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1.
Science ; 384(6698): eadh2602, 2024 May 24.
Article in English | MEDLINE | ID: mdl-38781372

ABSTRACT

Genomic profiling in postmortem brain from autistic individuals has consistently revealed convergent molecular changes. What drives these changes and how they relate to genetic susceptibility in this complex condition are not well understood. We performed deep single-nucleus RNA sequencing (snRNA-seq) to examine cell composition and transcriptomics, identifying dysregulation of cell type-specific gene regulatory networks (GRNs) in autism spectrum disorder (ASD), which we corroborated using single-nucleus assay for transposase-accessible chromatin with sequencing (snATAC-seq) and spatial transcriptomics. Transcriptomic changes were primarily cell type specific, involving multiple cell types, most prominently interhemispheric and callosal-projecting neurons, interneurons within superficial laminae, and distinct glial reactive states involving oligodendrocytes, microglia, and astrocytes. Autism-associated GRN drivers and their targets were enriched in rare and common genetic risk variants, connecting autism genetic susceptibility and cellular and circuit alterations in the human brain.


Subject(s)
Autism Spectrum Disorder , Gene Regulatory Networks , Genetic Predisposition to Disease , Single-Cell Analysis , Transcriptome , Female , Humans , Male , Astrocytes/metabolism , Autism Spectrum Disorder/genetics , Brain/metabolism , Chromatin/metabolism , Genomics , Interneurons/metabolism , Microglia/metabolism , Neurons/metabolism , Oligodendroglia/metabolism , RNA-Seq , Sequence Analysis, RNA , Child, Preschool , Child , Adolescent , Young Adult , Adult , Middle Aged
2.
Science ; 384(6698): eadi5199, 2024 May 24.
Article in English | MEDLINE | ID: mdl-38781369

ABSTRACT

Single-cell genomics is a powerful tool for studying heterogeneous tissues such as the brain. Yet little is understood about how genetic variants influence cell-level gene expression. Addressing this, we uniformly processed single-nuclei, multiomics datasets into a resource comprising >2.8 million nuclei from the prefrontal cortex across 388 individuals. For 28 cell types, we assessed population-level variation in expression and chromatin across gene families and drug targets. We identified >550,000 cell type-specific regulatory elements and >1.4 million single-cell expression quantitative trait loci, which we used to build cell-type regulatory and cell-to-cell communication networks. These networks manifest cellular changes in aging and neuropsychiatric disorders. We further constructed an integrative model accurately imputing single-cell expression and simulating perturbations; the model prioritized ~250 disease-risk genes and drug targets with associated cell types.


Subject(s)
Brain , Gene Regulatory Networks , Mental Disorders , Single-Cell Analysis , Humans , Aging/genetics , Brain/metabolism , Cell Communication/genetics , Chromatin/metabolism , Chromatin/genetics , Genomics , Mental Disorders/genetics , Prefrontal Cortex/metabolism , Prefrontal Cortex/physiology , Quantitative Trait Loci
3.
bioRxiv ; 2024 Mar 30.
Article in English | MEDLINE | ID: mdl-38562822

ABSTRACT

Single-cell genomics is a powerful tool for studying heterogeneous tissues such as the brain. Yet, little is understood about how genetic variants influence cell-level gene expression. Addressing this, we uniformly processed single-nuclei, multi-omics datasets into a resource comprising >2.8M nuclei from the prefrontal cortex across 388 individuals. For 28 cell types, we assessed population-level variation in expression and chromatin across gene families and drug targets. We identified >550K cell-type-specific regulatory elements and >1.4M single-cell expression-quantitative-trait loci, which we used to build cell-type regulatory and cell-to-cell communication networks. These networks manifest cellular changes in aging and neuropsychiatric disorders. We further constructed an integrative model accurately imputing single-cell expression and simulating perturbations; the model prioritized ~250 disease-risk genes and drug targets with associated cell types.

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