(18.226.93.207)
Users online: 7404     
Ijournet
Email id
 

Indian Journal of Public Health Research & Development
Year : 2018, Volume : 9, Issue : 12
First page : ( 2672) Last page : ( 2678)
Print ISSN : 0976-0245. Online ISSN : 0976-5506.
Article DOI : 10.5958/0976-5506.2018.02120.4

Performance Analysis of Machine Learning Based Classifiers for the Diagnosis of Lung Cancer & Comparison

Mathews Arun B.1, Jeyakumar M. K.2

1Research Scholar, Department of Computer Science Noorul Islam Centre for Higher Education, Tamil Nadu, India

2Professor, Department of Computer Applications, Noorul Islam Centre for Higher Education, Tamil Nadu, India

Online published on 2 February, 2019.

Abstract

Objective

In this paper, diagnosing in premature stages a detection system has been designed which contains the following digital image processing techniques.

Analysis

Lung cancer is the most injurious form of cancer which affects the human. Lung cancer has quickly increased in western part of the country among the world. Various feature combinations are given as the input to the KNN and ANN classifiers.

Method

First, dermoscopy image of lung is taken, and it is subjected to the pre-processing step for noise removal and post-processing step for image enhancement. Then the processed image undergoes image segmentation using Otsu method & Morphological processing. Second, features are extracted using feature extraction technique-GLCM, and FOS.

Findings

KNN classifier is used to classify the data set into two classes. ANN classifier is used to classify the data set based on the number of layers. Performance is analyzed based on the accuracy of the learning classifier output.

Result

The proposed system defines an effective way to detect the lung lesion more accurately and faster by segmenting the lesions images.

Top

Keywords

Lung Cancer, Otsu, Morphological, Feature extraction, KNN, and ANN.

Top

 
║ Site map ║ Privacy Policy ║ Copyright ║ Terms & Conditions ║ Page Rank Tool
741,738,653 visitor(s) since 30th May, 2005.
All rights reserved. Site designed and maintained by DIVA ENTERPRISES PVT. LTD..
Note: Please use Internet Explorer (6.0 or above). Some functionalities may not work in other browsers.