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Physics-driven coarse-grained model for biomolecular phase separation with near-quantitative accuracy.


ABSTRACT: Various physics- and data-driven sequence-dependent protein coarse-grained models have been developed to study biomolecular phase separation and elucidate the dominant physicochemical driving forces. Here, we present Mpipi, a multiscale coarse-grained model that describes almost quantitatively the change in protein critical temperatures as a function of amino-acid sequence. The model is parameterised from both atomistic simulations and bioinformatics data and accounts for the dominant role of π-π and hybrid cation-π/π-π interactions and the much stronger attractive contacts established by arginines than lysines. We provide a comprehensive set of benchmarks for Mpipi and seven other residue-level coarse-grained models against experimental radii of gyration and quantitative in-vitro phase diagrams; Mpipi predictions agree well with experiment on both fronts. Moreover, it can account for protein-RNA interactions, correctly predicts the multiphase behaviour of a charge-matched poly-arginine/poly-lysine/RNA system, and recapitulates experimental LLPS trends for sequence mutations on FUS, DDX4 and LAF-1 proteins.

SUBMITTER: Joseph JA 

PROVIDER: S-EPMC7612994 | biostudies-literature | 2021 Nov

REPOSITORIES: biostudies-literature

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Physics-driven coarse-grained model for biomolecular phase separation with near-quantitative accuracy.

Joseph Jerelle A JA   Reinhardt Aleks A   Aguirre Anne A   Chew Pin Yu PY   Russell Kieran O KO   Espinosa Jorge R JR   Garaizar Adiran A   Collepardo-Guevara Rosana R  

Nature computational science 20211122 11


Various physics- and data-driven sequence-dependent protein coarse-grained models have been developed to study biomolecular phase separation and elucidate the dominant physicochemical driving forces. Here, we present Mpipi, a multiscale coarse-grained model that describes almost quantitatively the change in protein critical temperatures as a function of amino-acid sequence. The model is parameterised from both atomistic simulations and bioinformatics data and accounts for the dominant role of <i  ...[more]

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