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Characterization of altered molecular mechanisms in Parkinson?s disease through cell type-resolved multiomics analyses

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SCIENCE ADVANCES
卷 9, 期 15, 页码 -

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AMER ASSOC ADVANCEMENT SCIENCE
DOI: 10.1126/sciadv.abo2467

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This study establishes genomic and epigenomic landscapes of the substantia nigra and identifies cell type-specific dysregulations in regulatory elements related to Parkinson's disease (PD). High-resolution three-dimensional chromatin contact maps uncover target genes of dysregulated regulatory elements and genetic risk loci, revealing altered molecular mechanisms in dopaminergic neurons and glial cells. Overall, this research reveals cell type-specific disruption in transcriptional regulations related to PD.
Parkinson's disease (PD) is a progressive neurodegenerative disorder. However, cell type-dependent transcrip-tional regulatory programs responsible for PD pathogenesis remain elusive. Here, we establish transcriptomic and epigenomic landscapes of the substantia nigra by profiling 113,207 nuclei obtained from healthy controls and patients with PD. Our multiomics data integration provides cell type annotation of 128,724 cis-regulatory elements (cREs) and uncovers cell type-specific dysregulations in cREs with a strong transcriptional influence on genes implicated in PD. The establishment of high-resolution three-dimensional chromatin contact maps iden-tifies 656 target genes of dysregulated cREs and genetic risk loci, uncovering both potential and known PD risk genes. Notably, these candidate genes exhibit modular gene expression patterns with unique molecular signa-tures in distinct cell types, highlighting altered molecular mechanisms in dopaminergic neurons and glial cells including oligodendrocytes and microglia. Together, our single-cell transcriptome and epigenome reveal cell type-specific disruption in transcriptional regulations related to PD.

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