A couple suggestions for you:
1. Take full advantage of version 13's improved experimental design diagnostic capabilities by taking your matrix of predictor variables and 'pretend' if indeed it wasn't, a designed experiment, and use the DOE -> Design Diagnostics -> Evaluate Designs platform. Within that platform's report you'll get all sorts of diagnostics including confounding and correlations for your predictor variables based on the predictor variable matrix. The platform doesn't require that your predictor variable matrix is indeed a 'designed experiment'. One key feature of this platform from a confounding perspective is you can specify the exact model form (main effects, 2 way interactions, etc.) you'd like to estimate.
2. Use the Multivariate platform to explore correlations (pairwise and more complex using, say principle components analysis) among the matrix of predictor variables.