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Segmentation and Grade Prediction of Colon Cancer Digital Pathology Images Across Multiple Institutions

Distinguishing benign from malignant disease is a primary challenge for colon histopathologists. Current clinical methods rely on qualitative visual analysis of features such as glandular architecture and size that exist on a continuum from benign to malignant. Consequently, discordance between hist...

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Autores principales: Rathore, Saima, Iftikhar, Muhammad Aksam, Chaddad, Ahmad, Niazi, Tamim, Karasic, Thomas, Bilello, Michel
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6896042/
https://www.ncbi.nlm.nih.gov/pubmed/31683818
http://dx.doi.org/10.3390/cancers11111700
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author Rathore, Saima
Iftikhar, Muhammad Aksam
Chaddad, Ahmad
Niazi, Tamim
Karasic, Thomas
Bilello, Michel
author_facet Rathore, Saima
Iftikhar, Muhammad Aksam
Chaddad, Ahmad
Niazi, Tamim
Karasic, Thomas
Bilello, Michel
author_sort Rathore, Saima
collection PubMed
description Distinguishing benign from malignant disease is a primary challenge for colon histopathologists. Current clinical methods rely on qualitative visual analysis of features such as glandular architecture and size that exist on a continuum from benign to malignant. Consequently, discordance between histopathologists is common. To provide more reliable analysis of colon specimens, we propose an end-to-end computational pathology pipeline that encompasses gland segmentation, cancer detection, and then further breaking down the malignant samples into different cancer grades. We propose a multi-step gland segmentation method, which models tissue components as ellipsoids. For cancer detection/grading, we encode cellular morphology, spatial architectural patterns of glands, and texture by extracting multi-scale features: (i) Gland-based: extracted from individual glands, (ii) local-patch-based: computed from randomly-selected image patches, and (iii) image-based: extracted from images, and employ a hierarchical ensemble-classification method. Using two datasets (Rawalpindi Medical College (RMC), n = 174 and gland segmentation (GlaS), n = 165) with three cancer grades, our method reliably delineated gland regions (RMC = 87.5%, GlaS = 88.4%), detected the presence of malignancy (RMC = 97.6%, GlaS = 98.3%), and predicted tumor grade (RMC = 98.6%, GlaS = 98.6%). Training the model using one dataset and testing it on the other showed strong concordance in cancer detection (Train RMC – Test GlaS = 94.5%, Train GlaS – Test RMC = 93.7%) and grading (Train RMC – Test GlaS = 95%, Train GlaS – Test RMC = 95%) suggesting that the model will be applicable across institutions. With further prospective validation, the techniques demonstrated here may provide a reproducible and easily accessible method to standardize analysis of colon cancer specimens.
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spelling pubmed-68960422019-12-23 Segmentation and Grade Prediction of Colon Cancer Digital Pathology Images Across Multiple Institutions Rathore, Saima Iftikhar, Muhammad Aksam Chaddad, Ahmad Niazi, Tamim Karasic, Thomas Bilello, Michel Cancers (Basel) Article Distinguishing benign from malignant disease is a primary challenge for colon histopathologists. Current clinical methods rely on qualitative visual analysis of features such as glandular architecture and size that exist on a continuum from benign to malignant. Consequently, discordance between histopathologists is common. To provide more reliable analysis of colon specimens, we propose an end-to-end computational pathology pipeline that encompasses gland segmentation, cancer detection, and then further breaking down the malignant samples into different cancer grades. We propose a multi-step gland segmentation method, which models tissue components as ellipsoids. For cancer detection/grading, we encode cellular morphology, spatial architectural patterns of glands, and texture by extracting multi-scale features: (i) Gland-based: extracted from individual glands, (ii) local-patch-based: computed from randomly-selected image patches, and (iii) image-based: extracted from images, and employ a hierarchical ensemble-classification method. Using two datasets (Rawalpindi Medical College (RMC), n = 174 and gland segmentation (GlaS), n = 165) with three cancer grades, our method reliably delineated gland regions (RMC = 87.5%, GlaS = 88.4%), detected the presence of malignancy (RMC = 97.6%, GlaS = 98.3%), and predicted tumor grade (RMC = 98.6%, GlaS = 98.6%). Training the model using one dataset and testing it on the other showed strong concordance in cancer detection (Train RMC – Test GlaS = 94.5%, Train GlaS – Test RMC = 93.7%) and grading (Train RMC – Test GlaS = 95%, Train GlaS – Test RMC = 95%) suggesting that the model will be applicable across institutions. With further prospective validation, the techniques demonstrated here may provide a reproducible and easily accessible method to standardize analysis of colon cancer specimens. MDPI 2019-11-01 /pmc/articles/PMC6896042/ /pubmed/31683818 http://dx.doi.org/10.3390/cancers11111700 Text en © 2019 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Rathore, Saima
Iftikhar, Muhammad Aksam
Chaddad, Ahmad
Niazi, Tamim
Karasic, Thomas
Bilello, Michel
Segmentation and Grade Prediction of Colon Cancer Digital Pathology Images Across Multiple Institutions
title Segmentation and Grade Prediction of Colon Cancer Digital Pathology Images Across Multiple Institutions
title_full Segmentation and Grade Prediction of Colon Cancer Digital Pathology Images Across Multiple Institutions
title_fullStr Segmentation and Grade Prediction of Colon Cancer Digital Pathology Images Across Multiple Institutions
title_full_unstemmed Segmentation and Grade Prediction of Colon Cancer Digital Pathology Images Across Multiple Institutions
title_short Segmentation and Grade Prediction of Colon Cancer Digital Pathology Images Across Multiple Institutions
title_sort segmentation and grade prediction of colon cancer digital pathology images across multiple institutions
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6896042/
https://www.ncbi.nlm.nih.gov/pubmed/31683818
http://dx.doi.org/10.3390/cancers11111700
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