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Radial Basis Function Artificial Neural Network for the Investigation of Thyroid Cytological Lesions

OBJECTIVE: This study investigates the potential of an artificial intelligence (AI) methodology, the radial basis function (RBF) artificial neural network (ANN), in the evaluation of thyroid lesions. Study Design. The study was performed on 447 patients who had both cytological and histological eval...

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Autores principales: Fragopoulos, Christos, Pouliakis, Abraham, Meristoudis, Christos, Mastorakis, Emmanouil, Margari, Niki, Chroniaris, Nicolaos, Koufopoulos, Nektarios, Delides, Alexander G., Machairas, Nicolaos, Ntomi, Vasileia, Nastos, Konstantinos, Panayiotides, Ioannis G., Pikoulis, Emmanouil, Misiakos, Evangelos P.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Hindawi 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7707952/
https://www.ncbi.nlm.nih.gov/pubmed/33299540
http://dx.doi.org/10.1155/2020/5464787
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author Fragopoulos, Christos
Pouliakis, Abraham
Meristoudis, Christos
Mastorakis, Emmanouil
Margari, Niki
Chroniaris, Nicolaos
Koufopoulos, Nektarios
Delides, Alexander G.
Machairas, Nicolaos
Ntomi, Vasileia
Nastos, Konstantinos
Panayiotides, Ioannis G.
Pikoulis, Emmanouil
Misiakos, Evangelos P.
author_facet Fragopoulos, Christos
Pouliakis, Abraham
Meristoudis, Christos
Mastorakis, Emmanouil
Margari, Niki
Chroniaris, Nicolaos
Koufopoulos, Nektarios
Delides, Alexander G.
Machairas, Nicolaos
Ntomi, Vasileia
Nastos, Konstantinos
Panayiotides, Ioannis G.
Pikoulis, Emmanouil
Misiakos, Evangelos P.
author_sort Fragopoulos, Christos
collection PubMed
description OBJECTIVE: This study investigates the potential of an artificial intelligence (AI) methodology, the radial basis function (RBF) artificial neural network (ANN), in the evaluation of thyroid lesions. Study Design. The study was performed on 447 patients who had both cytological and histological evaluation in agreement. Cytological specimens were prepared using liquid-based cytology, and the histological result was based on subsequent surgical samples. Each specimen was digitized; on these images, nuclear morphology features were measured by the use of an image analysis system. The extracted measurements (41,324 nuclei) were separated into two sets: the training set that was used to create the RBF ANN and the test set that was used to evaluate the RBF performance. The system aimed to predict the histological status as benign or malignant. RESULTS: The RBF ANN obtained in the training set has sensitivity 82.5%, specificity 94.6%, and overall accuracy 90.3%, while in the test set, these indices were 81.4%, 90.0%, and 86.9%, respectively. Algorithm was used to classify patients on the basis of the RBF ANN, the overall sensitivity was 95.0%, the specificity was 95.5%, and no statistically significant difference was observed. CONCLUSION: AI techniques and especially ANNs, only in the recent years, have been studied extensively. The proposed approach is promising to avoid misdiagnoses and assists the everyday practice of the cytopathology. The major drawback in this approach is the automation of a procedure to accurately detect and measure cell nuclei from the digitized images.
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spelling pubmed-77079522020-12-08 Radial Basis Function Artificial Neural Network for the Investigation of Thyroid Cytological Lesions Fragopoulos, Christos Pouliakis, Abraham Meristoudis, Christos Mastorakis, Emmanouil Margari, Niki Chroniaris, Nicolaos Koufopoulos, Nektarios Delides, Alexander G. Machairas, Nicolaos Ntomi, Vasileia Nastos, Konstantinos Panayiotides, Ioannis G. Pikoulis, Emmanouil Misiakos, Evangelos P. J Thyroid Res Research Article OBJECTIVE: This study investigates the potential of an artificial intelligence (AI) methodology, the radial basis function (RBF) artificial neural network (ANN), in the evaluation of thyroid lesions. Study Design. The study was performed on 447 patients who had both cytological and histological evaluation in agreement. Cytological specimens were prepared using liquid-based cytology, and the histological result was based on subsequent surgical samples. Each specimen was digitized; on these images, nuclear morphology features were measured by the use of an image analysis system. The extracted measurements (41,324 nuclei) were separated into two sets: the training set that was used to create the RBF ANN and the test set that was used to evaluate the RBF performance. The system aimed to predict the histological status as benign or malignant. RESULTS: The RBF ANN obtained in the training set has sensitivity 82.5%, specificity 94.6%, and overall accuracy 90.3%, while in the test set, these indices were 81.4%, 90.0%, and 86.9%, respectively. Algorithm was used to classify patients on the basis of the RBF ANN, the overall sensitivity was 95.0%, the specificity was 95.5%, and no statistically significant difference was observed. CONCLUSION: AI techniques and especially ANNs, only in the recent years, have been studied extensively. The proposed approach is promising to avoid misdiagnoses and assists the everyday practice of the cytopathology. The major drawback in this approach is the automation of a procedure to accurately detect and measure cell nuclei from the digitized images. Hindawi 2020-11-24 /pmc/articles/PMC7707952/ /pubmed/33299540 http://dx.doi.org/10.1155/2020/5464787 Text en Copyright © 2020 Christos Fragopoulos et al. https://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Article
Fragopoulos, Christos
Pouliakis, Abraham
Meristoudis, Christos
Mastorakis, Emmanouil
Margari, Niki
Chroniaris, Nicolaos
Koufopoulos, Nektarios
Delides, Alexander G.
Machairas, Nicolaos
Ntomi, Vasileia
Nastos, Konstantinos
Panayiotides, Ioannis G.
Pikoulis, Emmanouil
Misiakos, Evangelos P.
Radial Basis Function Artificial Neural Network for the Investigation of Thyroid Cytological Lesions
title Radial Basis Function Artificial Neural Network for the Investigation of Thyroid Cytological Lesions
title_full Radial Basis Function Artificial Neural Network for the Investigation of Thyroid Cytological Lesions
title_fullStr Radial Basis Function Artificial Neural Network for the Investigation of Thyroid Cytological Lesions
title_full_unstemmed Radial Basis Function Artificial Neural Network for the Investigation of Thyroid Cytological Lesions
title_short Radial Basis Function Artificial Neural Network for the Investigation of Thyroid Cytological Lesions
title_sort radial basis function artificial neural network for the investigation of thyroid cytological lesions
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7707952/
https://www.ncbi.nlm.nih.gov/pubmed/33299540
http://dx.doi.org/10.1155/2020/5464787
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