Chapter title |
Derivation of Skeletal Myogenic Precursors from Human Pluripotent Stem Cells Using Conditional Expression of PAX7.
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Chapter number | 134 |
Book title |
Induced Pluripotent Stem (iPS) Cells
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Published in |
Methods in molecular biology, November 2014
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DOI | 10.1007/7651_2014_134 |
Pubmed ID | |
Book ISBNs |
978-1-4939-3054-8, 978-1-4939-3055-5
|
Authors |
Radbod Darabi, Rita C R Perlingeiro, Rita C. R. Perlingeiro, Darabi, Radbod, Perlingeiro, Rita C. R. |
Editors |
Kursad Turksen, Andras Nagy |
Abstract |
Cell-based therapies are considered as one of the most promising approaches for the treatment of degenerating pathologies including muscle disorders and dystrophies. Advances in the approach of reprogramming somatic cells into induced pluripotent stem (iPS) cells allow for the possibility of using the patient's own pluripotent cells to generate specific tissues for autologous transplantation. In addition, patient-specific tissue derivatives have been shown to represent valuable material for disease modeling and drug discovery. Nevertheless, directed differentiation of pluripotent stem cells into a specific lineage is not a trivial task especially in the case of skeletal myogenesis, which is generally poorly recapitulated during the in vitro differentiation of pluripotent stem cells.Here, we describe a practical and efficient method for the derivation of skeletal myogenic precursors from differentiating human pluripotent stem cells using controlled expression of PAX7. Flow cytometry (FACS) purified myogenic precursors can be expanded exponentially and differentiated in vitro into myotubes, enabling researchers to use these cells for disease modeling as well as therapeutic purposes. |
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