Literature DB >> 23415158

Automated labelling of cancer textures in colorectal histopathology slides using quasi-supervised learning.

Devrim Onder1, Sulen Sarioglu, Bilge Karacali.   

Abstract

Quasi-supervised learning is a statistical learning algorithm that contrasts two datasets by computing estimate for the posterior probability of each sample in either dataset. This method has not been applied to histopathological images before. The purpose of this study is to evaluate the performance of the method to identify colorectal tissues with or without adenocarcinoma. Light microscopic digital images from histopathological sections were obtained from 30 colorectal radical surgery materials including adenocarcinoma and non-neoplastic regions. The texture features were extracted by using local histograms and co-occurrence matrices. The quasi-supervised learning algorithm operates on two datasets, one containing samples of normal tissues labelled only indirectly, and the other containing an unlabeled collection of samples of both normal and cancer tissues. As such, the algorithm eliminates the need for manually labelled samples of normal and cancer tissues for conventional supervised learning and significantly reduces the expert intervention. Several texture feature vector datasets corresponding to different extraction parameters were tested within the proposed framework. The Independent Component Analysis dimensionality reduction approach was also identified as the one improving the labelling performance evaluated in this series. In this series, the proposed method was applied to the dataset of 22,080 vectors with reduced dimensionality 119 from 132. Regions containing cancer tissue could be identified accurately having false and true positive rates up to 19% and 88% respectively without using manually labelled ground-truth datasets in a quasi-supervised strategy. The resulting labelling performances were compared to that of a conventional powerful supervised classifier using manually labelled ground-truth data. The supervised classifier results were calculated as 3.5% and 95% for the same case. The results in this series in comparison with the benchmark classifier, suggest that quasi-supervised image texture labelling may be a useful method in the analysis and classification of pathological slides but further study is required to improve the results.
Copyright © 2013 Elsevier Ltd. All rights reserved.

Entities:  

Mesh:

Year:  2013        PMID: 23415158     DOI: 10.1016/j.micron.2013.01.003

Source DB:  PubMed          Journal:  Micron        ISSN: 0968-4328            Impact factor:   2.251


  5 in total

1.  Cell segmentation in histopathological images with deep learning algorithms by utilizing spatial relationships.

Authors:  Nuh Hatipoglu; Gokhan Bilgin
Journal:  Med Biol Eng Comput       Date:  2017-02-28       Impact factor: 2.602

2.  Confident texture-based laryngeal tissue classification for early stage diagnosis support.

Authors:  Sara Moccia; Elena De Momi; Marco Guarnaschelli; Matteo Savazzi; Andrea Laborai; Luca Guastini; Giorgio Peretti; Leonardo S Mattos
Journal:  J Med Imaging (Bellingham)       Date:  2017-09-29

3.  Cancer diagnosis through a tandem of classifiers for digitized histopathological slides.

Authors:  Daniel Lichtblau; Catalin Stoean
Journal:  PLoS One       Date:  2019-01-16       Impact factor: 3.240

4.  Pan-cancer diagnostic consensus through searching archival histopathology images using artificial intelligence.

Authors:  Shivam Kalra; H R Tizhoosh; Sultaan Shah; Charles Choi; Savvas Damaskinos; Amir Safarpoor; Sobhan Shafiei; Morteza Babaie; Phedias Diamandis; Clinton J V Campbell; Liron Pantanowitz
Journal:  NPJ Digit Med       Date:  2020-03-10

Review 5.  Development of artificial intelligence technology in diagnosis, treatment, and prognosis of colorectal cancer.

Authors:  Feng Liang; Shu Wang; Kai Zhang; Tong-Jun Liu; Jian-Nan Li
Journal:  World J Gastrointest Oncol       Date:  2022-01-15
  5 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.