β2AR
is an important drug target protein involving many diseases.
Biased drugs induce specific signaling and provide additional clinical
utility to optimize β2AR-based therapies. However, the biased
signaling mechanism has not been elucidated. Motivated by the issue,
we chose four agonists with divergent bias (balanced agonist, G-protein-biased
agonist, and β-arrestin-biased agonists) and utilized Gaussian
accelerated molecular dynamics simulation coupled with a dynamic network
to probe the molecular mechanisms of distinct biased activation induced
by the structural differences between the four agonists. Our simulations
reveal that the G-protein-biased agonist induces an open conformation
with the outward shifts of TM6 and TM7 for the intracellular domain,
which will be beneficial to couple G protein. In contrast, the β-arrestin-biased
agonists regulate an occluded conformation with a slightly outward
movement of TM6 and an inward shift of TM7, which should favor β-arrestin
signaling. The balanced agonist does not induce an observable outward
shift for TM6 but, along with a slight tilt for TM7, leads to an inactive-like
conformation. In addition, our results reveal the first time that
ICL3 presents specific conformations with different agonists. The
G-protein-biased agonist drives ICL3 to open so that the G protein-binding
pocket can be available, while the β-arrestin-biased agonists
induce ICL3 to form a closed conformation with a stable local α-helix.
MM/PBSA analysis further reveals that the hydroxyl groups in the resorcinol
of the G-protein-biased agonist form strong interactions with Y5.38
and S5.42, thus preventing tilting of the TM5 extracellular end. The
catechol of the balanced agonist and the β-arrestin-biased ones
induces the rearrangement of two hydrophobic residues F6.52 and W6.48.
However, different from the balanced agonist, the ethyl substituent
of β-arrestin-biased agonists forms additional hydrophobic interactions
with W6.48 and F6.51 after the rearrangement, which should contribute
to the β-arrestin bias. The shortest pathway analysis further
reveals that the three residues Y7.43, N7.45, and N7.49 are crucial
for allosterically regulating G-protein-biased signaling, while the
two residues W6.48 and F6.44 make an important contribution to regulate
β-arrestin-biased signaling. For the balanced agonist NE, the
allosteric regulation pathway simultaneously involves the residue
associated with G-protein-biased signaling like S5.46 and the residues
related to β-arrestin-biased signaling like W6.48 and F6.44,
thus producing unbiased signaling. The observations could advance
our understanding of the biased activation mechanism on class A GPCRs
and provide a useful guideline for the design of biased drugs.
Tetrastigma hemsleyanum Diels et Gilg (T. hemsleyanums) is a kind of traditional folk medicinal plant which has been used widely in China for its antivirus, antitumor, and other clinical effects. In this study, ultra-high performance liquid chromatography coupled with hybrid quadrupole-orbitrap mass spectrometry (UPLC-Q-Exactive/MS) was utilized to analyze the chemical constituents of T. hemsleyanums. Fifty-one constituents were clarified, including flavonoids, anthraquinones, esters, fatty acids, phenols, and catechins. In the subsequent quantitative analysis, the contents of ten compounds of rutin, kaempferol, astragalin, quercitrin, quercetin, vitexin-rhamnoside, isorhamnetin, vitexin, emodin-8-O-β-D-glucoside, and isoquercetin in 18 batches of T. hemsleyanums collected from different places of cultivation were determined. Meanwhile, anti-influenza virus bioactivity in vitro of the above samples was detected with Gaussia Luciferase viral titer assay. It was found that the antiviral bioactivity varied from batches to batches in accordance with content difference of the chemical constituents in T. hemsleyanums. Correlation analysis was performed with SPSS software for the association between LC-MS chemometrics and bioactivity of influenza virus inhibition, and 8 constituents of flavonoids showed positive correlation coefficient, which may provide a valuable clue for searching potential antiviral components in T. hemsleyanums.
Molecular dynamics (MD) simulations have made great contribution to revealing structural and functional mechanisms for many biomolecular systems. However, how to identify functional states and important residues from vast conformation space generated by MD remains challenging; thus an intelligent navigation is highly desired. Despite intelligent advantages of deep learning exhibited in analyzing MD trajectory, its black-box nature limits its application. To address this problem, we explore an interpretable convolutional neural network (CNN)-based deep learning framework to automatically identify diverse active states from the MD trajectory for G-protein-coupled receptors (GPCRs), named the ICNNMD model. To avoid the information loss in representing the conformation structure, the pixel representation is introduced, and then the CNN module is constructed to efficiently extract features followed by a fully connected neural network to realize the classification task. More importantly, we design a local interpretable model-agnostic explanation interpreter for the classification result by local approximation with a linear model, through which important residues underlying distinct active states can be quickly identified. Our model showcases higher than 99% classification accuracy for three important GPCR systems with diverse active states. Notably, some important residues in regulating different biased activities are successfully identified, which are beneficial to elucidating diverse activation mechanisms for GPCRs. Our model can also serve as a general tool to analyze MD trajectory for other biomolecular systems. All source codes are freely available at https://github.com/Jane-Liu97/ICNNMD for aiding MD studies.
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