Analytical tools for single-molecule fluorescence imaging in cellulo
Mark Leake

TL;DR
This paper reviews advanced analytical tools for extracting meaningful information from noisy single-molecule fluorescence imaging data in living cells, enabling better understanding of molecular behaviors.
Contribution
It introduces and discusses a suite of automated, high-throughput analysis methods tailored for noisy single-molecule live-cell imaging data, enhancing data interpretation.
Findings
Effective segmentation of cellular images from microscopy data
Robust localization and tracking of single molecules
Reliable estimation of molecular stoichiometry and dynamics
Abstract
Recent technological advances in cutting-edge ultrasensitive fluorescence microscopy have allowed single-molecule imaging experiments in living cells across all three domains of life to become commonplace. Single-molecule live-cell data is typically obtained in a low signal-to-noise ratio (SNR) regime sometimes only marginally in excess of 1, in which a combination of detector shot noise, sub-optimal probe photophysics, native cell autofluorescence and intrinsically underlying stochastic of molecules result in highly noisy datasets for which underlying true molecular behaviour is non-trivial to discern. The ability to elucidate real molecular phenomena is essential in relating experimental single-molecule observations to both the biological system under study as well as offering insight into the fine details of the physical and chemical environments of the living cell. To confront this…
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Taxonomy
TopicsGaussian Processes and Bayesian Inference · Advanced Fluorescence Microscopy Techniques · Advanced Multi-Objective Optimization Algorithms
