MELD-Adapt: On-the-Fly
Belief Updating in Integrative
Molecular Dynamics
Posted on 2024-10-02 - 18:35
Integrative structural biology synergizes experimental
data with
computational methods to elucidate the structures and interactions
within biomolecules, a task that becomes critical in the absence of
high-resolution structural data. A challenging step for integrating
the data is knowing the expected accuracy or belief in the dataset.
We previously showed that the Modeling Employing Limited Data (MELD)
approach succeeds at predicting structures and finding the best interpretation
of the data when the initial belief is equal to or slightly lower
than the real value. However, the initial belief might be unknown
to the user, as it depends on both the technique and the system of
study. Here we introduce MELD-Adapt, designed to dynamically evaluate
and infer the reliability of input data while at the same time finding
the best interpretation of the data and the structures compatible
with it. We demonstrate the utility of this method across different
systems, particularly emphasizing its capability to correct initial
assumptions and identify the correct fraction of data to produce reliable
structural models. The approach is tested with two benchmark sets:
the folding of 12 proteins with coarse physical insights and the binding
of peptides with varying affinities to the extraterminal domain using
chemical shift perturbation data. We find that subtle differences
in data structure (e.g., locally clustered or globally distributed),
starting belief, and force field preferences can have an impact on
the predictions, limiting the possibility of a transferable protocol
across all systems and data types. Nonetheless, we find a wide range
of initial setup conditions that will lead to successful sampling
and identification of native states, leading to a robust pipeline.
Furthermore, disagreements about how much data is enforced and satisfied
rapidly serve to identify incorrect setup conditions.