Multi-omic data and genome-scale microbial metabolic models have allowed us to examine microbial communities, community
function, and interactions in ways that were not available to us historically. Now, one of our biggest challenges is determining
how to integrate data and maximize data potential. Our study demonstrates one way in which to test a hypothesis by combining
multi-omic data and community metabolic models. Specifically, we assess hydrogen sulfide production in colorectal cancer based on
stool, mucosa, and tissue samples collected on and off the tumor site within the same individuals. 16S rRNA microbial community
and abundance data were used to select and inform the metabolic models. We then used MICOM, an open source platform, to track the
metabolic flux of hydrogen sulfide through a defined microbial community that either represented on-tumor or off-tumor sample
communities. We also performed targeted and untargeted metabolomics, and used the former to quantitatively evaluate our model
predictions. A deeper look at the models identified several unexpected but feasible reactions, microbes, and microbial
interactions involved in hydrogen sulfide production for which our 16S and metabolomic data could not account. These results will
guide future in vitro, in vivo, and in silico tests to establish why hydrogen
sulfide production is increased in tumor tissue.
The conformational properties of carbohydrates can contribute to protein structure directly through covalent conjugation in the cases of glycoproteins and proteoglycans and indirectly in the case of transmembrane proteins embedded in glycolipid-containing bilayers. However, there continue to be significant challenges associated with experimental structural biology of such carbohydrate-containing systems. All-atom explicit-solvent molecular dynamics simulations provide a direct atomic resolution view of biomolecular dynamics and thermodynamics, but the accuracy of the results depends on the quality of the force field parametrization used in the simulations. A key determinant of the conformational properties of carbohydrates is ring puckering. Here, we applied extended system adaptive biasing force (eABF) all-atom explicit-solvent molecular dynamics simulations to characterize the ring puckering thermodynamics of the ten common pyranose monosaccharides found in vertebrate biology (as represented by the CHARMM carbohydrate force field). The results, along with those for idose, demonstrate that the CHARMM force field reliably models ring puckering across this diverse set of molecules, including accurately capturing the subtle balance between 4C1 and 1C4 chair conformations in the cases of iduronate and of idose. This suggests the broad applicability of the force field for accurate modeling of carbohydrate-containing vertebrate biomolecules such as glycoproteins, proteoglycans, and glycolipids.
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