.5
410
20-24
47.5
14630.0
27.5
308
25-29
42.5
10327.5
32.5
243
30-34
6412.5
37.5
37.5
171
35-39
32.5
4257.5
42.5
131
40-44
27.5
3190.0
47.5
116
45-49
22.5
1912.5
52.5
85
50-54
17.5
1487.5
57.5
85
55-59
12.5
1075.0
62.5
86
60-64
7.5
480.0
67.5
64
65-69
2.5
175.0
72.5
70
70-74
xxx
xxx
xxx
93,234.0
Rate of YPLL per 1,000 persons
93,234.0/12,975,615 7.2 per 1,000 in 2000
34Measuring Survival
- Five-year survival
- Not a magical number
- May be subject to LEAD TIME BIAS
- Cannot evaluate new therapies
35Measuring Survival (cont.)
- Life Tables (assume no change in treatment over
the time of observation) - Used to calculate probability of surviving fixed
segments of time - Allow each case to contribute to data analysis
regardless of the time segment in which they are
enrolled - The probability of surviving 5 years is the
product of surviving each year (p.89)
36Measuring Survival (cont.)
- Kaplan-Meier
- Time periods are not predetermined but are set by
the death or diagnosis of a case - Withdrawls and those lost to follow-up are
removed from the analysis - Typically used for small numbers of cases
37Measuring Survival (cont.)
- Median Survival
- The time that half the population survives
- Not effected by outliers like the mean
- Can calculate the median survival time when half
rather than all the cases die
38Measuring Survival (cont.)
- Relative survival rate
- Compares survival from a given disease to a
comparable group who do not have the disease - Relative Survival Rate () Observed/Expected x
100