Edinburgh Research Archive

World of probabilities: a molecular dynamics and Markov state modelling approach for rational design of allosteric modulators

dc.contributor.advisor
Michel, Julien
dc.contributor.advisor
Clarke, David
dc.contributor.author
Hardie, Adele
dc.date.accessioned
2024-10-02T14:21:52Z
dc.date.available
2024-10-02T14:21:52Z
dc.date.issued
2024-10-02
dc.description.abstract
Even with current scientific and technological advances, drug discovery is a lengthy and expensive process. With a large number of pharmaceuticals already on the market and increasingly stricter regulations, it is difficult to design compounds that either are a significant improvement on the existing drugs or aimed at a novel target. In the light of this, allosteric modulators are a source of novelty in the field of drug discovery. Allosteric sites, i.e. sites that are distinct from the active site, tend to have high variety and low conservation even between proteins of the same family. Designing allosteric, rather than orthosteric, modulators allows for improved drug profiles, new ways of drugging already targeted proteins, and even revisiting targets previously deemed undruggable. Aided by progress in structural biology and computing power available, computer aided drug design methods are heavily utilized in the study of allosteric modulation. There are multiple allosteric pocket detection and residue network analysis tools available to the computational chemist, however the effect a ligand binding to an allosteric site might have on the protein conformational ensemble remains difficult to quantify. Approaches using machine learning and Markov modelling have been in development, however they require the use of molecular dynamics (MD) simulations that are currently too time consuming for practical applications. This thesis contains the development and application of a joint steered MD (sMD) and Markov State Modelling (MSM) approach, to reduce the computational time required to sample relevant conformational space of the protein. In this workflow, sMD simulations are used to bias the protein system from functionally “active” to “inactive” conformations, and vice versa. From the sMD trajectories, a range of protein conformations is sampled, including unstable intermediate conformations not routinely accessible via standard MD methods. Each of these conformations serves as a new starting point for a swarm of unbiased MD simulations, allowing this methodology to leverage the increasingly available parallel computing infrastructures. These “seeded” MD simulations are combined to build MSMs, which describe the protein conformational ensemble. The MSMs are modelled in parallel, so that the probability values of states can be directly comparable across MSMs. The state probabilities of a protein system with no potential allosteric modulators are used as a baseline, and ligands are characterized based on the changes they induce. If the presence of a ligand decreases the probability of a state defined as “active”, the ligand is therefore an allosteric modulator. On the other hand, if the ligand increases the probability of this state, it is an activator. The main body of this thesis consists of application of the above methodology to three protein systems: Protein Tyrosine Phosphatase 1B (PTP1B), Exchange Protein directly Activated by CAMP 1 (EPAC1), and Polycystic Kidney Disease 2 (PKD). Each system highlights a different class of drug target and activation mechanism. Additionally, each chapter emphasizes various considerations and caveats of applying sMD/MSMs to allosteric modulator assessment. Firstly, the workflow is validated for the first time on known inhibitors of PTP1B. The inhibitors target two distinct allosteric sites, and the trends in the experimentally measured inhibition are captured by the MSM modelled state probabilities. Additionally, the importance of comprehensively describing the protein conformational changes during sMD is discussed. The different effects of the ligands on PTP1B activity are also related to the different protein-ligand interactions observed in molecular dynamics simulations. Secondly, the approach is applied to EPAC1, this time modelling activation by cAMP and partial activation by compound I942. Furthermore, while the function of PTP1B was defined by small loop motions, the activation of EPACs involves a large domain rearrangement and a two-step mechanism. A three-state conformational ensemble model is discussed for EPAC1, capturing activation by cAMP and partial activation by I942. As the description of protein dynamics in three states is more complex, data-driven method metastable state partitioning is less reliable. The state assignment was done manually, based on knowledge of EPACs activation, highlighting the non-triviality of biologically relevant state assignment. To investigate the differences between cAMP and I942, the latter is modelled with a variety of restraints that mimic protein-ligand interactions observed with cAMP. This allows to make MD-guided suggestions to further I942 lead development into a full activator. Finally, the above sMD/MSM methodology is applied to PKD2, illustrating a more complex scenario where less data is available. Multiple considerations were taken when modelling PKD2, such as simulating a membrane and truncating the protein. As no small molecule modulators of PKD2 are known, the goal of this chapter is to investigate the regulatory effect of PI(4,5)P2 membrane lipid on PKD2. As a control, the activation by a gain-of-function mutant was modelled first, followed by inhibition by PI(4,5)P2. This example gives insight into future scalability of the sMD/MSM workflow presented in this thesis, and considerations for application to real-life drug design projects.
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dc.identifier.uri
https://hdl.handle.net/1842/42249
dc.identifier.uri
http://dx.doi.org/10.7488/era/4969
dc.language.iso
en
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dc.publisher
The University of Edinburgh
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dc.relation.hasversion
Hardie, A.; Cossins, B. P.; Lovera, S.; Michel, J. Commun. Chem. 2023, 6, 125
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dc.subject
molecular dynamics
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dc.subject
Markov state modelling
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dc.subject
rational design of allosteric modulators
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dc.subject
allosteric modulators
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dc.subject
Protein Tyrosine Phosphatase 1B (PTP1B)
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dc.subject
sMD/MSM methodology
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dc.subject
Polycystic Kidney Disease 2 (PKD)
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dc.title
World of probabilities: a molecular dynamics and Markov state modelling approach for rational design of allosteric modulators
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dc.title.alternative
A world of probabilities: a molecular dynamics and Markov state modelling approach for rational design of allosteric modulators
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dc.type
Thesis or Dissertation
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dc.type.qualificationlevel
Doctoral
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dc.type.qualificationname
PhD Doctor of Philosophy
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