Chapter title |
Skeletal Muscle Regeneration in the Mouse
|
---|---|
Chapter number | 10 |
Book title |
Skeletal Muscle Regeneration in the Mouse
|
Published in |
Methods in molecular biology, January 2016
|
DOI | 10.1007/978-1-4939-3810-0_10 |
Pubmed ID | |
Book ISBNs |
978-1-4939-3808-7, 978-1-4939-3810-0
|
Authors |
Verma, Mayank, Murkonda, Bhavani Sr, Asakura, Yoko, Asakura, Atsushi, Mayank Verma, Bhavani SR Murkonda, Yoko Asakura, Atsushi Asakura, Murkonda, Bhavani SR |
Editors |
Michael Kyba |
Abstract |
Skeletal muscle is a highly ordered yet complex tissue containing several cell types that interact with each other in order to maintain structure and homeostasis. It is also a highly regenerative tissue that responds to damage in a highly intricate but stereotypic manner, with distinct spatial and temporal kinetics. Proper examination of this process requires one to look at the three-dimensional orientation of the cellular and subcellular components, which can be accomplished through tissue clearing. While there has been a recent surge of protocols to study biology in whole tissue, it has primarily focused on the nervous system. This chapter describes the workflow for whole mount analysis of murine skeletal muscle for LacZ reporters, fluorescent reporters and immunofluorescence staining. Using this technique, we are able to visualize LacZ reporters more effectively in deep tissue samples, and to perform fluorescent imaging with a depth greater than 1700 μm. |
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Researcher | 4 | 16% |
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Student > Master | 1 | 4% |
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Neuroscience | 2 | 8% |
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Unknown | 7 | 28% |