posted on 2024-09-17, 15:36authored byMitradip Das, Ravindra Venkatramani
The complex, multidimensional energy
landscape of biomolecules
makes the extraction of suitable, nonintuitive collective variables
(CVs) that describe their conformational transitions challenging.
At present, dimensionality reduction approaches and machine learning
(ML) schemes are employed to obtain CVs from molecular dynamics (MD)/Monte
Carlo (MC) trajectories or structural databanks for biomolecules.
However, minimum sampling conditions to generate reliable CVs that
accurately describe the underlying energy landscape remain unclear.
Here, we address this issue by developing a Mode evolution Metric (MeM) to extract CVs
that can pinpoint new states and describe local transitions in the
vicinity of a reference minimum from nonequilibrated MD/MC trajectories.
We present a general mathematical formulation of MeM for both statistical
dimensionality reduction and machine learning approaches. Application
of MeM to MC trajectories of model potential energy landscapes and
MD trajectories of solvated alanine dipeptide reveals that the principal
components which locate new states in the vicinity of a reference
minimum emerge well before the trajectories locally equilibrate between
the associated states. Finally, we demonstrate a possible application
of MeM in designing efficient biased sampling schemes to construct
accurate energy landscape slices that link transitions between states.
MeM can help speed up the search for new minima around a biomolecular
conformational state and enable the accurate estimation of thermodynamics
for states lying on the energy landscape and the description of associated
transitions.