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1.
Angew Chem Int Ed Engl ; 62(22): e202218959, 2023 05 22.
Article in English | MEDLINE | ID: mdl-36914577

ABSTRACT

G-protein-coupled receptors (GPCRs) play important roles in physiological processes and are modulated by drugs that either activate or block signaling. Rational design of the pharmacological efficacy profiles of GPCR ligands could enable the development of more efficient drugs, but is challenging even if high-resolution receptor structures are available. We performed molecular dynamics simulations of the ß2 adrenergic receptor in active and inactive conformations to assess if binding free energy calculations can predict differences in ligand efficacy for closely related compounds. Previously identified ligands were successfully classified into groups with comparable efficacy profiles based on the calculated shift in ligand affinity upon activation. A series of ligands were then predicted and synthesized, leading to the discovery of partial agonists with nanomolar potencies and novel scaffolds. Our results demonstrate that free energy simulations enable design of ligand efficacy and the same approach can be applied to other GPCR drug targets.


Subject(s)
Receptors, G-Protein-Coupled , Signal Transduction , Ligands , Receptors, G-Protein-Coupled/metabolism , Molecular Dynamics Simulation , Receptors, Adrenergic , Receptors, Adrenergic, beta-2/chemistry , Protein Conformation
2.
J Chem Inf Model ; 61(12): 6024-6037, 2021 12 27.
Article in English | MEDLINE | ID: mdl-34780174

ABSTRACT

Nanobody binding stabilizes G-protein-coupled receptors (GPCR) in a fully active state and modulates their affinity for bound ligands. However, the atomic-level basis for this allosteric regulation remains elusive. Here, we investigate the conformational changes induced by the binding of a nanobody (Nb80) on the active-like ß2 adrenergic receptor (ß2AR) via enhanced sampling molecular dynamics simulations. Dimensionality reduction analysis shows that Nb80 stabilizes structural features of the ß2AR with an ∼14 Å outward movement of transmembrane helix 6 and a close proximity of transmembrane (TM) helices 5 and 7, and favors the fully active-like conformation of the receptor, independent of ligand binding, in contrast to the conditions under which no intracellular binding partner is bound, in which case the receptor is only stabilized in an intermediate-active state. This activation is supported by the residues located at hotspots located on TMs 5, 6, and 7, as shown by supervised machine learning methods. Besides, ligand-specific subtle differences in the conformations assumed by intracellular loop 2 and extracellular loop 2 are captured from the trajectories of various ligand-bound receptors in the presence of Nb80. Dynamic network analysis further reveals that Nb80 binding triggers tighter and stronger local communication networks between the Nb80 and the ligand-binding sites, primarily involving residues around ICL2 and the intracellular end of TM3, TM5, TM6, as well as ECL2, ECL3, and the extracellular ends of TM6 and TM7. In particular, we identify unique allosteric signal transmission mechanisms between the Nb80-binding site and the extracellular domains in conformations modulated by a full agonist, BI167107, and a G-protein-biased partial agonist, salmeterol, involving mainly TM1 and TM2, and TM5, respectively. Altogether, our results provide insights into the effect of intracellular binding partners on the GPCR activation mechanism, which should be taken into account in structure-based drug discovery.


Subject(s)
Receptors, Adrenergic, beta-2 , Signal Transduction , Allosteric Regulation , Binding Sites , Ligands , Molecular Dynamics Simulation , Protein Conformation , Receptors, Adrenergic, beta-2/chemistry
3.
Elife ; 102021 01 28.
Article in English | MEDLINE | ID: mdl-33506760

ABSTRACT

Ligand binding stabilizes different G protein-coupled receptor states via a complex allosteric process that is not completely understood. Here, we have derived free energy landscapes describing activation of the ß2 adrenergic receptor bound to ligands with different efficacy profiles using enhanced sampling molecular dynamics simulations. These reveal shifts toward active-like states at the Gprotein-binding site for receptors bound to partial and full agonists, and that the ligands modulate the conformational ensemble of the receptor by tuning protein microswitches. We indeed find an excellent correlation between the conformation of the microswitches close to the ligand binding site and in the transmembrane region and experimentally reported cyclic adenosine monophosphate signaling responses. Dimensionality reduction further reveals the similarity between the unique conformational states induced by different ligands, and examining the output of classifiers highlights two distant hotspots governing agonism on transmembrane helices 5 and 7.


Subject(s)
GTP-Binding Proteins/metabolism , Receptors, Adrenergic, beta-2/metabolism , Binding Sites , Ligands , Molecular Dynamics Simulation , Protein Binding
4.
J Chem Phys ; 153(14): 141103, 2020 Oct 14.
Article in English | MEDLINE | ID: mdl-33086825

ABSTRACT

Many membrane proteins are modulated by external stimuli, such as small molecule binding or change in pH, transmembrane voltage, or temperature. This modulation typically occurs at sites that are structurally distant from the functional site. Revealing the communication, known as allostery, between these two sites is key to understanding the mechanistic details of these proteins. Residue interaction networks of isolated proteins are commonly used to this end. Membrane proteins, however, are embedded in a lipid bilayer, which may contribute to allosteric communication. The fast diffusion of lipids hinders direct use of standard residue interaction networks. Here, we present an extension that includes cofactors such as lipids and small molecules in the network. The novel framework is applied to three membrane proteins: a voltage-gated ion channel (KCNQ1), a G-protein coupled receptor (GPCR-ß2 adrenergic receptor), and a pH-gated ion channel (KcsA). Through systematic analysis of the obtained networks and their components, we demonstrate the importance of lipids for membrane protein allostery. Finally, we reveal how small molecules may stabilize different protein states by allosterically coupling and decoupling the protein from the membrane.


Subject(s)
Allosteric Regulation , Cell Membrane/metabolism , KCNQ1 Potassium Channel/metabolism , Potassium Channels, Voltage-Gated/metabolism , Receptors, Adrenergic, beta-2/metabolism , Animals , Bacterial Proteins/chemistry , Bacterial Proteins/metabolism , Camelids, New World , Cell Membrane/chemistry , Escherichia coli/chemistry , KCNQ1 Potassium Channel/chemistry , Mice , Molecular Dynamics Simulation , Phosphatidylglycerols/chemistry , Phosphatidylglycerols/metabolism , Potassium Channels, Voltage-Gated/chemistry , Receptors, Adrenergic, beta-2/chemistry , Streptomyces lividans/chemistry
5.
Biochemistry ; 59(7): 880-891, 2020 02 25.
Article in English | MEDLINE | ID: mdl-31999436

ABSTRACT

Agonist binding to G protein-coupled receptors (GPCRs) leads to conformational changes in the transmembrane region that activate cytosolic signaling pathways. Although high-resolution structures of different receptor states are available, atomistic details of allosteric signaling across the membrane remain elusive. We calculated free energy landscapes of ß2 adrenergic receptor activation using atomistic molecular dynamics simulations in an optimized string of swarms framework, which shed new light on how microswitches govern the equilibrium between conformational states. Contraction of the extracellular binding site in the presence of the agonist BI-167107 is obligatorily coupled to conformational changes in a connector motif located in the core of the transmembrane region. The connector is probabilistically coupled to the conformation of the intracellular region. An active connector promotes desolvation of a buried cavity, a twist of the conserved NPxxY motif, and an interaction between two conserved tyrosines in transmembrane helices 5 and 7 (Y-Y motif), which lead to a larger population of active-like states at the G protein binding site. This coupling is augmented by protonation of the strongly conserved Asp792.50. The agonist binding site hence communicates with the intracellular region via a cascade of locally connected microswitches. Characterization of these can be used to understand how ligands stabilize distinct receptor states and contribute to development drugs with specific signaling properties. The developed simulation protocol can likely be transferred to other class A GPCRs.


Subject(s)
Adrenergic beta-2 Receptor Agonists/chemistry , Benzoxazines/chemistry , Protein Conformation/drug effects , Receptors, Adrenergic, beta-2/chemistry , Adrenergic beta-2 Receptor Agonists/metabolism , Aspartic Acid/chemistry , Benzoxazines/metabolism , Binding Sites , Humans , Ligands , Molecular Dynamics Simulation , Receptors, Adrenergic, beta-2/metabolism , Sodium/chemistry , Sodium/metabolism , Thermodynamics
6.
Biophys J ; 118(3): 765-780, 2020 02 04.
Article in English | MEDLINE | ID: mdl-31952811

ABSTRACT

Biomolecular simulations are intrinsically high dimensional and generate noisy data sets of ever-increasing size. Extracting important features from the data is crucial for understanding the biophysical properties of molecular processes, but remains a big challenge. Machine learning (ML) provides powerful dimensionality reduction tools. However, such methods are often criticized as resembling black boxes with limited human-interpretable insight. We use methods from supervised and unsupervised ML to efficiently create interpretable maps of important features from molecular simulations. We benchmark the performance of several methods, including neural networks, random forests, and principal component analysis, using a toy model with properties reminiscent of macromolecular behavior. We then analyze three diverse biological processes: conformational changes within the soluble protein calmodulin, ligand binding to a G protein-coupled receptor, and activation of an ion channel voltage-sensor domain, unraveling features critical for signal transduction, ligand binding, and voltage sensing. This work demonstrates the usefulness of ML in understanding biomolecular states and demystifying complex simulations.


Subject(s)
Machine Learning , Proteins , Humans , Protein Conformation
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