Deep Learning for Classification of Colorectal Polyps on Whole-slide Images

Context: Histopathological characterization of colorectal polyps is critical for determining the risk of colorectal cancer and future rates of surveillance for patients. However, this characterization is a challenging task and suffers from significant inter- and intra-observer variability. Aims: We...

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Bibliographic Details
Published inJournal of pathology informatics Vol. 8; no. 1; p. 30
Main Authors Korbar, Bruno, Olofson, Andrea M., Miraflor, Allen P, Nicka, Catherine M., Suriawinata, Matthew A., Torresani, Lorenzo, Suriawinata, Arief A., Hassanpour, Saeed
Format Journal Article
LanguageEnglish
Published India Elsevier Inc 01.01.2017
Wolters Kluwer India Pvt. Ltd
Medknow Publications & Media Pvt. Ltd
Medknow Publications & Media Pvt Ltd
Elsevier
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Summary:Context: Histopathological characterization of colorectal polyps is critical for determining the risk of colorectal cancer and future rates of surveillance for patients. However, this characterization is a challenging task and suffers from significant inter- and intra-observer variability. Aims: We built an automatic image analysis method that can accurately classify different types of colorectal polyps on whole-slide images to help pathologists with this characterization and diagnosis. Setting and Design: Our method is based on deep-learning techniques, which rely on numerous levels of abstraction for data representation and have shown state-of-the-art results for various image analysis tasks. Subjects and Methods: Our method covers five common types of polyps (i.e., hyperplastic, sessile serrated, traditional serrated, tubular, and tubulovillous/villous) that are included in the US Multisociety Task Force guidelines for colorectal cancer risk assessment and surveillance. We developed multiple deep-learning approaches by leveraging a dataset of 2074 crop images, which were annotated by multiple domain expert pathologists as reference standards. Statistical Analysis: We evaluated our method on an independent test set of 239 whole-slide images and measured standard machine-learning evaluation metrics of accuracy, precision, recall, and F1 score and their 95% confidence intervals. Results: Our evaluation shows that our method with residual network architecture achieves the best performance for classification of colorectal polyps on whole-slide images (overall accuracy: 93.0%, 95% confidence interval: 89.0%-95.9%). Conclusions: Our method can reduce the cognitive burden on pathologists and improve their efficacy in histopathological characterization ofcolorectal polyps and in subsequent risk assessment and follow-up recommendations.
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ISSN:2153-3539
2229-5089
2153-3539
DOI:10.4103/jpi.jpi_34_17