Application of convolutional neural networks towards nuclei segmentation in localization-based super-resolution fluorescence microscopy images

Abstract Background Automated segmentation of nuclei in microscopic images has been conducted to enhance throughput in pathological diagnostics and biological research. Segmentation accuracy and speed has been significantly enhanced with the advent of convolutional neural networks. A barrier in the...

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Main Authors: Christopher A. Mela, Yang Liu
Format: Article
Language:English
Published: BMC 2021-06-01
Series:BMC Bioinformatics
Subjects:
Online Access:https://doi.org/10.1186/s12859-021-04245-x
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author Christopher A. Mela
Yang Liu
author_facet Christopher A. Mela
Yang Liu
author_sort Christopher A. Mela
collection DOAJ
description Abstract Background Automated segmentation of nuclei in microscopic images has been conducted to enhance throughput in pathological diagnostics and biological research. Segmentation accuracy and speed has been significantly enhanced with the advent of convolutional neural networks. A barrier in the broad application of neural networks to nuclei segmentation is the necessity to train the network using a set of application specific images and image labels. Previous works have attempted to create broadly trained networks for universal nuclei segmentation; however, such networks do not work on all imaging modalities, and best results are still commonly found when the network is retrained on user specific data. Stochastic optical reconstruction microscopy (STORM) based super-resolution fluorescence microscopy has opened a new avenue to image nuclear architecture at nanoscale resolutions. Due to the large size and discontinuous features typical of super-resolution images, automatic nuclei segmentation can be difficult. In this study, we apply commonly used networks (Mask R-CNN and UNet architectures) towards the task of segmenting super-resolution images of nuclei. First, we assess whether networks broadly trained on conventional fluorescence microscopy datasets can accurately segment super-resolution images. Then, we compare the resultant segmentations with results obtained using networks trained directly on our super-resolution data. We next attempt to optimize and compare segmentation accuracy using three different neural network architectures. Results Results indicate that super-resolution images are not broadly compatible with neural networks trained on conventional bright-field or fluorescence microscopy images. When the networks were trained on super-resolution data, however, we attained nuclei segmentation accuracies (F1-Score) in excess of 0.8, comparable to past results found when conducting nuclei segmentation on conventional fluorescence microscopy images. Overall, we achieved the best results utilizing the Mask R-CNN architecture. Conclusions We found that convolutional neural networks are powerful tools capable of accurately and quickly segmenting localization-based super-resolution microscopy images of nuclei. While broadly trained and widely applicable segmentation algorithms are desirable for quick use with minimal input, optimal results are still found when the network is both trained and tested on visually similar images. We provide a set of Colab notebooks to disseminate the software into the broad scientific community ( https://github.com/YangLiuLab/Super-Resolution-Nuclei-Segmentation ).
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spelling doaj.art-c26b89f282d941c9bccab15ffa00938e2022-12-21T19:16:01ZengBMCBMC Bioinformatics1471-21052021-06-0122113010.1186/s12859-021-04245-xApplication of convolutional neural networks towards nuclei segmentation in localization-based super-resolution fluorescence microscopy imagesChristopher A. Mela0Yang Liu1Department of Biomedical Informatics, University of PittsburghBiomedical Optical Imaging Laboratory, Departments of Medicine and Bioengineering, University of PittsburghAbstract Background Automated segmentation of nuclei in microscopic images has been conducted to enhance throughput in pathological diagnostics and biological research. Segmentation accuracy and speed has been significantly enhanced with the advent of convolutional neural networks. A barrier in the broad application of neural networks to nuclei segmentation is the necessity to train the network using a set of application specific images and image labels. Previous works have attempted to create broadly trained networks for universal nuclei segmentation; however, such networks do not work on all imaging modalities, and best results are still commonly found when the network is retrained on user specific data. Stochastic optical reconstruction microscopy (STORM) based super-resolution fluorescence microscopy has opened a new avenue to image nuclear architecture at nanoscale resolutions. Due to the large size and discontinuous features typical of super-resolution images, automatic nuclei segmentation can be difficult. In this study, we apply commonly used networks (Mask R-CNN and UNet architectures) towards the task of segmenting super-resolution images of nuclei. First, we assess whether networks broadly trained on conventional fluorescence microscopy datasets can accurately segment super-resolution images. Then, we compare the resultant segmentations with results obtained using networks trained directly on our super-resolution data. We next attempt to optimize and compare segmentation accuracy using three different neural network architectures. Results Results indicate that super-resolution images are not broadly compatible with neural networks trained on conventional bright-field or fluorescence microscopy images. When the networks were trained on super-resolution data, however, we attained nuclei segmentation accuracies (F1-Score) in excess of 0.8, comparable to past results found when conducting nuclei segmentation on conventional fluorescence microscopy images. Overall, we achieved the best results utilizing the Mask R-CNN architecture. Conclusions We found that convolutional neural networks are powerful tools capable of accurately and quickly segmenting localization-based super-resolution microscopy images of nuclei. While broadly trained and widely applicable segmentation algorithms are desirable for quick use with minimal input, optimal results are still found when the network is both trained and tested on visually similar images. We provide a set of Colab notebooks to disseminate the software into the broad scientific community ( https://github.com/YangLiuLab/Super-Resolution-Nuclei-Segmentation ).https://doi.org/10.1186/s12859-021-04245-xSuper-resolutionSTORMConvolutional neural networksMask R-CNNUNetStarDist
spellingShingle Christopher A. Mela
Yang Liu
Application of convolutional neural networks towards nuclei segmentation in localization-based super-resolution fluorescence microscopy images
BMC Bioinformatics
Super-resolution
STORM
Convolutional neural networks
Mask R-CNN
UNet
StarDist
title Application of convolutional neural networks towards nuclei segmentation in localization-based super-resolution fluorescence microscopy images
title_full Application of convolutional neural networks towards nuclei segmentation in localization-based super-resolution fluorescence microscopy images
title_fullStr Application of convolutional neural networks towards nuclei segmentation in localization-based super-resolution fluorescence microscopy images
title_full_unstemmed Application of convolutional neural networks towards nuclei segmentation in localization-based super-resolution fluorescence microscopy images
title_short Application of convolutional neural networks towards nuclei segmentation in localization-based super-resolution fluorescence microscopy images
title_sort application of convolutional neural networks towards nuclei segmentation in localization based super resolution fluorescence microscopy images
topic Super-resolution
STORM
Convolutional neural networks
Mask R-CNN
UNet
StarDist
url https://doi.org/10.1186/s12859-021-04245-x
work_keys_str_mv AT christopheramela applicationofconvolutionalneuralnetworkstowardsnucleisegmentationinlocalizationbasedsuperresolutionfluorescencemicroscopyimages
AT yangliu applicationofconvolutionalneuralnetworkstowardsnucleisegmentationinlocalizationbasedsuperresolutionfluorescencemicroscopyimages