Summary statistics of marginal posterior distribution of the exponential transformation of regression parameters of our best proposed model. Posterior probabilities (PPs) can be seen as “p-values” complementary to 1. In the first column, there is the mean of the marginal posterior distributions (MPDs) of a parameter (OR), and in the second column, the standard deviation of that parameter. In the following 5 columns, there are the percentiles (perc.) of MPD. Finally, in the last two columns, there are the posterior probability (PP) that the estimated parameters are more, , or less, , than 1. A predictor was defined as a risk factor if it has a close to 1; conversely, a parameter associated with a protective factor will have close to 1.