Title: Paleopathology
1The history of paleopathology from small to
large numbers
- Stage I Case Studies
- Dominated almost the end of the 20th century
- Physician to the dead approach
- century took a descriptive, case study
- Emphasis on determining the spatial temporal
distribution of diseases. - Stage II Population Studies
- Mainly during the last 50 years.
- Emphasis on calculating the prevalence of common
pathological conditions in cemetery collections - Bioarchaeological approach with an emphasis on
cultural and ecological determinants of health
status
2Goals of Modern Paleopathology
- Describe the chronology and spatial distribution
of health-related conditions in an earlier
populations - Determine the biocultural interactions that occur
as a population responds to its environment,
using disease as an index of the success or
failure of adaptation - Use the prevalence and pattern of disease to shed
light on the adaptation of the population - Investigate the processes involved in prehistoric
the evolution of ancient diseases
3What are the limitations of apopulation-based
approach in paleopathology?
- How large are the samples that we will need to
detect population differences we might reasonably
expect to see in the frequency of pathological
conditions? - How significant are sample biases introduced by
age, sex, and preservation differences between
samples? - What problems are there with pooling samples from
different sites to increase sample sizes?
4Western Hemisphere and History of Health in
Europe Project Sites893 sites, total n 142,952
5Most archaeological skeletal collections are
small!
6Most archaeological skeletal collections are
small!
7Cemetery collections from archaeological
sitesmedian 59, mode 1
8Number of skeletons required to detect a
statistically significant difference in the
proportion of people afflicted with a
pathological condition
9Cutting up the Pie Makes Things Worse!
- Testing bioarchaeological hypotheses typically
requires subdividing site samples - Age
- Sex
- Social Status
10Sex is a big part of the pie!
- 39.8 of burials in the Western Hemisphere
sample are younger than 15 years old and thus
probably not subject to reliable sex
determination.
11The real world situation is worse..
- Only 41 of the Western Hemisphere sample could
be sexed to the level of probable male or
probable female. - This means that about 24 burials in a sample with
the median size of 59 can be reliably sexed. - Assuming a balanced sex ratio, this would mean
that within-site sex comparisons would typically
involve 12 males and 12 females
12Age
Subadults 59 x 0.38 22 Adults 59 x 0.62 37
13The effects of preservation biases can be
significant!
14How should frequencies of pathological lesions be
measured?
15The under-representation of pathological
conditions in skeletal samples
- Many diseases such as tuberculosis only leave
lesions on a small proportion of individuals - Many lethal injuries leave no skeletal traces
- Poor preservation of ancient skeletal material
means that often subtle signs of disease and
traumatic injury will either be unobservable or
uninterpretable
16What can large samples tell us?
17A Caveat variation among contemporaneous
populations within a region can be significant
18Variations in the bathtub curve
- Wide differentials in the excess mortality
occurring at the youngest and oldest ages - Marked differences in the timing of the decline
in juvenile mortality or the rise in adult
mortality
19Could we detect minor variations in the bathtub
curve?
- The adolescent accident hump between ages
15-18. - Apparent slowing down of the rate of increase of
mortality among the oldest of the old
20What are our chances of detecting the Basic
human mortality pattern?
- The bathtub curve this is a species-wide theme
in human mortality - Basic features
- Excess mortality at the youngest ages of the life
span - Rapid decline to a lifetime low at around 10-15
years of age - Accelerating, roughly exponential, rise in
mortality at later ages
21Age Related Changes in Bones Mass
22Conclusions
- Small sample sizes and preservation biases mean
that paleodemographers will never be able to
reconstruct the fine details of any set of
mortality rates. - At best, we can hope to learn something about the
overall level and age pattern of death in the
distant past - and perhaps something about the
gross differences in material conditions that led
to variation in level and age pattern. - Paleodemographers will probably never be able to
reconstruct the "bumps and squiggles" in ancient
mortality patters. - Reconstructing the general shape and level of the
bathtub curve will be challenging enough.
23Regional Variation
24Bioarchaeologically Interesting Differences
- Time how does health status vary through time
- Space What regional or intraregional differences
are there? - Age What is the relationship between age at
death and the presence of pathological lesions
indicative of a specific disease? - Sex how does a persons sex influence their
health status? - Social Status How do social stratification and
gender roles influence health status?
25Osteoperiostitis
26Osteoperiostitis
27Long Bones Affected
28Temporal Variation
29Statistical Power
- The probability of rejecting a false statistical
null hypothesis. - Performing power analysis and sample size
estimation is an important aspect of experimental
design, because without these calculations,
sample size may be too high or too low. - If sample size is too low, the experiment will
lack the precision to provide reliable answers to
the questions it is investigating. - If sample size is too large, time and resources
will be wasted, often for minimal gain.
30Determining Sample Size
- What kind of statistical test is being performed.
Some statistical tests are inherently more
powerful than others. - Sample size. In general, the larger the sample
size, the larger the power. - However, generally increasing sample size
involves tangible costs, both in time, money, and
effort. - Consequently, it is important to make sample size
"large enough," but not wastefully large. - In paleopathological studies increasing sample
size is typically impossible - The size of experimental effects. If the null
hypothesis is wrong by a substantial amount,
power will be higher than if it is wrong by a
small amount. - The level of error in experimental measurements.
Measurement error acts like "noise" that can bury
the "signal" of real experimental effects.
Consequently, anything that enhances the accuracy
and consistency of measurement can increase
31- alpha specifies the significance level of the
test the default is alpha (.05). - power() is power of the test. Default is
power(.90).
32Age determination is a blunt sword
33A priori sample size estimation
- Based on the acceptable statistical significance
of your outcome measure. - Specify the smallest effect you want to detect of
the Type I and Type II error rates
34Error Types
- Type 1 error The chance of accepting the
research hypothesis when the null hypothesis is
actually true ("false positive"). - Type 2 error The chance of accepting the null
hypothesis when the research hypothesis is
actually true ("false negative").