Probability-based particle detection that enables threshold-free and robust in vivo single-molecule tracking

Author:

Smith Carlas S.1,Stallinga Sjoerd2,Lidke Keith A.3,Rieger Bernd2,Grunwald David1

Affiliation:

1. RNA Therapeutics Institute, University of Massachusetts Medical School, Worcester, MA 01605

2. Quantitative Imaging Group, Department of Imaging Science and Technology, Faculty of Applied Sciences, Delft University of Technology, 2628 CJ Delft, Netherlands

3. Department of Physics and Astronomy, University of New Mexico, Albuquerque, NM 87131

Abstract

Single-molecule detection in fluorescence nanoscopy has become a powerful tool in cell biology but can present vexing issues in image analysis, such as limited signal, unspecific background, empirically set thresholds, image filtering, and false-positive detection limiting overall detection efficiency. Here we present a framework in which expert knowledge and parameter tweaking are replaced with a probability-based hypothesis test. Our method delivers robust and threshold-free signal detection with a defined error estimate and improved detection of weaker signals. The probability value has consequences for downstream data analysis, such as weighing a series of detections and corresponding probabilities, Bayesian propagation of probability, or defining metrics in tracking applications. We show that the method outperforms all current approaches, yielding a detection efficiency of >70% and a false-positive detection rate of <5% under conditions down to 17 photons/pixel background and 180 photons/molecule signal, which is beneficial for any kind of photon-limited application. Examples include limited brightness and photostability, phototoxicity in live-cell single-molecule imaging, and use of new labels for nanoscopy. We present simulations, experimental data, and tracking of low-signal mRNAs in yeast cells.

Publisher

American Society for Cell Biology (ASCB)

Subject

Cell Biology,Molecular Biology

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