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      Exploration and Exploitation Approaches Based on Generative Machine Learning to Identify Potent Small Molecule Inhibitors of α-Synuclein Secondary Nucleation

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          Abstract

          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.

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            Lecanemab in Early Alzheimer’s Disease

            The accumulation of soluble and insoluble aggregated amyloid-beta (Aβ) may initiate or potentiate pathologic processes in Alzheimer's disease. Lecanemab, a humanized IgG1 monoclonal antibody that binds with high affinity to Aβ soluble protofibrils, is being tested in persons with early Alzheimer's disease.
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              alpha-Synuclein in filamentous inclusions of Lewy bodies from Parkinson's disease and dementia with lewy bodies.

              Lewy bodies and Lewy neurites are the defining neuropathological characteristics of Parkinson's disease and dementia with Lewy bodies. They are made of abnormal filamentous assemblies of unknown composition. We show here that Lewy bodies and Lewy neurites from Parkinson's disease and dementia with Lewy bodies are stained strongly by antibodies directed against amino-terminal and carboxyl-terminal sequences of alpha-synuclein, showing the presence of full-length or close to full-length alpha-synuclein. The number of alpha-synuclein-stained structures exceeded that immunoreactive for ubiquitin, which is currently the most sensitive marker of Lewy bodies and Lewy neurites. Staining for alpha-synuclein thus will replace staining for ubiquitin as the preferred method for detecting Lewy bodies and Lewy neurites. We have isolated Lewy body filaments by a method used for the extraction of paired helical filaments from Alzheimer's disease brain. By immunoelectron microscopy, extracted filaments were labeled strongly by anti-alpha-synuclein antibodies. The morphologies of the 5- to 10-nm filaments and their staining characteristics suggest that extended alpha-synuclein molecules run parallel to the filament axis and that the filaments are polar structures. These findings indicate that alpha-synuclein forms the major filamentous component of Lewy bodies and Lewy neurites.
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                Author and article information

                Journal
                J Chem Theory Comput
                J Chem Theory Comput
                ct
                jctcce
                Journal of Chemical Theory and Computation
                American Chemical Society
                1549-9618
                1549-9626
                20 March 2023
                25 July 2023
                : 19
                : 14 , Machine Learning for Molecular Simulation
                : 4701-4710
                Affiliations
                []Centre for Misfolding Diseases, Yusuf Hamied Department of Chemistry, University of Cambridge , Cambridge CB2 1EW, United Kingdom
                []College of Life Science and Technology, Beijing University of Chemical Technology , Beijing 100029, China
                [§ ]Bioprocessing Technology Institute, Agency of Science, Technology and Research (A*STAR) , Singapore 138668, Singapore
                Author notes
                Author information
                https://orcid.org/0000-0003-1534-2639
                https://orcid.org/0000-0002-3616-1610
                Article
                10.1021/acs.jctc.2c01303
                10373478
                36939645
                565a4d70-2b01-425f-b53a-215de2b78f92
                © 2023 The Authors. Published by American Chemical Society

                Permits the broadest form of re-use including for commercial purposes, provided that author attribution and integrity are maintained ( https://creativecommons.org/licenses/by/4.0/).

                History
                : 23 December 2022
                Funding
                Funded by: Federation of European Biochemical Societies, doi 10.13039/100012623;
                Award ID: NA
                Funded by: China Scholarship Council, doi 10.13039/501100004543;
                Award ID: NA
                Categories
                Article
                Custom metadata
                ct2c01303
                ct2c01303

                Computational chemistry & Modeling
                Computational chemistry & Modeling

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