Advanced and autonomous applications of optical tweezers
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Date
2025-10-03
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Abstract
The invention of the microscope in the late 16th century revealed a hid
den microscopic world, allowing direct observation of structures and or
ganisms beyond the limit of human vision. Since then, the importance of
this world for human health, materials science, and advanced technology
has driven the development of increasingly sophisticated analysis methods.
Among these, optical tweezers have become a central tool, using lasers to
manipulate and probe objects with exceptional precision enabling single
molecule, single-cell, and single-particle studies.
Recent years have seen explosive growth in the use of artificial intelli
gence (AI), particularly machine learning, across research. In Paper I, we
examine how these methods are used in optical tweezers and the likely tra
jectory of their integration and give some guidelines. Paper II presents an
optical tweezers system with custom electronics, firmware, user interface
which together makes the instrument capable of performing experiments
fully autonomously. Using this system, we performed four representative
experiments, demonstrating both reproducibility and variety of autonomous
experiments. In Paper III, the system was applied to probe particle adsorp
tion and desorption at liquid–liquid interfaces, revealing previously unseen
dynamics of these processes. Finally, Paper IV addresses the challenge of
force calibration under non-ideal conditions, in particular low sampling rates
and long integration times, and proposes a framework to handle these chal
lenges.
Together, these works introduce several new techniques for optical tweez
ers, spanning colloidal studies, automation, and trajectory analysis. Au
tomation in particular will be crucial for the future of optical tweezers by
bridging the gap between single-molecule, cell or particle studies and ensem
ble measurements, enabling the application of deep learning for advanced
modeling and unlocking the potential of optical tweezers for large, data
driven studies.
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Keywords
Optical Tweezers, Automation, Colloids, Single molecules, Deep learning, Calibration