e-ISSN : 0975-4024 p-ISSN : 2319-8613   
CODEN : IJETIY    

International Journal of Engineering and Technology

Home
IJET Topics
Call for Papers 2021
Author Guidelines
Special Issue
Current Issue
Articles in Press
Archives
Editorial Board
Reviewer List
Publication Ethics and Malpractice statement
Authors Publication Ethics
Policy of screening for plagiarism
Open Access Statement
Terms and Conditions
Contact Us

ABSTRACT

ISSN: 0975-4024

Title : Proficient Feature Extraction Strategy for Performance Enhancement of NN Based Early Breast Tumor Detection
Authors : Khondker Jahid Reza, Sabira Khatun, Mohd F. Jamlos, Ikram-e-Khuda, Zahereel Ishwar Abdul Khalib
Keywords : Breast Cancer Detection, Discrete Cosine Transform, Feature Extraction, Neural Network, Ultra Wide-Band.
Issue Date : Dec 2013-Jan 2014
Abstract :
Ultra Wideband is one of the promising microwave imaging techniques for breast tumor prognosis. The basic principle of tumor detection depends on the dielectric properties discrepancies between healthy and tumorous tissue. Usually, the tumor affected tissues scatter more signal than the healthy one and are used for early tumor detection through received pulses. Feedforward back-propagation neural network(NN) was so far used for some research works by showing its detection efficiency up to 1mm (radius) size with 95.8% accuracy. This paper introduces an efficient feature extraction method to further improve the performance by considering four main features of back-propagation NN. This performance is being increased to 99.99%. This strategy is well justified for classifying the normal and tumor affected breast with 100% accuracy in its early stage. It also enhances the training and testing performances by reducing the required duration. The overall performance is 99.99% verified by using thirteen different tumor sizes.
Page(s) : 4689-4696
ISSN : 0975-4024
Source : Vol. 5, No.6