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An AI-based approach for detecting cells and microbial byproducts in low volume scanning electron microscope images of biofilms

Microbially induced corrosion (MIC) of metal surfaces caused by biofilms has wide-ranging consequences. Analysis of biofilm images to understand the distribution of morphological components in images such as microbial cells, MIC byproducts, and metal surfaces non-occluded by cells can provide insigh...

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Autores principales: Abeyrathna, Dilanga, Ashaduzzaman, Md, Malshe, Milind, Kalimuthu, Jawaharraj, Gadhamshetty, Venkataramana, Chundi, Parvathi, Subramaniam, Mahadevan
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9751328/
https://www.ncbi.nlm.nih.gov/pubmed/36532463
http://dx.doi.org/10.3389/fmicb.2022.996400
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author Abeyrathna, Dilanga
Ashaduzzaman, Md
Malshe, Milind
Kalimuthu, Jawaharraj
Gadhamshetty, Venkataramana
Chundi, Parvathi
Subramaniam, Mahadevan
author_facet Abeyrathna, Dilanga
Ashaduzzaman, Md
Malshe, Milind
Kalimuthu, Jawaharraj
Gadhamshetty, Venkataramana
Chundi, Parvathi
Subramaniam, Mahadevan
author_sort Abeyrathna, Dilanga
collection PubMed
description Microbially induced corrosion (MIC) of metal surfaces caused by biofilms has wide-ranging consequences. Analysis of biofilm images to understand the distribution of morphological components in images such as microbial cells, MIC byproducts, and metal surfaces non-occluded by cells can provide insights into assessing the performance of coatings and developing new strategies for corrosion prevention. We present an automated approach based on self-supervised deep learning methods to analyze Scanning Electron Microscope (SEM) images and detect cells and MIC byproducts. The proposed approach develops models that can successfully detect cells, MIC byproducts, and non-occluded surface areas in SEM images with a high degree of accuracy using a low volume of data while requiring minimal expert manual effort for annotating images. We develop deep learning network pipelines involving both contrastive (Barlow Twins) and non-contrastive (MoCoV2) self-learning methods and generate models to classify image patches containing three labels—cells, MIC byproducts, and non-occluded surface areas. Our experimental results based on a dataset containing seven grayscale SEM images show that both Barlow Twin and MoCoV2 models outperform the state-of-the-art supervised learning models achieving prediction accuracy increases of approximately 8 and 6%, respectively. The self-supervised pipelines achieved this superior performance by requiring experts to annotate only ~10% of the input data. We also conducted a qualitative assessment of the proposed approach using experts and validated the classification outputs generated by the self-supervised models. This is perhaps the first attempt toward the application of self-supervised learning to classify biofilm image components and our results show that self-supervised learning methods are highly effective for this task while minimizing the expert annotation effort.
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spelling pubmed-97513282022-12-16 An AI-based approach for detecting cells and microbial byproducts in low volume scanning electron microscope images of biofilms Abeyrathna, Dilanga Ashaduzzaman, Md Malshe, Milind Kalimuthu, Jawaharraj Gadhamshetty, Venkataramana Chundi, Parvathi Subramaniam, Mahadevan Front Microbiol Microbiology Microbially induced corrosion (MIC) of metal surfaces caused by biofilms has wide-ranging consequences. Analysis of biofilm images to understand the distribution of morphological components in images such as microbial cells, MIC byproducts, and metal surfaces non-occluded by cells can provide insights into assessing the performance of coatings and developing new strategies for corrosion prevention. We present an automated approach based on self-supervised deep learning methods to analyze Scanning Electron Microscope (SEM) images and detect cells and MIC byproducts. The proposed approach develops models that can successfully detect cells, MIC byproducts, and non-occluded surface areas in SEM images with a high degree of accuracy using a low volume of data while requiring minimal expert manual effort for annotating images. We develop deep learning network pipelines involving both contrastive (Barlow Twins) and non-contrastive (MoCoV2) self-learning methods and generate models to classify image patches containing three labels—cells, MIC byproducts, and non-occluded surface areas. Our experimental results based on a dataset containing seven grayscale SEM images show that both Barlow Twin and MoCoV2 models outperform the state-of-the-art supervised learning models achieving prediction accuracy increases of approximately 8 and 6%, respectively. The self-supervised pipelines achieved this superior performance by requiring experts to annotate only ~10% of the input data. We also conducted a qualitative assessment of the proposed approach using experts and validated the classification outputs generated by the self-supervised models. This is perhaps the first attempt toward the application of self-supervised learning to classify biofilm image components and our results show that self-supervised learning methods are highly effective for this task while minimizing the expert annotation effort. Frontiers Media S.A. 2022-12-01 /pmc/articles/PMC9751328/ /pubmed/36532463 http://dx.doi.org/10.3389/fmicb.2022.996400 Text en Copyright © 2022 Abeyrathna, Ashaduzzaman, Malshe, Kalimuthu, Gadhamshetty, Chundi and Subramaniam. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Microbiology
Abeyrathna, Dilanga
Ashaduzzaman, Md
Malshe, Milind
Kalimuthu, Jawaharraj
Gadhamshetty, Venkataramana
Chundi, Parvathi
Subramaniam, Mahadevan
An AI-based approach for detecting cells and microbial byproducts in low volume scanning electron microscope images of biofilms
title An AI-based approach for detecting cells and microbial byproducts in low volume scanning electron microscope images of biofilms
title_full An AI-based approach for detecting cells and microbial byproducts in low volume scanning electron microscope images of biofilms
title_fullStr An AI-based approach for detecting cells and microbial byproducts in low volume scanning electron microscope images of biofilms
title_full_unstemmed An AI-based approach for detecting cells and microbial byproducts in low volume scanning electron microscope images of biofilms
title_short An AI-based approach for detecting cells and microbial byproducts in low volume scanning electron microscope images of biofilms
title_sort ai-based approach for detecting cells and microbial byproducts in low volume scanning electron microscope images of biofilms
topic Microbiology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9751328/
https://www.ncbi.nlm.nih.gov/pubmed/36532463
http://dx.doi.org/10.3389/fmicb.2022.996400
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