Aggregate Interactome Based on Protein Cross-linking Interfaces Predicts Drug Targets to Limit Aggregation in Neurodegenerative Diseases

Summary: Diagnosis of neurodegenerative diseases hinges on “seed” proteins detected in disease-specific aggregates. These inclusions contain diverse constituents, adhering through aberrant interactions that our prior data indicate are nonrandom. To define preferential protein-protein contacts mediat...

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Main Authors: Meenakshisundaram Balasubramaniam, Srinivas Ayyadevara, Akshatha Ganne, Samuel Kakraba, Narsimha Reddy Penthala, Xiuxia Du, Peter A. Crooks, Sue T. Griffin, Robert J. Shmookler Reis
Format: Article
Language:English
Published: Elsevier 2019-10-01
Series:iScience
Online Access:http://www.sciencedirect.com/science/article/pii/S2589004219303645
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Summary:Summary: Diagnosis of neurodegenerative diseases hinges on “seed” proteins detected in disease-specific aggregates. These inclusions contain diverse constituents, adhering through aberrant interactions that our prior data indicate are nonrandom. To define preferential protein-protein contacts mediating aggregate coalescence, we created click-chemistry reagents that cross-link neighboring proteins within human, APPSw-driven, neuroblastoma-cell aggregates. These reagents incorporate a biotinyl group to efficiently recover linked tryptic-peptide pairs. Mass-spectroscopy outputs were screened for all possible peptide pairs in the aggregate proteome. These empirical linkages, ranked by abundance, implicate a protein-adherence network termed the “aggregate contactome.” Critical hubs and hub-hub interactions were assessed by RNAi-mediated rescue of chemotaxis in aging nematodes, and aggregation-driving properties were inferred by multivariate regression and neural-network approaches. Aspirin, while disrupting aggregation, greatly simplified the aggregate contactome. This approach, and the dynamic model of aggregate accrual it implies, reveals the architecture of insoluble-aggregate networks and may reveal targets susceptible to interventions to ameliorate protein-aggregation diseases. : Neuroscience; Molecular Neuroscience; Neural Networks; Proteomics Subject Areas: Neuroscience, Molecular Neuroscience, Neural Networks, Proteomics
ISSN:2589-0042