Machine learning approach for segmenting glands in colon histology images using local intensity and texture features

05/15/2019
by   Rupali Khatun, et al.
0

Colon Cancer is one of the most common types of cancer. The treatment is planned to depend on the grade or stage of cancer. One of the preconditions for grading of colon cancer is to segment the glandular structures of tissues. Manual segmentation method is very time-consuming, and it leads to life risk for the patients. The principal objective of this project is to assist the pathologist to accurate detection of colon cancer. In this paper, the authors have proposed an algorithm for an automatic segmentation of glands in colon histology using local intensity and texture features. Here the dataset images are cropped into patches with different window sizes and taken the intensity of those patches, and also calculated texture-based features. Random forest classifier has been used to classify this patch into different labels. A multilevel random forest technique in a hierarchical way is proposed. This solution is fast, accurate and it is very much applicable in a clinical setup.

READ FULL TEXT
research
05/14/2017

Gland Segmentation in Histopathology Images Using Random Forest Guided Boundary Construction

Grading of cancer is important to know the extent of its spread. Prior t...
research
11/26/2019

Random Forest as a Tumour Genetic Marker Extractor

Finding tumour genetic markers is essential to biomedicine due to their ...
research
10/06/2020

A Method for Tumor Treating Fields Fast Estimation

Tumor Treating Fields (TTFields) is an FDA approved treatment for specif...
research
03/24/2017

Radiomics strategies for risk assessment of tumour failure in head-and-neck cancer

Quantitative extraction of high-dimensional mineable data from medical i...
research
06/27/2014

3D planar patch extraction from stereo using probabilistic region growing

This article presents a novel 3D planar patch extraction method using a ...

Please sign up or login with your details

Forgot password? Click here to reset