The rapid development of methods that select over/under expressed genes from microarray experiments have not yet matched the
need for tools that identify informational profiles that differentiate between experimental conditions such as time, treatment
and phenotype. Uncertainty arises when methods devoted to identify significantly expressed genes are evaluated: do all microarray
analysis methods yield similar results from the same input dataset? do different microarray datasets require distinct analysis
methods?. We performed a detailed evaluation of several microarray analysis methods, finding that none of these methods alone
identifies all observable differential profiles, nor subsumes the results obtained by the other methods. Consequently, we
propose a procedure that, given certain user-defined preferences, generates an optimal suite of statistical methods. These
solutions are optimal in the sense that they constitute partial ordered subsets of all possible method-associations bounded
by both, the most specific and the most sensitive available solution.