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Machine learning methods for automated classification of tumors with papillary thyroid carcinoma-like nuclei: A quantitative analysis

When approaching thyroid gland tumor classification, the differentiation between samples with and without “papillary thyroid carcinoma-like” nuclei is a daunting task with high inter-observer variability among pathologists. Thus, there is increasing interest in the use of machine learning approaches...

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Autores principales: Böhland, Moritz, Tharun, Lars, Scherr, Tim, Mikut, Ralf, Hagenmeyer, Veit, Thompson, Lester D. R., Perner, Sven, Reischl, Markus
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8457451/
https://www.ncbi.nlm.nih.gov/pubmed/34550999
http://dx.doi.org/10.1371/journal.pone.0257635
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author Böhland, Moritz
Tharun, Lars
Scherr, Tim
Mikut, Ralf
Hagenmeyer, Veit
Thompson, Lester D. R.
Perner, Sven
Reischl, Markus
author_facet Böhland, Moritz
Tharun, Lars
Scherr, Tim
Mikut, Ralf
Hagenmeyer, Veit
Thompson, Lester D. R.
Perner, Sven
Reischl, Markus
author_sort Böhland, Moritz
collection PubMed
description When approaching thyroid gland tumor classification, the differentiation between samples with and without “papillary thyroid carcinoma-like” nuclei is a daunting task with high inter-observer variability among pathologists. Thus, there is increasing interest in the use of machine learning approaches to provide pathologists real-time decision support. In this paper, we optimize and quantitatively compare two automated machine learning methods for thyroid gland tumor classification on two datasets to assist pathologists in decision-making regarding these methods and their parameters. The first method is a feature-based classification originating from common image processing and consists of cell nucleus segmentation, feature extraction, and subsequent thyroid gland tumor classification utilizing different classifiers. The second method is a deep learning-based classification which directly classifies the input images with a convolutional neural network without the need for cell nucleus segmentation. On the Tharun and Thompson dataset, the feature-based classification achieves an accuracy of 89.7% (Cohen’s Kappa 0.79), compared to the deep learning-based classification of 89.1% (Cohen’s Kappa 0.78). On the Nikiforov dataset, the feature-based classification achieves an accuracy of 83.5% (Cohen’s Kappa 0.46) compared to the deep learning-based classification 77.4% (Cohen’s Kappa 0.35). Thus, both automated thyroid tumor classification methods can reach the classification level of an expert pathologist. To our knowledge, this is the first study comparing feature-based and deep learning-based classification regarding their ability to classify samples with and without papillary thyroid carcinoma-like nuclei on two large-scale datasets.
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spelling pubmed-84574512021-09-23 Machine learning methods for automated classification of tumors with papillary thyroid carcinoma-like nuclei: A quantitative analysis Böhland, Moritz Tharun, Lars Scherr, Tim Mikut, Ralf Hagenmeyer, Veit Thompson, Lester D. R. Perner, Sven Reischl, Markus PLoS One Research Article When approaching thyroid gland tumor classification, the differentiation between samples with and without “papillary thyroid carcinoma-like” nuclei is a daunting task with high inter-observer variability among pathologists. Thus, there is increasing interest in the use of machine learning approaches to provide pathologists real-time decision support. In this paper, we optimize and quantitatively compare two automated machine learning methods for thyroid gland tumor classification on two datasets to assist pathologists in decision-making regarding these methods and their parameters. The first method is a feature-based classification originating from common image processing and consists of cell nucleus segmentation, feature extraction, and subsequent thyroid gland tumor classification utilizing different classifiers. The second method is a deep learning-based classification which directly classifies the input images with a convolutional neural network without the need for cell nucleus segmentation. On the Tharun and Thompson dataset, the feature-based classification achieves an accuracy of 89.7% (Cohen’s Kappa 0.79), compared to the deep learning-based classification of 89.1% (Cohen’s Kappa 0.78). On the Nikiforov dataset, the feature-based classification achieves an accuracy of 83.5% (Cohen’s Kappa 0.46) compared to the deep learning-based classification 77.4% (Cohen’s Kappa 0.35). Thus, both automated thyroid tumor classification methods can reach the classification level of an expert pathologist. To our knowledge, this is the first study comparing feature-based and deep learning-based classification regarding their ability to classify samples with and without papillary thyroid carcinoma-like nuclei on two large-scale datasets. Public Library of Science 2021-09-22 /pmc/articles/PMC8457451/ /pubmed/34550999 http://dx.doi.org/10.1371/journal.pone.0257635 Text en © 2021 Böhland et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Böhland, Moritz
Tharun, Lars
Scherr, Tim
Mikut, Ralf
Hagenmeyer, Veit
Thompson, Lester D. R.
Perner, Sven
Reischl, Markus
Machine learning methods for automated classification of tumors with papillary thyroid carcinoma-like nuclei: A quantitative analysis
title Machine learning methods for automated classification of tumors with papillary thyroid carcinoma-like nuclei: A quantitative analysis
title_full Machine learning methods for automated classification of tumors with papillary thyroid carcinoma-like nuclei: A quantitative analysis
title_fullStr Machine learning methods for automated classification of tumors with papillary thyroid carcinoma-like nuclei: A quantitative analysis
title_full_unstemmed Machine learning methods for automated classification of tumors with papillary thyroid carcinoma-like nuclei: A quantitative analysis
title_short Machine learning methods for automated classification of tumors with papillary thyroid carcinoma-like nuclei: A quantitative analysis
title_sort machine learning methods for automated classification of tumors with papillary thyroid carcinoma-like nuclei: a quantitative analysis
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8457451/
https://www.ncbi.nlm.nih.gov/pubmed/34550999
http://dx.doi.org/10.1371/journal.pone.0257635
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