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Prognostic Classification of Early Ovarian Cancer Based on very Low Dimensionality Adaptive Texture Feature Vectors from Cell Nuclei from Monolayers and Histological Sections

In order to study the prognostic value of quantifying the chromatin structure of cell nuclei from patients with early ovarian cancer, low dimensionality adaptive fractal and Gray Level Cooccurrence Matrix texture feature vectors were extracted from nuclei images of monolayers and histological sectio...

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Detalles Bibliográficos
Autores principales: Nielsen, Birgitte, Albregtsen, Fritz, Kildal, Wanja, Danielsen, Håvard E.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: IOS Press 2001
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4618001/
https://www.ncbi.nlm.nih.gov/pubmed/11904463
http://dx.doi.org/10.1155/2001/683747
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author Nielsen, Birgitte
Albregtsen, Fritz
Kildal, Wanja
Danielsen, Håvard E.
author_facet Nielsen, Birgitte
Albregtsen, Fritz
Kildal, Wanja
Danielsen, Håvard E.
author_sort Nielsen, Birgitte
collection PubMed
description In order to study the prognostic value of quantifying the chromatin structure of cell nuclei from patients with early ovarian cancer, low dimensionality adaptive fractal and Gray Level Cooccurrence Matrix texture feature vectors were extracted from nuclei images of monolayers and histological sections. Each light microscopy nucleus image was divided into a peripheral and a central part, representing 30% and 70% of the total area of the nucleus, respectively. Textural features were then extracted from the peripheral and central parts of the nuclei images. The adaptive feature extraction was based on Class Difference Matrices and Class Distance Matrices. These matrices were useful to illustrate the difference in chromatin texture between the good and bad prognosis classes of ovarian samples. Class Difference and Distance Matrices also clearly illustrated the difference in texture between the peripheral and central parts of cell nuclei. Both when working with nuclei images from monolayers and from histological sections it seems useful to extract separate features from the peripheral and central parts of the nuclei images.
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spelling pubmed-46180012016-01-12 Prognostic Classification of Early Ovarian Cancer Based on very Low Dimensionality Adaptive Texture Feature Vectors from Cell Nuclei from Monolayers and Histological Sections Nielsen, Birgitte Albregtsen, Fritz Kildal, Wanja Danielsen, Håvard E. Anal Cell Pathol Other In order to study the prognostic value of quantifying the chromatin structure of cell nuclei from patients with early ovarian cancer, low dimensionality adaptive fractal and Gray Level Cooccurrence Matrix texture feature vectors were extracted from nuclei images of monolayers and histological sections. Each light microscopy nucleus image was divided into a peripheral and a central part, representing 30% and 70% of the total area of the nucleus, respectively. Textural features were then extracted from the peripheral and central parts of the nuclei images. The adaptive feature extraction was based on Class Difference Matrices and Class Distance Matrices. These matrices were useful to illustrate the difference in chromatin texture between the good and bad prognosis classes of ovarian samples. Class Difference and Distance Matrices also clearly illustrated the difference in texture between the peripheral and central parts of cell nuclei. Both when working with nuclei images from monolayers and from histological sections it seems useful to extract separate features from the peripheral and central parts of the nuclei images. IOS Press 2001 2001-01-01 /pmc/articles/PMC4618001/ /pubmed/11904463 http://dx.doi.org/10.1155/2001/683747 Text en Copyright © 2001 Hindawi Publishing Corporation.
spellingShingle Other
Nielsen, Birgitte
Albregtsen, Fritz
Kildal, Wanja
Danielsen, Håvard E.
Prognostic Classification of Early Ovarian Cancer Based on very Low Dimensionality Adaptive Texture Feature Vectors from Cell Nuclei from Monolayers and Histological Sections
title Prognostic Classification of Early Ovarian Cancer Based on very Low Dimensionality Adaptive Texture Feature Vectors from Cell Nuclei from Monolayers and Histological Sections
title_full Prognostic Classification of Early Ovarian Cancer Based on very Low Dimensionality Adaptive Texture Feature Vectors from Cell Nuclei from Monolayers and Histological Sections
title_fullStr Prognostic Classification of Early Ovarian Cancer Based on very Low Dimensionality Adaptive Texture Feature Vectors from Cell Nuclei from Monolayers and Histological Sections
title_full_unstemmed Prognostic Classification of Early Ovarian Cancer Based on very Low Dimensionality Adaptive Texture Feature Vectors from Cell Nuclei from Monolayers and Histological Sections
title_short Prognostic Classification of Early Ovarian Cancer Based on very Low Dimensionality Adaptive Texture Feature Vectors from Cell Nuclei from Monolayers and Histological Sections
title_sort prognostic classification of early ovarian cancer based on very low dimensionality adaptive texture feature vectors from cell nuclei from monolayers and histological sections
topic Other
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4618001/
https://www.ncbi.nlm.nih.gov/pubmed/11904463
http://dx.doi.org/10.1155/2001/683747
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