Optimising parameters for the differentiation of SH-SY5Y cells to study cell adhesion and cell migration
journal contribution
posted on 2022-11-09, 11:02 authored by Susan Dwane, Edel DurackEdel Durack, Patrick A. KielyBackground: Cell migration is a fundamental biological process and has an important role in the developing brain
by regulating a highly specific pattern of connections between nerve cells. Cell migration is required for axonal
guidance and neurite outgrowth and involves a series of highly co-ordinated and overlapping signalling pathways.
The non-receptor tyrosine kinase, Focal Adhesion Kinase (FAK) has an essential role in development and is the most
highly expressed kinase in the developing CNS. FAK activity is essential for neuronal cell adhesion and migration.
Results: The objective of this study was to optimise a protocol for the differentiation of the neuroblastoma cell line,
SH-SY5Y. We determined the optimal extracellular matrix proteins and growth factor combinations required for the
optimal differentiation of SH-SY5Y cells into neuronal-like cells and determined those conditions that induce the
expression of FAK. It was confirmed that the cells were morphologically and biochemically differentiated when
compared to undifferentiated cells. This is in direct contrast to commonly used differentiation methods that induce
morphological differentiation but not biochemical differentiation.
Conclusions: We conclude that we have optimised a protocol for the differentiation of SH-SY5Y cells that results in
a cell population that is both morphologically and biochemically distinct from undifferentiated SH-SY5Y cells and
has a distinct adhesion and spreading pattern and display extensive neurite outgrowth. This protocol will provide a
neuronal model system for studying FAK activity during cell adhesion and migration events.
History
Publication
BMC Research Notes; 6 (366), pp. 2-11Publisher
BioMed CentralNote
peer-reviewedOther Funding information
HRBLanguage
EnglishExternal identifier
Department or School
- School of Medicine
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