OBJECTIVE: To adjust an excess hazard regression model with a random effect associated with a geographical level, the Département in France, and compare its parameter estimates with those obtained using a "fixed-effect" excess hazard regression model. METHODS: An excess hazard regression model with a piecewise constant baseline hazard was used and a normal distribution was assumed for the random effect. Likelihood maximization was performed using a numerical integration technique, the Quadrature of Gauss-Hermite. Results were obtained with colon-rectum and thyroid cancer data from the French network of cancer registries. RESULT: The results were in agreement with what was theoretically expected. We showed a greater heterogeneity of the exce...