Literature DB >> 28799130

Near-set Based Mucin Segmentation in Histopathology Images for Detecting Mucinous Carcinoma.

Soma Banerjee1, Monjoy Saha2, Indu Arun3, Bijan Basak3, Sanjit Agarwal3, Rosina Ahmed3, Sanjoy Chatterjee3, Lipi B Mahanta4, Chandan Chakraborty5.   

Abstract

This paper introducesnear-set based segmentation method for extraction and quantification of mucin regions for detecting mucinouscarcinoma (MC which is a sub type of Invasive ductal carcinoma (IDC)). From histology point of view, the presence of mucin is one of the indicators for detection of this carcinoma. In order to detect MC, the proposed method majorly includes pre-processing by colour correction, colour transformation followed by near-set based segmentation and post-processing for delineating only mucin regions from the histological images at 40×. The segmentation step works in two phases such as Learn and Run.In pre-processing step, white balance method is used for colour correction of microscopic images (RGB format). These images are transformed into HSI (Hue, Saturation, and Intensity) colour space and H-plane is extracted in order to get better visual separation of the different histological regions (background, mucin and tissue regions). Thereafter, histogram in H-plane is optimally partitioned to find set representation for each of the regions. In Learn phase, features of typical mucin pixel and unlabeled pixels are learnt in terms of coverage of observed sets in the sample space surrounding the pixel under consideration. On the other hand, in Run phase the unlabeled pixels are clustered as mucin and non-mucin based on its indiscernibilty with ideal mucin, i.e. their feature values differ within a tolerance limit. This experiment is performed for grade-I and grade-II of MC and hence percentage of average segmentation accuracy is achieved within confidence interval of [97.36 97.70] for extracting mucin areas. In addition, computation of percentage of mucin present in a histological image is provided for understanding the alteration of such diagnostic indicator in MC detection.

Entities:  

Keywords:  Indiscernibility; Invasive ductal carcinoma; Mucin; Near-set; Tolerance

Mesh:

Substances:

Year:  2017        PMID: 28799130     DOI: 10.1007/s10916-017-0792-6

Source DB:  PubMed          Journal:  J Med Syst        ISSN: 0148-5598            Impact factor:   4.460


  13 in total

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Authors:  Michael A Hollingsworth; Benjamin J Swanson
Journal:  Nat Rev Cancer       Date:  2004-01       Impact factor: 60.716

2.  Rough set based generalized fuzzy c-means algorithm and quantitative indices.

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Journal:  IEEE Trans Syst Man Cybern B Cybern       Date:  2007-12

Review 3.  Rough sets and near sets in medical imaging: a review.

Authors:  Aboul Ella Hassanien; Ajith Abraham; James F Peters; Gerald Schaefer; Christopher Henry
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Review 4.  Computer-aided diagnosis of breast cancer using cytological images: A systematic review.

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Journal:  Tissue Cell       Date:  2016-07-30       Impact factor: 2.466

5.  Quantitative microscopic evaluation of mucin areas and its percentage in mucinous carcinoma of the breast using tissue histological images.

Authors:  Monjoy Saha; Indu Arun; Bijan Basak; Sanjit Agarwal; Rosina Ahmed; Sanjoy Chatterjee; Rohit Bhargava; Chandan Chakraborty
Journal:  Tissue Cell       Date:  2016-02-26       Impact factor: 2.466

6.  Invasive mucinous carcinoma of the breast.

Authors:  Kelli Y Ha; Patricia Deleon; William Deleon
Journal:  Proc (Bayl Univ Med Cent)       Date:  2013-07

Review 7.  Emerging role of mucins in epithelial to mesenchymal transition.

Authors:  Moorthy P Ponnusamy; Parthasarathy Seshacharyulu; Imayavaramban Lakshmanan; Arokia P Vaz; Seema Chugh; Surinder K Batra
Journal:  Curr Cancer Drug Targets       Date:  2013-11       Impact factor: 3.428

8.  Mucinous carcinoma of the breast in comparison with invasive ductal carcinoma: clinicopathologic characteristics and prognosis.

Authors:  Soo Youn Bae; Min-Young Choi; Dong Hui Cho; Jeong Eon Lee; Seok Jin Nam; Jung-Hyun Yang
Journal:  J Breast Cancer       Date:  2011-12-27       Impact factor: 3.588

9.  An Advanced Deep Learning Approach for Ki-67 Stained Hotspot Detection and Proliferation Rate Scoring for Prognostic Evaluation of Breast Cancer.

Authors:  Monjoy Saha; Chandan Chakraborty; Indu Arun; Rosina Ahmed; Sanjoy Chatterjee
Journal:  Sci Rep       Date:  2017-06-12       Impact factor: 4.379

10.  Histological grading and prognosis in breast cancer; a study of 1409 cases of which 359 have been followed for 15 years.

Authors:  H J BLOOM; W W RICHARDSON
Journal:  Br J Cancer       Date:  1957-09       Impact factor: 7.640

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  1 in total

1.  Study on Contribution of Biological Interpretable and Computer-Aided Features Towards the Classification of Childhood Medulloblastoma Cells.

Authors:  Daisy Das; Lipi B Mahanta; Shabnam Ahmed; Basanta Kr Baishya; Inamul Haque
Journal:  J Med Syst       Date:  2018-07-04       Impact factor: 4.460

  1 in total

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