Abstract
AbstractMotivationIntegrative structural modeling combines data from experiments, physical principles, statistics of previous structures, and prior models to obtain structures of macromolecular assemblies that are challenging to characterize experimentally. The choice of model representation is a key decision in integrative modeling, as it dictates the accuracy of scoring, efficiency of sampling, and resolution of analysis. But currently, the choice is usually madead hoc, manually.ResultsHere, we report NestOR (Nested Sampling forOptimizingRepresentation), a fully automated, statistically rigorous method based on Bayesian model selection to identify the optimal coarse-grained representation for a given integrative modeling setup. Given an integrative modeling setup, it determines the optimal representations from given candidate representations based on their model evidence and sampling efficiency. The performance of NestOR was evaluated on a benchmark of four macromolecular assemblies.AvailabilityNestOR is implemented in the Integrative Modeling Platform (https://integrativemodeling.org) and is available athttps://github.com/isblab/nestor.Data for the benchmark is athttps://www.doi.org/10.5281/zenodo.10360718.Supplementary Information is available online.
Publisher
Cold Spring Harbor Laboratory