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Identification of Women for Referral to Colposcopy by Neural Networks: A Preliminary Study Based on LBC and Molecular Biomarkers

Objective of this study is to investigate the potential of the learning vector quantizer neural network (LVQ-NN) classifier on various diagnostic variables used in the modern cytopathology laboratory and to build an algorithm that may facilitate the classification of individual cases. From all women...

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Autores principales: Karakitsos, Petros, Chrelias, Charalampos, Pouliakis, Abraham, Koliopoulos, George, Spathis, Aris, Kyrgiou, Maria, Meristoudis, Christos, Chranioti, Aikaterini, Kottaridi, Christine, Valasoulis, George, Panayiotides, Ioannis, Paraskevaidis, Evangelos
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Hindawi Publishing Corporation 2012
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3470889/
https://www.ncbi.nlm.nih.gov/pubmed/23093840
http://dx.doi.org/10.1155/2012/303192
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author Karakitsos, Petros
Chrelias, Charalampos
Pouliakis, Abraham
Koliopoulos, George
Spathis, Aris
Kyrgiou, Maria
Meristoudis, Christos
Chranioti, Aikaterini
Kottaridi, Christine
Valasoulis, George
Panayiotides, Ioannis
Paraskevaidis, Evangelos
author_facet Karakitsos, Petros
Chrelias, Charalampos
Pouliakis, Abraham
Koliopoulos, George
Spathis, Aris
Kyrgiou, Maria
Meristoudis, Christos
Chranioti, Aikaterini
Kottaridi, Christine
Valasoulis, George
Panayiotides, Ioannis
Paraskevaidis, Evangelos
author_sort Karakitsos, Petros
collection PubMed
description Objective of this study is to investigate the potential of the learning vector quantizer neural network (LVQ-NN) classifier on various diagnostic variables used in the modern cytopathology laboratory and to build an algorithm that may facilitate the classification of individual cases. From all women included in the study, a liquid-based cytology sample was obtained; this was tested via HPV DNA test, E6/E7 HPV mRNA test, and p16 immunostaining. The data were classified by the LVQ-NN into two groups: CIN-2 or worse and CIN-1 or less. Half of the cases were used to train the LVQ-NN; the remaining cases (test set) were used for validation. Out of the 1258 cases, cytology identified correctly 72.90% of the CIN-2 or worst cases and 97.37% of the CIN-1 or less cases, with overall accuracy 94.36%. The application of the LVQ-NN on the test set allowed correct classification for 84.62% of the cases with CIN-2 or worse and 97.64% of the cases with CIN-1 or less, with overall accuracy of 96.03%. The use of the LVQ-NN with cytology and the proposed biomarkers improves significantly the correct classification of cervical precancerous lesions and/or cancer and may facilitate diagnosis and patient management.
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spelling pubmed-34708892012-10-23 Identification of Women for Referral to Colposcopy by Neural Networks: A Preliminary Study Based on LBC and Molecular Biomarkers Karakitsos, Petros Chrelias, Charalampos Pouliakis, Abraham Koliopoulos, George Spathis, Aris Kyrgiou, Maria Meristoudis, Christos Chranioti, Aikaterini Kottaridi, Christine Valasoulis, George Panayiotides, Ioannis Paraskevaidis, Evangelos J Biomed Biotechnol Research Article Objective of this study is to investigate the potential of the learning vector quantizer neural network (LVQ-NN) classifier on various diagnostic variables used in the modern cytopathology laboratory and to build an algorithm that may facilitate the classification of individual cases. From all women included in the study, a liquid-based cytology sample was obtained; this was tested via HPV DNA test, E6/E7 HPV mRNA test, and p16 immunostaining. The data were classified by the LVQ-NN into two groups: CIN-2 or worse and CIN-1 or less. Half of the cases were used to train the LVQ-NN; the remaining cases (test set) were used for validation. Out of the 1258 cases, cytology identified correctly 72.90% of the CIN-2 or worst cases and 97.37% of the CIN-1 or less cases, with overall accuracy 94.36%. The application of the LVQ-NN on the test set allowed correct classification for 84.62% of the cases with CIN-2 or worse and 97.64% of the cases with CIN-1 or less, with overall accuracy of 96.03%. The use of the LVQ-NN with cytology and the proposed biomarkers improves significantly the correct classification of cervical precancerous lesions and/or cancer and may facilitate diagnosis and patient management. Hindawi Publishing Corporation 2012 2012-10-03 /pmc/articles/PMC3470889/ /pubmed/23093840 http://dx.doi.org/10.1155/2012/303192 Text en Copyright © 2012 Petros Karakitsos et al. 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
Karakitsos, Petros
Chrelias, Charalampos
Pouliakis, Abraham
Koliopoulos, George
Spathis, Aris
Kyrgiou, Maria
Meristoudis, Christos
Chranioti, Aikaterini
Kottaridi, Christine
Valasoulis, George
Panayiotides, Ioannis
Paraskevaidis, Evangelos
Identification of Women for Referral to Colposcopy by Neural Networks: A Preliminary Study Based on LBC and Molecular Biomarkers
title Identification of Women for Referral to Colposcopy by Neural Networks: A Preliminary Study Based on LBC and Molecular Biomarkers
title_full Identification of Women for Referral to Colposcopy by Neural Networks: A Preliminary Study Based on LBC and Molecular Biomarkers
title_fullStr Identification of Women for Referral to Colposcopy by Neural Networks: A Preliminary Study Based on LBC and Molecular Biomarkers
title_full_unstemmed Identification of Women for Referral to Colposcopy by Neural Networks: A Preliminary Study Based on LBC and Molecular Biomarkers
title_short Identification of Women for Referral to Colposcopy by Neural Networks: A Preliminary Study Based on LBC and Molecular Biomarkers
title_sort identification of women for referral to colposcopy by neural networks: a preliminary study based on lbc and molecular biomarkers
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3470889/
https://www.ncbi.nlm.nih.gov/pubmed/23093840
http://dx.doi.org/10.1155/2012/303192
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