Graphical analysis of mammalian cell adhesion in vitro.

Colloids Surf B Biointerfaces

Departments of Materials Science and Engineering and Bioengineering, The Pennsylvania State University, University Park, PA 16802, USA. Electronic address:

Published: December 2016

AI Article Synopsis

  • The study investigates how three types of mammalian cells (MDCK, MC3T3-E1, and MDA-MB-231) adhere to various surfaces with different chemical properties, focusing on the first two hours after exposure.
  • It finds that the ability of these cells to stick to surfaces relates to the surface energy, which is influenced by the contact angle of water on the surface.
  • Although the research confirms some previous trends, it suggests that there is a clear boundary between hydrophobic and hydrophilic surfaces affecting cell adhesion, with a notable shift in adhesion behavior around a specific surface energy level.

Article Abstract

Short-term (<2h) cell adhesion kinetics of 3 different mammalian cell types: MDCK (epithelioid), MC3T3-E1 (osteoblastic), and MDA-MB-231 (cancerous) on 7 different substratum surface chemistries spanning the experimentally-observable range of water wettability (surface energy) are graphically analyzed to qualitatively elucidate commonalities and differences among cell/surface/suspending media combinations. We find that short-term mammalian cell attachment/adhesion in vitro correlates with substratum surface energy as measured by water adhesion tension, τ≡γcosθ, where γ is water liquid-vapor interfacial energy (72.8   mJ/m) and cosθ is the cosine of the advancing contact angle subtended by a water droplet on the substratum surface. No definitive functional relationships among cell-adhesion kinetic parameters and τ were observed as in previous work, but previously-observed general trends were reproduced, especially including a sharp transition in the magnitude of kinetic parameters from relatively low-to-high near τ=0mJ/m, although the exact adhesion tension at which this transition occurs is difficult to accurately estimate from the current data set. We note, however, that the transition is within the hydrophobic range based on the τ=30mJ/m surface-energetic dividing line that has been proposed to differentiate "hydrophobic" surfaces from "hydrophilic". Thus, a rather sharp hydrophobic/hydrophilic contrast is observed for cell adhesion for disparate cell/surface combinations.

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Source
http://dx.doi.org/10.1016/j.colsurfb.2016.07.022DOI Listing

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