Network models viewed as in A (regulatory scheme or topology) and B (parametric structure) can be thought of as a macroscopic approximation to the complex molecular interactions (i.e. DNA-protein binding) taking place during a transcriptional regulatory process; in this study such an approximation was made in order to modeling patterning networks in the context of one-dimensional syncytiums. This coarse-grained representation accounts for aggregated regulatory parameters summarizing the overall transcriptional effect of many individual binding sites arranged in complex cis-regulatory sequences. Thus, cross-regulatory interactions among transcriptional regulators are assumed to be captured in the

elements of the regulatory matrix (B), which can be thought of as a regulatory genotype defined in biochemical terms (biochemotype). Panel A illustrates a fully-interconnected regulatory topology encompassing 8 TRs, and 56 cross regulatory interactions (autoregulatory patterns are not shown). TR X indicates a transcriptional regulator X, and arrows represent functional dependencies among regulators, which are parameterized via the regulatory matrix (B). A

element in the matrix can assume any value ranging in

, indicating negative or positive regulatory effects; this is the manner in which +/− feedback motifs are encoded in the matrix. This matrix of regulatory parameters is propagated dynamically via biochemical reactions within each nucleus modeled,

, determining in this way the component of protein synthesis dynamics in the network models.