$$ \mbox{logit} P(Y_{ij}=1 | Y_{ik}=y_{k}, k \neq j) = X_{ij}\beta_j + \sum_{k=1, k \neq j}^m \alpha_{jk} y_k $$
where, the parameters $\alphajk$ have interpretation as conditional log-odds ratios and the parameters $\beta j$ correspond to the regression coefficients associated to the vector of covariates $Xij$. For compatibility of conditional distributions it is assumed that $\alphajk = \alphakj$, $j \neq k $.
Garcia-Zattera, M. J., Jara, A., Lesaffre, E. and Declerck, D. (2005). On conditional independence for multivariate binary data in caries research. In preparation.
Joe, H. and Liu, Y. (1996). A model for multivariate response with covariates based on compatible conditionally specified logistic regressions. Satistics & Probability Letters 31: 113-120.
MleCslogistic, BayesCslogistic.