Machine learning opens a doorway for microrheology with optical tweezers in living systems
Matthew G. Smith, Jack Radford, Eky Febrianto, Jorge Ram\'irez, Helen, O'Mahony, Andrew B. Matheson, Graham M. Gibson, Daniele Faccio, Manlio, Tassieri

TL;DR
This paper demonstrates that machine learning can significantly reduce microrheology measurement times with optical tweezers, enabling viscosity estimation in just one second, which is promising for live biological systems.
Contribution
The study introduces a novel ML-based approach to analyze optical tweezer data, drastically decreasing measurement duration from minutes to seconds, facilitating microrheology in living systems.
Findings
ML reduces MOT measurement time to one second.
Conventional methods underestimate viscoelastic properties in high-viscosity fluids.
ML achieves viscosity estimation with approximately 0.3% error.
Abstract
It has been argued [Tassieri, \textit{Soft Matter}, 2015, \textbf{11}, 5792] that linear microrheology with optical tweezers (MOT) of living systems ``\textit{is not an option}'', because of the wide gap between the observation time required to collect statistically valid data and the mutational times of the organisms under study. Here, we have taken a first step towards a possible solution of this problem by exploiting modern machine learning (ML) methods to reduce the duration of MOT measurements from several tens of minutes down to one second. This has been achieved by focusing on the analysis of computer simulated trajectories of an optically trapped particle suspended in a set of Newtonian fluids having viscosity values spanning three orders of magnitude, i.e. from to Pas. When the particle trajectory is analysed by means of conventional statistical mechanics…
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Taxonomy
TopicsBlood properties and coagulation
