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Small training dataset convolutional neural networks for application-specific super-resolution microscopy

SIGNIFICANCE: Machine learning (ML) models based on deep convolutional neural networks have been used to significantly increase microscopy resolution, speed [signal-to-noise ratio (SNR)], and data interpretation. The bottleneck in developing effective ML systems is often the need to acquire large da...

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Autores principales: Mannam, Varun, Howard, Scott
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Society of Photo-Optical Instrumentation Engineers 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10013193/
https://www.ncbi.nlm.nih.gov/pubmed/36925620
http://dx.doi.org/10.1117/1.JBO.28.3.036501
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author Mannam, Varun
Howard, Scott
author_facet Mannam, Varun
Howard, Scott
author_sort Mannam, Varun
collection PubMed
description SIGNIFICANCE: Machine learning (ML) models based on deep convolutional neural networks have been used to significantly increase microscopy resolution, speed [signal-to-noise ratio (SNR)], and data interpretation. The bottleneck in developing effective ML systems is often the need to acquire large datasets to train the neural network. We demonstrate how adding a “dense encoder-decoder” (DenseED) block can be used to effectively train a neural network that produces super-resolution (SR) images from conventional microscopy diffraction-limited (DL) images trained using a small dataset [15 fields of view (FOVs)]. AIM: The ML helps to retrieve SR information from a DL image when trained with a massive training dataset. The aim of this work is to demonstrate a neural network that estimates SR images from DL images using modifications that enable training with a small dataset. APPROACH: We employ “DenseED” blocks in existing SR ML network architectures. DenseED blocks use a dense layer that concatenates features from the previous convolutional layer to the next convolutional layer. DenseED blocks in fully convolutional networks (FCNs) estimate the SR images when trained with a small training dataset (15 FOVs) of human cells from the Widefield2SIM dataset and in fluorescent-labeled fixed bovine pulmonary artery endothelial cells samples. RESULTS: Conventional ML models without DenseED blocks trained on small datasets fail to accurately estimate SR images while models including the DenseED blocks can. The average peak SNR (PSNR) and resolution improvements achieved by networks containing DenseED blocks are [Formula: see text] and [Formula: see text] , respectively. We evaluated various configurations of target image generation methods (e.g., experimentally captured a target and computationally generated target) that are used to train FCNs with and without DenseED blocks and showed that including DenseED blocks in simple FCNs outperforms compared to simple FCNs without DenseED blocks. CONCLUSIONS: DenseED blocks in neural networks show accurate extraction of SR images even if the ML model is trained with a small training dataset of 15 FOVs. This approach shows that microscopy applications can use DenseED blocks to train on smaller datasets that are application-specific imaging platforms and there is promise for applying this to other imaging modalities, such as MRI/x-ray, etc.
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spelling pubmed-100131932023-03-15 Small training dataset convolutional neural networks for application-specific super-resolution microscopy Mannam, Varun Howard, Scott J Biomed Opt Microscopy SIGNIFICANCE: Machine learning (ML) models based on deep convolutional neural networks have been used to significantly increase microscopy resolution, speed [signal-to-noise ratio (SNR)], and data interpretation. The bottleneck in developing effective ML systems is often the need to acquire large datasets to train the neural network. We demonstrate how adding a “dense encoder-decoder” (DenseED) block can be used to effectively train a neural network that produces super-resolution (SR) images from conventional microscopy diffraction-limited (DL) images trained using a small dataset [15 fields of view (FOVs)]. AIM: The ML helps to retrieve SR information from a DL image when trained with a massive training dataset. The aim of this work is to demonstrate a neural network that estimates SR images from DL images using modifications that enable training with a small dataset. APPROACH: We employ “DenseED” blocks in existing SR ML network architectures. DenseED blocks use a dense layer that concatenates features from the previous convolutional layer to the next convolutional layer. DenseED blocks in fully convolutional networks (FCNs) estimate the SR images when trained with a small training dataset (15 FOVs) of human cells from the Widefield2SIM dataset and in fluorescent-labeled fixed bovine pulmonary artery endothelial cells samples. RESULTS: Conventional ML models without DenseED blocks trained on small datasets fail to accurately estimate SR images while models including the DenseED blocks can. The average peak SNR (PSNR) and resolution improvements achieved by networks containing DenseED blocks are [Formula: see text] and [Formula: see text] , respectively. We evaluated various configurations of target image generation methods (e.g., experimentally captured a target and computationally generated target) that are used to train FCNs with and without DenseED blocks and showed that including DenseED blocks in simple FCNs outperforms compared to simple FCNs without DenseED blocks. CONCLUSIONS: DenseED blocks in neural networks show accurate extraction of SR images even if the ML model is trained with a small training dataset of 15 FOVs. This approach shows that microscopy applications can use DenseED blocks to train on smaller datasets that are application-specific imaging platforms and there is promise for applying this to other imaging modalities, such as MRI/x-ray, etc. Society of Photo-Optical Instrumentation Engineers 2023-03-14 2023-03 /pmc/articles/PMC10013193/ /pubmed/36925620 http://dx.doi.org/10.1117/1.JBO.28.3.036501 Text en © 2023 The Authors https://creativecommons.org/licenses/by/4.0/Published by SPIE under a Creative Commons Attribution 4.0 International License. Distribution or reproduction of this work in whole or in part requires full attribution of the original publication, including its DOI.
spellingShingle Microscopy
Mannam, Varun
Howard, Scott
Small training dataset convolutional neural networks for application-specific super-resolution microscopy
title Small training dataset convolutional neural networks for application-specific super-resolution microscopy
title_full Small training dataset convolutional neural networks for application-specific super-resolution microscopy
title_fullStr Small training dataset convolutional neural networks for application-specific super-resolution microscopy
title_full_unstemmed Small training dataset convolutional neural networks for application-specific super-resolution microscopy
title_short Small training dataset convolutional neural networks for application-specific super-resolution microscopy
title_sort small training dataset convolutional neural networks for application-specific super-resolution microscopy
topic Microscopy
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10013193/
https://www.ncbi.nlm.nih.gov/pubmed/36925620
http://dx.doi.org/10.1117/1.JBO.28.3.036501
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