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1.
Chem Sci ; 15(19): 7229-7242, 2024 May 15.
Article En | MEDLINE | ID: mdl-38756798

The central hallmark of Parkinson's disease pathology is the aggregation of the α-synuclein protein, which, in its healthy form, is associated with lipid membranes. Purified monomeric α-synuclein is relatively stable in vitro, but its aggregation can be triggered by the presence of lipid vesicles. Despite this central importance of lipids in the context of α-synuclein aggregation, their detailed mechanistic role in this process has not been established to date. Here, we use chemical kinetics to develop a mechanistic model that is able to globally describe the aggregation behaviour of α-synuclein in the presence of DMPS lipid vesicles, across a range of lipid and protein concentrations. Through the application of our kinetic model to experimental data, we find that the reaction is a co-aggregation process involving both protein and lipids and that lipids promote aggregation as much by enabling fibril elongation as by enabling their initial formation. Moreover, we find that the primary nucleation of lipid-protein co-aggregates takes place not on the surface of lipid vesicles in bulk solution but at the air-water and/or plate interfaces, where lipids and proteins are likely adsorbed. Our model forms the basis for mechanistic insights, also in other lipid-protein co-aggregation systems, which will be crucial in the rational design of drugs that inhibit aggregate formation and act at the key points in the α-synuclein aggregation cascade.

2.
Nat Chem Biol ; 20(5): 634-645, 2024 May.
Article En | MEDLINE | ID: mdl-38632492

Machine learning methods hold the promise to reduce the costs and the failure rates of conventional drug discovery pipelines. This issue is especially pressing for neurodegenerative diseases, where the development of disease-modifying drugs has been particularly challenging. To address this problem, we describe here a machine learning approach to identify small molecule inhibitors of α-synuclein aggregation, a process implicated in Parkinson's disease and other synucleinopathies. Because the proliferation of α-synuclein aggregates takes place through autocatalytic secondary nucleation, we aim to identify compounds that bind the catalytic sites on the surface of the aggregates. To achieve this goal, we use structure-based machine learning in an iterative manner to first identify and then progressively optimize secondary nucleation inhibitors. Our results demonstrate that this approach leads to the facile identification of compounds two orders of magnitude more potent than previously reported ones.


Drug Discovery , Machine Learning , Protein Aggregates , alpha-Synuclein , alpha-Synuclein/antagonists & inhibitors , alpha-Synuclein/metabolism , alpha-Synuclein/chemistry , Humans , Drug Discovery/methods , Protein Aggregates/drug effects , Small Molecule Libraries/pharmacology , Small Molecule Libraries/chemistry , Parkinson Disease/drug therapy , Parkinson Disease/metabolism , Structure-Activity Relationship
3.
J Chem Inf Model ; 64(3): 590-596, 2024 Feb 12.
Article En | MEDLINE | ID: mdl-38261763

In the early stages of drug development, large chemical libraries are typically screened to identify compounds of promising potency against the chosen targets. Often, however, the resulting hit compounds tend to have poor drug metabolism and pharmacokinetics (DMPK), with negative developability features that may be difficult to eliminate. Therefore, starting the drug discovery process with a "null library", compounds that have highly desirable DMPK properties but no potency against the chosen targets, could be advantageous. Here, we explore the opportunities offered by machine learning to realize this strategy in the case of the inhibition of α-synuclein aggregation, a process associated with Parkinson's disease. We apply MolDQN, a generative machine learning method, to build an inhibitory activity against α-synuclein aggregation into an initial inactive compound with good DMPK properties. Our results illustrate how generative modeling can be used to endow initially inert compounds with desirable developability properties.


Drug Discovery , alpha-Synuclein , alpha-Synuclein/chemistry , Biological Availability , Small Molecule Libraries/pharmacology
4.
J Chem Theory Comput ; 20(1): 469-476, 2024 Jan 09.
Article En | MEDLINE | ID: mdl-38112559

The process of drug design requires the initial identification of compounds that bind their targets with high affinity and selectivity. Advances in generative modeling of small molecules based on deep learning are offering novel opportunities for making this process faster and cheaper. Here, we propose an approach to achieve this goal, where predictions of binding affinity are used in conjunction with the Junction Tree Variational Autoencoder (JTVAE) whose latent space is used to facilitate the efficient exploration of the chemical space using a Bayesian optimization strategy. The exploration identifies small molecules predicted to have both high affinity and high selectivity by using an objective function that optimizes the binding to the target while penalizing the binding to off-targets. The framework is demonstrated for FMS-like tyrosine kinase 3 (FLT3) and shown to predict small molecules with predicted affinity and selectivity comparable to those of clinically approved drugs for this target.


Drug Design , fms-Like Tyrosine Kinase 3 , Bayes Theorem
5.
J Am Chem Soc ; 145(47): 25776-25788, 2023 11 29.
Article En | MEDLINE | ID: mdl-37972287

Misfolded protein oligomers are of central importance in both the diagnosis and treatment of Alzheimer's and Parkinson's diseases. However, accurate high-throughput methods to detect and quantify oligomer populations are still needed. We present here a single-molecule approach for the detection and quantification of oligomeric species. The approach is based on the use of solid-state nanopores and multiplexed DNA barcoding to identify and characterize oligomers from multiple samples. We study α-synuclein oligomers in the presence of several small-molecule inhibitors of α-synuclein aggregation as an illustration of the potential applicability of this method to the development of diagnostic and therapeutic methods for Parkinson's disease.


Nanopores , Parkinson Disease , Humans , alpha-Synuclein/metabolism , Parkinson Disease/metabolism
6.
Front Mol Biosci ; 10: 1155753, 2023.
Article En | MEDLINE | ID: mdl-37701726

Parkinson's disease is characterised by the deposition in the brain of amyloid aggregates of α-synuclein. The surfaces of these amyloid aggregates can catalyse the formation of new aggregates, giving rise to a positive feedback mechanism responsible for the rapid proliferation of α-synuclein deposits. We report a procedure to enhance the potency of a small molecule to inhibit the aggregate proliferation process using a combination of in silico and in vitro methods. The optimized small molecule shows potency already at a compound:protein stoichiometry of 1:20. These results illustrate a strategy to accelerate the optimisation of small molecules against α-synuclein aggregation by targeting secondary nucleation.

7.
ACS Chem Neurosci ; 14(17): 3125-3131, 2023 09 06.
Article En | MEDLINE | ID: mdl-37578897

The accurate recapitulation in an in vitro assay of the aggregation process of α-synuclein in Parkinson's disease has been a significant challenge. As α-synuclein does not aggregate spontaneously in most currently used in vitro assays, primary nucleation is triggered by the presence of surfaces such as lipid membranes or interfaces created by shaking, to achieve aggregation on accessible time scales. In addition, secondary nucleation is typically only observed by lowering the pH below 5.8. Here we investigated assay conditions that enables spontaneous primary nucleation and secondary nucleation at pH 7.4. Using 400 mM sodium phosphate, we observed quiescent spontaneous aggregation of α-synuclein and established that this aggregation is dominated by secondary processes. Furthermore, the presence of potassium ions enhanced the reproducibility of quiescent α-synuclein aggregation. This work provides a framework for the study of spontaneous α-synuclein aggregation at physiological pH.


Salts , alpha-Synuclein , Reproducibility of Results , Hydrogen-Ion Concentration , Sodium
8.
J Chem Theory Comput ; 19(14): 4701-4710, 2023 Jul 25.
Article En | MEDLINE | ID: mdl-36939645

The high attrition rate in drug discovery pipelines is an especially pressing issue for Parkinson's disease, for which no disease-modifying drugs have yet been approved. Numerous clinical trials targeting α-synuclein aggregation have failed, at least in part due to the challenges in identifying potent compounds in preclinical investigations. To address this problem, we present a machine learning approach that combines generative modeling and reinforcement learning to identify small molecules that perturb the kinetics of aggregation in a manner that reduces the production of oligomeric species. Training data were obtained by an assay reporting on the degree of inhibition of secondary nucleation, which is the most important mechanism of α-synuclein oligomer production. This approach resulted in the identification of small molecules with high potency against secondary nucleation.


Parkinson Disease , alpha-Synuclein , Humans , Parkinson Disease/drug therapy , Drug Discovery , Kinetics
9.
Mol Pharm ; 20(1): 183-193, 2023 01 02.
Article En | MEDLINE | ID: mdl-36374974

The presence of amyloid fibrils of α-synuclein is closely associated with Parkinson's disease and related synucleinopathies. It is still very challenging, however, to systematically discover small molecules that prevent the formation of these aberrant aggregates. Here, we describe a structure-based approach to identify small molecules that specifically inhibit the surface-catalyzed secondary nucleation step in the aggregation of α-synuclein by binding to the surface of the amyloid fibrils. The resulting small molecules are screened using a range of kinetic and thermodynamic assays for their ability to bind α-synuclein fibrils and prevent the further generation of α-synuclein oligomers. This study demonstrates that the combination of structure-based and kinetic-based drug discovery methods can lead to the identification of small molecules that selectively inhibit the autocatalytic proliferation of α-synuclein aggregates.


Parkinson Disease , alpha-Synuclein , Humans , alpha-Synuclein/metabolism , Amyloid/metabolism , Parkinson Disease/metabolism , Kinetics , Cell Proliferation , Protein Aggregates
10.
Nat Commun ; 12(1): 688, 2021 01 29.
Article En | MEDLINE | ID: mdl-33514697

Significant efforts have been devoted in the last twenty years to developing compounds that can interfere with the aggregation pathways of proteins related to misfolding disorders, including Alzheimer's and Parkinson's diseases. However, no disease-modifying drug has become available for clinical use to date for these conditions. One of the main reasons for this failure is the incomplete knowledge of the molecular mechanisms underlying the process by which small molecules interact with protein aggregates and interfere with their aggregation pathways. Here, we leverage the single molecule morphological and chemical sensitivity of infrared nanospectroscopy to provide the first direct measurement of the structure and interaction between single Aß42 oligomeric and fibrillar species and an aggregation inhibitor, bexarotene, which is able to prevent Aß42 aggregation in vitro and reverses its neurotoxicity in cell and animal models of Alzheimer's disease. Our results demonstrate that the carboxyl group of this compound interacts with Aß42 aggregates through a single hydrogen bond. These results establish infrared nanospectroscopy as a powerful tool in structure-based drug discovery for protein misfolding diseases.


Alzheimer Disease/drug therapy , Amyloid beta-Peptides/antagonists & inhibitors , Bexarotene/pharmacology , Peptide Fragments/antagonists & inhibitors , Protein Aggregation, Pathological/drug therapy , Spectrophotometry, Infrared/methods , Alzheimer Disease/pathology , Amyloid beta-Peptides/chemistry , Amyloid beta-Peptides/metabolism , Bexarotene/chemistry , Bexarotene/therapeutic use , Drug Discovery/methods , Feasibility Studies , Humans , Hydrogen Bonding , Kinetics , Microscopy, Atomic Force , Peptide Fragments/chemistry , Peptide Fragments/metabolism , Protein Aggregates/drug effects , Protein Aggregation, Pathological/pathology , Recombinant Proteins/chemistry , Recombinant Proteins/metabolism , Single Molecule Imaging , Structure-Activity Relationship , Vibration
11.
Commun Chem ; 3(1): 191, 2020 Dec 18.
Article En | MEDLINE | ID: mdl-36703335

The aggregation of α-synuclein is a central event in Parkinsons's disease and related synucleinopathies. Since pharmacologically targeting this process, however, has not yet resulted in approved disease-modifying treatments, there is an unmet need of developing novel methods of drug discovery. In this context, the use of chemical kinetics has recently enabled accurate quantifications of the microscopic steps leading to the proliferation of protein misfolded oligomers. As these species are highly neurotoxic, effective therapeutic strategies may be aimed at reducing their numbers. Here, we exploit this quantitative approach to develop a screening strategy that uses the reactive flux toward α-synuclein oligomers as a selection parameter. Using this approach, we evaluate the efficacy of a library of flavone derivatives, identifying apigenin as a compound that simultaneously delays and reduces the formation of α-synuclein oligomers. These results demonstrate a compound selection strategy based on the inhibition of the formation of α-synuclein oligomers, which may be key in identifying small molecules in drug discovery pipelines for diseases associated with α-synuclein aggregation.

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