Cell state plasticity drives metastasis and therapy resistance in cancers. In melanoma, these behaviors map onto a melanocytic-to-mesenchymal-like continuum regulated by AP-1 transcription factors. However, how the AP-1 network encodes a limited set of discrete states, why their distributions vary across tumors, and what drives phenotypically consequential AP-1 state transitions remain unclear. We develop a mechanistic ODE model of the AP-1 network capturing their dimerization-controlled, co-regulated, competitive interactions. Calibrated to heterogeneous single-cell data across genetically diverse melanoma populations and combined with statistical learning, the model reveals network features explaining population-specific AP-1 state distributions. These features correlate with MAPK activity across tumor lines and with variability within clones, linking MAPK signaling to AP-1 states. The model predicts and experiments validate adaptive AP-1 reconfiguration under MAPK inhibition, inducing a dedifferentiated, therapy-resistant state that can be blocked by model-guided AP-1 perturbations. These results establish AP-1 as a configurable network and provide a computational framework for predicting and modulating AP-1 driven cell state plasticity.
OptoLoop: An optogenetic tool to probe the functional role of genome organization
The genome folds inside the cell nucleus into hierarchical architectural features, such as chromatin loops and domains. If and how this genome organization influences the


