In addition to Mark's explanation and recommendation, I have the following thoughts:
1. How much of a change in the response variable is of practical significance? The estimates are indicators of how much the response will change for every "unit" of change in the Parameter.
2. I don't see the intercept in your parameter estimates table? This is typically the average of the data.
3. Interactions can be difficult to understand and how to optimize them is dependent on both target value of the response and practical implications. An interaction is when the effect of a factor depends on another factor. For positive sign 2-factor interactions, the effect of the interaction is greater when those factors have the same sign (-,- or +,+), for negative interactions, the effect is greater when they have opposite signs ,(-,+ or +,-). It is good practice to evaluate interactions before drawing conclusions about main effects. Look at the interaction plots for evaluation.
"All models are wrong, some are useful" G.E.P. Box