Deep learning reduces data requirements and allows real-time measurements in Imaging FCS

Biophys J. 2023 Dec 4:S0006-3495(23)04119-X. doi: 10.1016/j.bpj.2023.11.3403. Online ahead of print.ABSTRACTImaging Fluorescence Correlation Spectroscopy (Imaging FCS) is a powerful tool to extract information on molecular mobilities, actions and interactions in live cells, tissues and organisms. Nevertheless, several limitations restrict its applicability. First, FCS is data hungry, requiring 50,000 frames at 1 ms time resolution to obtain accurate parameter estimates. Second, the data size makes evaluation slow. Thirdly, as FCS evaluation is model-dependent, data evaluation is significantly slowed unless analytic models are available. Here we introduce two convolutional neural networks (CNNs) - FCSNet and ImFCSNet - for correlation and intensity trace analysis, respectively. FCSNet robustly predicts parameters in 2D and 3D live samples. ImFCSNet reduces the amount of data required for accurate parameter retrieval by at least one order of magnitude and makes correct estimates even in moderately defocused samples. Both CNNs are trained on simulated data, are model-agnostic, and allow autonomous, real-time evaluation of Imaging FCS measurements.PMID:38050354 | DOI:10.1016/j.bpj.2023.11.3403
Source: Biophysical Journal - Category: Physics Authors: Source Type: research