CHAPTER 10 Having Confidence in Your Results 135
Using k = 1.96 for a 95 percent confidence level (from Table 10-1), the sample
mean of 130 mg/dL, and the SD you just calculated of 8 mg/dL, you can compute
the lower and upper confidence limits around the mean using these formulas:
CLL
130
1 96
8
114 3
.
.
CLU
130
1 96
8
145 7
.
.
On the basis of your calculations, you would report your result this way: mean
glucose = 130 mg/dL (95 percent CI = 114 – 116 mg/dL).
Please note that you should not report numbers to more decimal places than their
precision warrants. In this example, the digits after the decimal point are practi-
cally meaningless, so the numbers are rounded off.
A version of the formula in the preceding section is designed to be utilized with
smaller samples, and uses k values derived from a table of critical values of the
Student t distribution. To calculate CIs this way, you need to know the number of
degrees of freedom (df). For a mean value, the df is always equal to N – 1, so in our
case, df = 25 – 1 = 24. Using a Student t table (see Chapter 24), you can find that
the Student-based k value for a 95 percent confidence level and 24 degrees of
freedom is equal to 2.06, which is a little bit larger than the normal-based k value
of 1.96. Using this k value instead of 1.96, you can calculate the 95 percent confi-
dence limits as 113.52 mg/dL and 146.48 mg/dL, which happen to round off to the
same whole numbers as the normal-based confidence limits. Generally, you don’t
have to use these more-complicated Student-based k values unless your N is quite
small (say, less than 25).
The confidence interval around
a proportion
If you were to conduct a study by enrolling and measuring a sample of 100 adult
patients with diabetes, and you found that 70 of them had their diabetes under
control, you’d estimate that 70 percent of the population of adult diabetics has
their diabetes under control. What is the 95 percent CI around that 70 percent
estimate?
There are multiple approximate formulas for CIs around an observed proportion,
which are also called binomial CIs. Let’s start by unpacking the simplest method
for calculating binomial CIs, which is based on approximating the binomial distri-
bution using a normal distribution (see Chapter 25). The N is the denominator of
the proportion, and you should only use this method when N is large (meaning at
least 50). You should also only use this method if the proportion estimate is not
very close to 0 or 1. A good rule of thumb is the proportion estimate should be
between 0.2 and 0.8.