Motivation: Imaging single molecules has emerged as a powerful characterization tool in the biological sciences. The detection of these under various noise conditions requires the use of algorithms that are dependent on the end-user inputting several parameters, the choice of which can be challenging and subjective. Results: In this work, we propose DeepSinse, an easily trainable and useable deep neural network that can detect single molecules with little human input and across a wide range of signal-to-noise ratios. We validate the neural network on the detection of single bursts in simulated and experimental data and compare its performance with the best-in-class, domain-specific algorithms.

DeepSinse: deep learning-based detection of single molecules / Danial, J. S. H.; Shalaby, R.; Cosentino, K.; Mahmoud, M. M.; Medhat, F.; Klenerman, D.; Garcia Saez, A. J.. - In: BIOINFORMATICS. - ISSN 1367-4803. - 37:21(2021), pp. 3998-4000. [10.1093/bioinformatics/btab352]

DeepSinse: deep learning-based detection of single molecules

Cosentino K.;
2021

Abstract

Motivation: Imaging single molecules has emerged as a powerful characterization tool in the biological sciences. The detection of these under various noise conditions requires the use of algorithms that are dependent on the end-user inputting several parameters, the choice of which can be challenging and subjective. Results: In this work, we propose DeepSinse, an easily trainable and useable deep neural network that can detect single molecules with little human input and across a wide range of signal-to-noise ratios. We validate the neural network on the detection of single bursts in simulated and experimental data and compare its performance with the best-in-class, domain-specific algorithms.
2021
37
21
3998
4000
DeepSinse: deep learning-based detection of single molecules / Danial, J. S. H.; Shalaby, R.; Cosentino, K.; Mahmoud, M. M.; Medhat, F.; Klenerman, D.; Garcia Saez, A. J.. - In: BIOINFORMATICS. - ISSN 1367-4803. - 37:21(2021), pp. 3998-4000. [10.1093/bioinformatics/btab352]
Danial, J. S. H.; Shalaby, R.; Cosentino, K.; Mahmoud, M. M.; Medhat, F.; Klenerman, D.; Garcia Saez, A. J.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11380/1367250
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