Abstract
Optically trapping red blood cells allows for the exploration of their biophysical properties, which are affected in many diseases. However, because of their nonspherical shape, the numerical calculation of the optical forces is slow, limiting the range of situations that can be explored. Here we train a neural network that improves both the accuracy and the speed of the calculation and we employ it to simulate the motion of a red blood cell under different beam configurations. We found that by fixing two beams and controlling the position of a third, it is possible to control the tilting of the cell. We anticipate this work to be a promising approach to study the trapping of complex shaped and inhomogeneous biological materials, where the possible photodamage imposes restrictions in the beam power.
Cite
CITATION STYLE
Tognato, R., Bronte Ciriza, D., Maragò, O. M., & Jones, P. H. (2023). Modelling red blood cell optical trapping by machine learning improved geometrical optics calculations. Biomedical Optics Express, 14(7), 3748. https://doi.org/10.1364/boe.488931
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