Ga. Satten et Ll. Kupper, CONDITIONAL REGRESSION-ANALYSIS OF THE EXPOSURE DISEASE ODDS RATIO USING KNOWN PROBABILITY-OF-EXPOSURE VALUES, Biometrics, 49(2), 1993, pp. 429-440
Conditional inference methods are proposed for the odds ratio between
binary exposure and disease variables when only the probability of exp
osure is known for each study subject. We develop a conditional likeli
hood approach that removes nuisance parameters and permits inferences
to be made about important parameters in log odds ratio regression mod
els. We also discuss a heuristic procedure based on estimating the (un
known) number of truly exposed individuals; this procedure provides a
simple framework for interpreting our likelihood-based statistics, and
leads to a Mantel-Haenszel-type estimator and a goodness-of-fit test.
As an example of the use of this methodology, we present an analysis
of some genetic data of Swift et al. (1976, Cancer Research 36, 209-21
5).