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Histology segmentation using active learning on regions of interest in oral cavity squamous cell carcinoma

In digital pathology, deep learning has been shown to have a wide range of applications, from cancer grading to segmenting structures like glomeruli. One of the main hurdles for digital pathology to be truly effective is the size of the dataset needed for generalization to address the spectrum of po...

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Autores principales: Folmsbee, Jonathan, Zhang, Lei, Lu, Xulei, Rahman, Jawaria, Gentry, John, Conn, Brendan, Vered, Marilena, Roy, Paromita, Gupta, Ruta, Lin, Diana, Samankan, Shabnam, Dhorajiva, Pooja, Peter, Anu, Wang, Minhua, Israel, Anna, Brandwein-Weber, Margaret, Doyle, Scott
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9577135/
https://www.ncbi.nlm.nih.gov/pubmed/36268093
http://dx.doi.org/10.1016/j.jpi.2022.100146
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author Folmsbee, Jonathan
Zhang, Lei
Lu, Xulei
Rahman, Jawaria
Gentry, John
Conn, Brendan
Vered, Marilena
Roy, Paromita
Gupta, Ruta
Lin, Diana
Samankan, Shabnam
Dhorajiva, Pooja
Peter, Anu
Wang, Minhua
Israel, Anna
Brandwein-Weber, Margaret
Doyle, Scott
author_facet Folmsbee, Jonathan
Zhang, Lei
Lu, Xulei
Rahman, Jawaria
Gentry, John
Conn, Brendan
Vered, Marilena
Roy, Paromita
Gupta, Ruta
Lin, Diana
Samankan, Shabnam
Dhorajiva, Pooja
Peter, Anu
Wang, Minhua
Israel, Anna
Brandwein-Weber, Margaret
Doyle, Scott
author_sort Folmsbee, Jonathan
collection PubMed
description In digital pathology, deep learning has been shown to have a wide range of applications, from cancer grading to segmenting structures like glomeruli. One of the main hurdles for digital pathology to be truly effective is the size of the dataset needed for generalization to address the spectrum of possible morphologies. Small datasets limit classifiers’ ability to generalize. Yet, when we move to larger datasets of whole slide images (WSIs) of tissue, these datasets may cause network bottlenecks as each WSI at its original magnification can be upwards of 100 000 by 100 000 pixels, and over a gigabyte in file size. Compounding this problem, high quality pathologist annotations are difficult to obtain, as the volume of necessary annotations to create a classifier that can generalize would be extremely costly in terms of pathologist-hours. In this work, we use Active Learning (AL), a process for iterative interactive training, to create a modified U-net classifier on the region of interest (ROI) scale. We then compare this to Random Learning (RL), where images for addition to the dataset for retraining are randomly selected. Our hypothesis is that AL shows benefits for generating segmentation results versus randomly selecting images to annotate. We show that after 3 iterations, that AL, with an average Dice coefficient of 0.461, outperforms RL, with an average Dice Coefficient of 0.375, by 0.086.
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spelling pubmed-95771352022-10-19 Histology segmentation using active learning on regions of interest in oral cavity squamous cell carcinoma Folmsbee, Jonathan Zhang, Lei Lu, Xulei Rahman, Jawaria Gentry, John Conn, Brendan Vered, Marilena Roy, Paromita Gupta, Ruta Lin, Diana Samankan, Shabnam Dhorajiva, Pooja Peter, Anu Wang, Minhua Israel, Anna Brandwein-Weber, Margaret Doyle, Scott J Pathol Inform Original Research Article In digital pathology, deep learning has been shown to have a wide range of applications, from cancer grading to segmenting structures like glomeruli. One of the main hurdles for digital pathology to be truly effective is the size of the dataset needed for generalization to address the spectrum of possible morphologies. Small datasets limit classifiers’ ability to generalize. Yet, when we move to larger datasets of whole slide images (WSIs) of tissue, these datasets may cause network bottlenecks as each WSI at its original magnification can be upwards of 100 000 by 100 000 pixels, and over a gigabyte in file size. Compounding this problem, high quality pathologist annotations are difficult to obtain, as the volume of necessary annotations to create a classifier that can generalize would be extremely costly in terms of pathologist-hours. In this work, we use Active Learning (AL), a process for iterative interactive training, to create a modified U-net classifier on the region of interest (ROI) scale. We then compare this to Random Learning (RL), where images for addition to the dataset for retraining are randomly selected. Our hypothesis is that AL shows benefits for generating segmentation results versus randomly selecting images to annotate. We show that after 3 iterations, that AL, with an average Dice coefficient of 0.461, outperforms RL, with an average Dice Coefficient of 0.375, by 0.086. Elsevier 2022-09-27 /pmc/articles/PMC9577135/ /pubmed/36268093 http://dx.doi.org/10.1016/j.jpi.2022.100146 Text en © 2022 The Authors https://creativecommons.org/licenses/by/4.0/This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Original Research Article
Folmsbee, Jonathan
Zhang, Lei
Lu, Xulei
Rahman, Jawaria
Gentry, John
Conn, Brendan
Vered, Marilena
Roy, Paromita
Gupta, Ruta
Lin, Diana
Samankan, Shabnam
Dhorajiva, Pooja
Peter, Anu
Wang, Minhua
Israel, Anna
Brandwein-Weber, Margaret
Doyle, Scott
Histology segmentation using active learning on regions of interest in oral cavity squamous cell carcinoma
title Histology segmentation using active learning on regions of interest in oral cavity squamous cell carcinoma
title_full Histology segmentation using active learning on regions of interest in oral cavity squamous cell carcinoma
title_fullStr Histology segmentation using active learning on regions of interest in oral cavity squamous cell carcinoma
title_full_unstemmed Histology segmentation using active learning on regions of interest in oral cavity squamous cell carcinoma
title_short Histology segmentation using active learning on regions of interest in oral cavity squamous cell carcinoma
title_sort histology segmentation using active learning on regions of interest in oral cavity squamous cell carcinoma
topic Original Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9577135/
https://www.ncbi.nlm.nih.gov/pubmed/36268093
http://dx.doi.org/10.1016/j.jpi.2022.100146
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