In this paper, we study multi-level decentralized binary detection in clustered sensor networks from a joint communication/information-theoretic perspective. The starting point is a Bayesian approach for the minimization of the probability of decision error. We consider sensor networks with uniform clustering, a generic number of intermediate information fusion centers (FCs), and noisy communication links. In particular, noisy communication links are modeled as binary symmetric channels (BSCs). Our results show that the performance, in terms of probability of decision error, with uniform clustering depends only on the number of decision levels, but not on the particular clustering configuration. The proposed communication-theoretic approach...