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Classification of fetal and adult red blood cells based on hydrodynamic deformation and deep video recognition.

Peter Johannes Tejlgaard KampenGustav Ragnar Støttrup-AlsNicklas Bruun-AndersenJoachim SecherFreja HøierAnne Todsen HansenMorten Hanefeld DziegielAnders Nymark ChristensenKirstine Berg-Sørensen
Published in: Biomedical microdevices (2023)
Flow based deformation cytometry has shown potential for cell classification. We demonstrate the principle with an injection moulded microfluidic chip from which we capture videos of adult and fetal red blood cells, as they are being deformed in a microfluidic chip. Using a deep neural network - SlowFast - that takes the temporal behavior into account, we are able to discriminate between the cells with high accuracy. The accuracy was larger for adult blood cells than for fetal blood cells. However, no significant difference was observed between donors of the two types.
Keyphrases
  • induced apoptosis
  • red blood cell
  • single cell
  • cell cycle arrest
  • high throughput
  • circulating tumor cells
  • machine learning
  • neural network
  • deep learning
  • oxidative stress
  • label free