Transcriptome-scale spatial gene expression in the human dorsolateral prefrontal cortex

Kristen R. Maynard(Lieber Institute for Brain Development), Leonardo Collado‐Torres(Johns Hopkins University), Lukas M. Weber(Johns Hopkins University), Cedric R. Uytingco(10X Genomics (United States)), Brianna K. Barry(Johns Hopkins University), Stephen R. Williams(10X Genomics (United States)), Joseph Catallini(Johns Hopkins University), Matthew N. Tran(Johns Hopkins University), Zachary Besich(Johns Hopkins University), Madhavi Tippani(Lieber Institute for Brain Development), Jennifer Chew(10X Genomics (United States)), Yifeng Yin(10X Genomics (United States)), Joel E. Kleinman(Johns Hopkins University), Thomas M. Hyde(Johns Hopkins University), Nikhil Rao(10X Genomics (United States)), Stephanie C. Hicks(Johns Hopkins University), Keri Martinowich(Johns Hopkins University), Andrew E. Jaffe(Johns Hopkins University)
bioRxiv (Cold Spring Harbor Laboratory)
February 28, 2020
Cited by 118Open Access
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Abstract

Abstract We used the 10x Genomics Visium platform to define the spatial topography of gene expression in the six-layered human dorsolateral prefrontal cortex (DLPFC). We identified extensive layer-enriched expression signatures, and refined associations to previous laminar markers. We overlaid our laminar expression signatures onto large-scale single nuclei RNA sequencing data, enhancing spatial annotation of expression-driven clusters. By integrating neuropsychiatric disorder gene sets, we showed differential layer-enriched expression of genes associated with schizophrenia and autism spectrum disorder, highlighting the clinical relevance of spatially-defined expression. We then developed a data-driven framework to define unsupervised clusters in spatial transcriptomics data, which can be applied to other tissues or brain regions where morphological architecture is not as well-defined as cortical laminae. We lastly created a web application for the scientific community to explore these raw and summarized data to augment ongoing neuroscience and spatial transcriptomics research ( http://research.libd.org/spatialLIBD ).


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