Literature DB >> 28319275

MRF-ANN: a machine learning approach for automated ER scoring of breast cancer immunohistochemical images.

T Mungle1, S Tewary1, D K Das1, I Arun2, B Basak2, S Agarwal2, R Ahmed2, S Chatterjee2, C Chakraborty1.   

Abstract

Molecular pathology, especially immunohistochemistry, plays an important role in evaluating hormone receptor status along with diagnosis of breast cancer. Time-consumption and inter-/intraobserver variability are major hindrances for evaluating the receptor score. In view of this, the paper proposes an automated Allred Scoring methodology for estrogen receptor (ER). White balancing is used to normalize the colour image taking into consideration colour variation during staining in different labs. Markov random field model with expectation-maximization optimization is employed to segment the ER cells. The proposed segmentation methodology is found to have F-measure 0.95. Artificial neural network is subsequently used to obtain intensity-based score for ER cells, from pixel colour intensity features. Simultaneously, proportion score - percentage of ER positive cells is computed via cell counting. The final ER score is computed by adding intensity and proportion scores - a standard Allred scoring system followed by pathologists. The classification accuracy for classification of cells by classifier in terms of F-measure is 0.9626. The problem of subjective interobserver ability is addressed by quantifying ER score from two expert pathologist and proposed methodology. The intraclass correlation achieved is greater than 0.90. The study has potential advantage of assisting pathologist in decision making over manual procedure and could evolve as a part of automated decision support system with other receptor scoring/analysis procedure.
© 2017 The Authors Journal of Microscopy © 2017 Royal Microscopical Society.

Entities:  

Keywords:  Artificial neural network; ER score; Markov random field; breast cancer; immunohistochemistry

Mesh:

Substances:

Year:  2017        PMID: 28319275     DOI: 10.1111/jmi.12552

Source DB:  PubMed          Journal:  J Microsc        ISSN: 0022-2720            Impact factor:   1.758


  4 in total

1.  Predict Ki-67 Positive Cells in H&E-Stained Images Using Deep Learning Independently From IHC-Stained Images.

Authors:  Yiqing Liu; Xi Li; Aiping Zheng; Xihan Zhu; Shuting Liu; Mengying Hu; Qianjiang Luo; Huina Liao; Mubiao Liu; Yonghong He; Yupeng Chen
Journal:  Front Mol Biosci       Date:  2020-08-04

Review 2.  Artificial intelligence in digital pathology - new tools for diagnosis and precision oncology.

Authors:  Kaustav Bera; Kurt A Schalper; David L Rimm; Vamsidhar Velcheti; Anant Madabhushi
Journal:  Nat Rev Clin Oncol       Date:  2019-08-09       Impact factor: 66.675

3.  Round Robin Evaluation of MET Protein Expression in Lung Adenocarcinomas Improves Interobserver Concordance.

Authors:  Theresa A Boyle; Farah K Khalil; Mari Mino-Kenudson; Gabriel L Sica; Andre L Moreira; Lynette M Sholl; Mirna Z Knight; Liping Zhang; James Saller; Marileila Varella-Garcia; Lynne D Berry; Heidi Chen; Kim E Ellison; Christopher J Rivard; Kelly Kugler; Ignacio I Wistuba; Junya Fujimoto; David J Kwiatkowski; Paul A Bunn; Mark G Kris; Eric B Haura; Fred R Hirsch
Journal:  Appl Immunohistochem Mol Morphol       Date:  2020-10

Review 4.  Machine Learning Methods for Histopathological Image Analysis.

Authors:  Daisuke Komura; Shumpei Ishikawa
Journal:  Comput Struct Biotechnol J       Date:  2018-02-09       Impact factor: 7.271

  4 in total

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