Unraveling the complexity of the mammalian brain is one of the most challenging problems in biology today. A major goal of neuroscience is to understand how circuits of neurons and non-neuronal cells process sensory information, generate movement, and subserve memory, emotion and cognition. Elucidating the properties of neural circuits requires an understanding of the cell types that comprise these circuits and their roles in processing and integrating information. However, since the description of diverse neuronal cell types over a century ago by Ramon y Cajal, we have barely scratched the surface of understanding the diversity of cell types in the brain and how each individual cell type contributes to nervous system function. Current approaches for classifying neurons rely upon features including the differential expression of small numbers of genes, cell morphology, anatomical location, physiology, and connectivity - important descriptive properties that nonetheless are insufficient to fully describe or predict the vast number of different cell types that comprise the mammalian brain. Here we propose a suite of technologies for identifying and classifying the myriad cell types present in the brain. Our method will be developed using layer 5 pyramidal cells from mouse somatosensory cortex as a model system. First, we will exploit the latest developments in DNA sequencing technologies to characterize gene expression profiles on single layer 5 neurons at high throughput. This information will be used to classify individual cells based on their transcriptome fingerprints. Second, genes found to define newly discovered neuronal subtypes will be used to gain genetic access to these cells using Cas9/CRISPR-mediated genome engineering to create transgenic reporter lines. Development of this technology promises to open a pipeline for the rapid generation of multigenic mouse reporter strains in which specific neuronal subtypes are uniquely labeled by combinations of tagged genes. Third, we will use these genetically engineered mice to confirm that our taxonomy represents distinct functional properties of the classified neurons. Our approach can ultimately be scaled up to generate a complete census of cell types in the brain, a critically needed resource for dissecting nervous system function with modern investigative tools.

Public Health Relevance

The human brain contains billions of neurons which in turn are thought to comprise hundreds if not thousands of distinct cell types, each tailored for a specific functional role in the processing of sensory information, generation of motor output, and for providing the biological basis of memory, behavior and consciousness. Current technologies so far have been unable to provide a detailed census of the myriad neuronal cell types in the mammalian brain, information that is critical for providing tools for unraveling and probing the computational logic of the brain. This BRAIN Initiative application proposes a suite of cutting edge technologies - including single cell transcriptome profiling and genome engineering - that can be developed and scaled up to catalog all of the neuronal cell types in the mammalian brain.

Agency
National Institute of Health (NIH)
Institute
National Institute of Mental Health (NIMH)
Type
Research Project--Cooperative Agreements (U01)
Project #
3U01MH105979-02S1
Application #
9145351
Study Section
Special Emphasis Panel (ZMH1-ERB-M (06))
Program Officer
Beckel-Mitchener, Andrea C
Project Start
2014-09-26
Project End
2017-05-31
Budget Start
2015-09-28
Budget End
2016-05-31
Support Year
2
Fiscal Year
2015
Total Cost
$215,198
Indirect Cost
$66,225
Name
University of California Berkeley
Department
Biochemistry
Type
Schools of Arts and Sciences
DUNS #
124726725
City
Berkeley
State
CA
Country
United States
Zip Code
94704
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