Faculty, Staff and Student Publications

Publication Date

12-1-2023

Journal

Nature

Abstract

Single-cell analyses parse the brain’s billions of neurons into thousands of ‘cell-type’ clusters residing in different brain structures1. Many cell types mediate their functions through targeted long-distance projections allowing interactions between specific cell types. Here we used epi-retro-seq2 to link single-cell epigenomes and cell types to long-distance projections for 33,034 neurons dissected from 32 different regions projecting to 24 different targets (225 source-to-target combinations) across the whole mouse brain. We highlight uses of these data for interrogating principles relating projection types to transcriptomics and epigenomics, and for addressing hypotheses about cell types and connections related to genetics. We provide an overall synthesis with 926 statistical comparisons of discriminability of neurons projecting to each target for every source. We integrate this dataset into the larger BRAIN Initiative Cell Census Network atlas, composed of millions of neurons, to link projection cell types to consensus clusters. Integration with spatial transcriptomics further assigns projection-enriched clusters to smaller source regions than the original dissections. We exemplify this by presenting in-depth analyses of projection neurons from the hypothalamus, thalamus, hindbrain, amygdala and midbrain to provide insights into properties of those cell types, including differentially expressed genes, their associated cis-regulatory elements and transcription-factor-binding motifs, and neurotransmitter use.

Keywords

Animals, Mice, Amygdala, Brain, Consensus Sequence, Datasets as Topic, Epigenomics, Gene Expression Profiling, Hypothalamus, Mesencephalon, Neural Pathways, Neurons, Neurotransmitter Agents, Regulatory Sequences, Nucleic Acid, Rhombencephalon, Single-Cell Analysis, Thalamus, Transcription Factors, Epigenetics in the nervous system, Epigenomics

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