An RNA-Sequencing Transcriptome and Splicing Database of Glia, Neurons, and Vascular Cells of the Cerebral Cortex

Ye Zhang(Stanford University), Kenian Chen(Texas Medical Center), Steven A. Sloan(Stanford University), Mariko L. Bennett(Stanford University), Anja R. Scholze(Stanford University), Sean O’Keeffe(Columbia University Irving Medical Center), Hemali Phatnani(Columbia University Irving Medical Center), Paolo Guarnieri(Columbia University Irving Medical Center), Christine Caneda(Stanford University), Nadine Ruderisch(University of California, San Francisco), Shuyun Deng(Texas Medical Center), Shane A. Liddelow(The University of Melbourne), Chaolin Zhang(Columbia University Irving Medical Center), Richard Daneman(University of California, San Francisco), Tom Maniatis(Columbia University Irving Medical Center), Ben A. Barres(Stanford University), Jia Qian Wu(Texas Medical Center)
Journal of Neuroscience
September 3, 2014
Cited by 5,331Open Access
Full Text

Abstract

The major cell classes of the brain differ in their developmental processes, metabolism, signaling, and function. To better understand the functions and interactions of the cell types that comprise these classes, we acutely purified representative populations of neurons, astrocytes, oligodendrocyte precursor cells, newly formed oligodendrocytes, myelinating oligodendrocytes, microglia, endothelial cells, and pericytes from mouse cerebral cortex. We generated a transcriptome database for these eight cell types by RNA sequencing and used a sensitive algorithm to detect alternative splicing events in each cell type. Bioinformatic analyses identified thousands of new cell type-enriched genes and splicing isoforms that will provide novel markers for cell identification, tools for genetic manipulation, and insights into the biology of the brain. For example, our data provide clues as to how neurons and astrocytes differ in their ability to dynamically regulate glycolytic flux and lactate generation attributable to unique splicing of PKM2, the gene encoding the glycolytic enzyme pyruvate kinase. This dataset will provide a powerful new resource for understanding the development and function of the brain. To ensure the widespread distribution of these datasets, we have created a user-friendly website (http://web.stanford.edu/group/barres_lab/brain_rnaseq.html) that provides a platform for analyzing and comparing transciption and alternative splicing profiles for various cell classes in the brain.


Related Papers

No related papers found

Powered by citation graph analysis