Automated detection of chronic kidney disease using higher-order features and elongated quinary patterns from B-mode ultrasound images

Document Type

Article

Publication Date

8-1-2020

Abstract

Chronic kidney disease (CKD) is a continuing loss of kidney function, and early detection of this disease is fundamental to halting its progression to end-stage disease. Numerous methods have been proposed to detect CKD, mainly focusing on classification based upon peripheral clinical parameters and quantitative ultrasound parameters that must be manually calculated, or on shear wave elastography. No studies have been found that detect the presence or absence of CKD based solely from one B-mode ultrasound image. In this work, we propose an automated system to detect chronic kidney disease utilizing only the automatic extraction of features from a B-mode ultrasound image of the kidney, with a database of 405 images. Higher-order bispectrum and cumulants, and elongated quinary patterns, are extracted from each image to provide a final total of 24,480 features per image. These features were subjected to a locality sensitive discriminant analysis (LSDA) technique, which provides 30 LSDA coefficients. The coefficients were arranged according to theirtvalue and inserted into various classifiers, to yield the best diagnostic accuracy using the least number of features. The best performance was obtained using a support vector machine and a radial basis function, utilizing only five features, resulting in an accuracy of 99.75%, a sensitivity of 100%, and a specificity of 99.57%. Based upon these findings, it is evident that the technique accurately and automatically identifies subjects with and without CKD from B-mode ultrasound images.

Keywords

Chronic kidney disease, Bispectrum, Cumulants, Elongated quinary pattern, Locality sensitive discriminant analysis, Ultrasound

Divisions

biomed

Funders

UMSE CA.R.E fund,PV018-2018,Universiti Malaya

Publication Title

Neural Computing & Applications

Volume

32

Issue

15

Publisher

Springer London Ltd

Publisher Location

236 GRAYS INN RD, 6TH FLOOR, LONDON WC1X 8HL, ENGLAND

This document is currently not available here.

Share

COinS