This paper develops regression models for ordinal data with nonzero control
response probabilities. The models are especially useful in dose-response
studies where the spontaneous or natural response rate is nonnegligible and
the dosage is logarithmic. These models generalize Abbott's formula, which
has been commonly used to model binary data with nonzero background observ
ations. We describe a biologically plausible latent structure and develop a
n EM algorithm for fitting the models. The EM algorithm can be implemented
using standard software for ordinal regression. A toxicology data set where
the proposed model fits the data but a more conventional model fails is us
ed to illustrate the methodology.