© John Wiley & Sons, Inc.
FIGURE 9-5: Population distribution of systolic blood pressure (SBP) measurements in mmHg (a) and distribution of a sample
from that population (b).
The smooth curve in Figure 9-5a shows how SBP values are distributed in an infinitely large
population. The height of the curve at any SBP value is proportional to the fraction of the population in
the immediate vicinity of that SBP. This curve has the typical bell shape of a normal distribution.
The histogram in Figure 9-5b indicates how the SBP measurements of 60 study participants randomly
sampled from the population might be distributed. Each bar represents an interval or class of SBP
values with a width of ten mmHg. The height of each bar is proportional to the number of participants
in the sample whose SBP fell within that class.
Log-normal distributions
Because a sample is only an imperfect representation the population, determining the precise shape of
a distribution can be difficult unless your sample size is very large. Nevertheless, a histogram usually
helps you spot skewed data, as shown in Figure 9-6a. This kind of shape is typical of a log-normal
distribution (Chapter 25), which is a distribution you often see when analyzing biological
measurements, such as lab values. It’s called log-normal because if you take a logarithm (of any type)
of each data value, the resulting logs will have a normal distribution, as shown in Figure 9-6b.
© John Wiley & Sons, Inc.
FIGURE 9-6: Log-normal data are skewed (a), but the logarithms are normally distributed (b).