Molecular Mechanics Simulations and Improved Tight-binding Hamiltonians for Artificial Light Harvesting Systems: Predicting Geometric Distributions, Disorder, and Spectroscopy of Chromophores in a Protein Environment
Joonho Lee, Donghyun Lee, Aleksey Kocherzhenko, Loren Greenman, Daniel, T. Finley, Matthew B. Francis, K. Birgitta Whaley

TL;DR
This study combines molecular mechanics and spectroscopic calculations to analyze the configurations and optical properties of chromophores attached to a TMV protein scaffold, revealing how binding site and chromophore choice influence disorder and spectra.
Contribution
It introduces a Monte Carlo conformational search combined with an improved tight-binding Hamiltonian to accurately predict chromophore arrangements and spectra in protein-based light harvesting systems.
Findings
Chromophore binding site affects geometric disorder and optical properties.
Geometric configurations are crucial for reproducing experimental spectra.
The ideal dipole approximation is insufficient for close chromophore distances.
Abstract
We present molecular mechanics {and spectroscopic} calculations on prototype artificial light harvesting systems consisting of chromophores attached to a tobacco mosaic virus (TMV) protein scaffold. These systems have been synthesized and characterized spectroscopically, but information about the microscopic configurations and geometry of these TMV-templated chromophore assemblies is largely unknown. We use a Monte Carlo conformational search algorithm to determine the preferred positions and orientations of two chromophores, Coumarin 343 together with its linker, and Oregon Green 488, when these are attached at two different sites (104 and 123) on the TMV protein. The resulting geometric information shows that the extent of disorder and aggregation properties, and therefore the optical properties of the TMV-templated chromophore assembly, are highly dependent on the choice of…
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