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Multi-omics integration of scRNA-seq time series data predicts new intervention points for Parkinson’s disease

Katarina Mihajlović, Gaia Ceddia, Noël Malod‐Dognin, Gabriela Novak, Dimitrios Kyriakis, Alexander Skupin, Nataša Pržulj

2024Scientific Reports14 citationsDOIOpen Access PDF

Abstract

Parkinson's disease (PD) is a complex neurodegenerative disorder without a cure. The onset of PD symptoms corresponds to 50% loss of midbrain dopaminergic (mDA) neurons, limiting early-stage understanding of PD. To shed light on early PD development, we study time series scRNA-seq datasets of mDA neurons obtained from patient-derived induced pluripotent stem cell differentiation. We develop a new data integration method based on Non-negative Matrix Tri-Factorization that integrates these datasets with molecular interaction networks, producing condition-specific "gene embeddings". By mining these embeddings, we predict 193 PD-related genes that are largely supported (49.7%) in the literature and are specific to the investigated PINK1 mutation. Enrichment analysis in Kyoto Encyclopedia of Genes and Genomes pathways highlights 10 PD-related molecular mechanisms perturbed during early PD development. Finally, investigating the top 20 prioritized genes reveals 12 previously unrecognized genes associated with PD that represent interesting drug targets.

Topics & Concepts

Parkinson's diseaseOmicsDiseaseComputer scienceSeries (stratigraphy)BioinformaticsComputational biologyData miningMedicineBiologyPathologyPaleontologyParkinson's Disease Mechanisms and TreatmentsBioinformatics and Genomic NetworksRNA regulation and disease
Multi-omics integration of scRNA-seq time series data predicts new intervention points for Parkinson’s disease | Litcius