262 PART 5 Looking for Relationships with Correlation and Regression
Calculating lethal doses on a logistic curve
When death is the outcome event, the corresponding terms are median lethal dose
(abbreviated LD50) and 80 percent lethal dose (abbreviated LD80), and so on. To cal-
culated the LD50 using the data in Table 18-1, a
4 83
.
and b
0 0115
.
, so
a b
/
.
/ .
4 83
0 0115, which works out to 420 REMs. An LD50 of 420 REMs
dose of radiation means an individual has a 50 percent chance of dying shortly
after being exposed to this level of radiation.
Making yes or no predictions
If you fit a logistic regression model, then learn of the value of predictor variables
for an individual, you can plug them into the equation and calculate the predicted
probability of the individual having the outcome. But sometimes, you are trying to
actually predict the outcome — whether the event will happen or not, yes or
no — to an individual. You can do this by setting a cut value on predicted probabil-
ity. Imagine you select 0.5 as the cut value, and you make a rule that if the
individual’s predicted probability is 0.5 or greater, you’ll predict yes; otherwise,
you’ll predict no.
In the following sections, we talk about yes or no predictions. We explain how they
expose the ability of the logistic model to make predictions, and how you can stra-
tegically select the cut value that gives you the best tradeoff between wrongly
predicting yes and wrongly predicting no.
Measuring accuracy, sensitivity, and specificity
with classification tables
Software output for logistic regression provides several goodness-of-fit measures
(see the earlier section “Assessing the adequacy of the model”). One intuitive
indicator of goodness-of-fit is the extent to which your yes or no predictions from
the logistic model match the actual outcomes. You can cross-tabulate the pre-
dicted and observed outcomes into a fourfold classification table. To do this, you
would ask the software to generate a classification table for you from the data
based on a cut value in the predicted probability. Most software assumes a cut
value of 0.5 unless you tell it to use some other value. Figure 18-6 shows the clas-
sification table of observed versus predicted outcomes from radiation exposure,
using a cut value of 0.5 predicted probability.
From the classification table shown in Figure 18-6, you can calculate several use-
ful measures of the model’s predicting ability for any specified cut value, includ-
ing the following: