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Bayesian Sparse Regression Analysis Documents the Diversity of Spinal Inhibitory Interneurons.


ABSTRACT: Documenting the extent of cellular diversity is a critical step in defining the functional organization of tissues and organs. To infer cell-type diversity from partial or incomplete transcription factor expression data, we devised a sparse Bayesian framework that is able to handle estimation uncertainty and can incorporate diverse cellular characteristics to optimize experimental design. Focusing on spinal V1 inhibitory interneurons, for which the spatial expression of 19 transcription factors has been mapped, we infer the existence of ~50 candidate V1 neuronal types, many of which localize in compact spatial domains in the ventral spinal cord. We have validated the existence of inferred cell types by direct experimental measurement, establishing this Bayesian framework as an effective platform for cell-type characterization in the nervous system and elsewhere.

SUBMITTER: Gabitto MI 

PROVIDER: S-EPMC4831714 | biostudies-other | 2016 Mar

REPOSITORIES: biostudies-other

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Bayesian Sparse Regression Analysis Documents the Diversity of Spinal Inhibitory Interneurons.

Gabitto Mariano I MI   Pakman Ari A   Bikoff Jay B JB   Abbott L F LF   Jessell Thomas M TM   Paninski Liam L  

Cell 20160303 1


Documenting the extent of cellular diversity is a critical step in defining the functional organization of tissues and organs. To infer cell-type diversity from partial or incomplete transcription factor expression data, we devised a sparse Bayesian framework that is able to handle estimation uncertainty and can incorporate diverse cellular characteristics to optimize experimental design. Focusing on spinal V1 inhibitory interneurons, for which the spatial expression of 19 transcription factors  ...[more]

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