Graphical models describe the linear correlation structure of data and have been used to establish causal relationships among phenotypes in genetic mapping populations. Data are typically collected at a single point in time. Biological processes on the other hand are often non-linear and display time varying dynamics. The extent to which graphical models can recapitulate the architecture of an underlying biological processes is not well understood. We consider metabolic networks with known stoichiometry to address the fundamental question: ‘‘What can causal networks tell us about metabolic pathways?’’. Using data from an Arabidopsis Bay|Sha population and simulated data from dynamic models of pathway motifs, we assess our ability to reconst...