Author:
Harikumar R,Karthikamani R
Abstract
Abstract
In this paper the ultrasonic abdominal diseases are classified using various classifiers and their performances are analysed. Early diagnosis of abdominal disease is very important in deciding the proper treatment process. To carry out any research work without the comparison of the proposed one with the other already existing method is not effective to give better result. Objective of this paper is to review the classification methods based on the standard parameters like, Sensitivity, Specificity, Accuracy. In this review four classification algorithms Naive Bays Classifier, Support Vector Machine (SVM), k-Nearest Neighbor (kNN), Artificial Neural Networks(ANN) are compared.The SVM classifier attained higher accuracy of 98.33 % when compared with all the classifiers.
Reference15 articles.
1. Classification of liver diseases using ultrasound images based on feature combination;Alivar,2014
2. Performance Analysis of Best Speckle Filters for Noise Reduction in Ultrasound Medical Images;Bafaraj;International Journal of Applied Engineering Research ISSN 0973-4562,2019
3. Texture Analysis of Supraspinatus Ultrasound Image for Computer Aided Diagnostic System;Park;Healthc Inform Res,2016
4. Short Survey on Naive Bayes Algorithm;Kaviani;International Journal of Advance Engineering and Research Development,2017
5. Comparative study for 8 computational intelligence algorithms for human identification;Abdulrahman,2020