Predicting heteropolymer phase separation using two-chain contact maps

J Jin and W Oliver and MA Webb and WM Jacobs, JOURNAL OF CHEMICAL PHYSICS, 163, 014102 (2025).

DOI: 10.1063/5.0269504

Phase separation in polymer solutions often correlates with single-chain and two-chain properties, such as the single-chain radius of gyration, R-g, and the pairwise second virial coefficient, B-22. However, recent studies have shown that these metrics can fail to distinguish phase- separating from non-phase-separating heteropolymers, including intrinsically disordered proteins (IDPs). Here, we introduce an approach to predict heteropolymer phase separation from two-chain simulations by analyzing contact maps, which capture how often specific monomers from the two chains are in physical proximity. While B-22 summarizes the overall attraction between two chains, contact maps preserve spatial information about their interactions. To compare these metrics, we train phase-separation classifiers for both a minimal heteropolymer model and a chemically specific, residue-level IDP model. Remarkably, simple statistical properties of two-chain contact maps predict phase separation with high accuracy, vastly outperforming classifiers based on R-g and B-22 alone. Our results thus establish a transferable and computationally efficient method to uncover key driving forces of IDP phase behavior based on their physical interactions in dilute solution.

Return to Publications page