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Prediction of cirrhosis disease from radiologist liver medical image using hybrid coupled dictionary pairs on longitudinal domain approach

  • J. KirubakaranEmail author
  • G. K. D. Prasanna Venkatesan
  • S. Baskar
  • M. Kumaresan
  • S. Annamalai
Article
  • 12 Downloads

Abstract

This paper presents a novel algorithm for the liver diseases fibrosis called Cirrhosis, which is considered as the most communal diseases in healthcare research. This research work introduced a technique for discriminating the cirrhotic liver from normal liver through adaptive ultrasound (AUS) instead of ultrasound (US) images with Hybrid Coupled Dictionary Pairs on Longitudinal Domain (HCDPLD). The parameters such as region covered and data structure values or variables has been analyzed using heuristic pattern producing classifierfor identifying the sub-bands and edge features. The developed cirrhosis prediction strategy helps to improve the results of image resolution with the accuracy of 99.82%, Average Peak Signal to Noise Ratio (PSNR) of 3.22 dB and Structural Similarity Index (SSIM) of 0.89 through HCDPLD when compared with existing counterparts. Further Ingestible Internet of Things (IoT) sensors with activity tracker helps to monitor the patient health accurately in reliable data transfer.

Keywords

Cirrhosis Internet of things (IoT) Ultrasound Region of interest PSNR SSIM 

Notes

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Copyright information

© Springer Science+Business Media, LLC, part of Springer Nature 2019

Authors and Affiliations

  • J. Kirubakaran
    • 1
    Email author
  • G. K. D. Prasanna Venkatesan
    • 2
  • S. Baskar
    • 3
  • M. Kumaresan
    • 4
  • S. Annamalai
    • 4
  1. 1.Department of ECEMuthayammal Engineering College (Autonomous)NamakkalIndia
  2. 2.Karpagam Academy of Higher EducationCoimbatoreIndia
  3. 3.Department of Electronics and CommunicationKarpagam Academy of Higher EducationCoimbatoreIndia
  4. 4.School of Computing Science and EngineeringGalgotias UniversityGreater NoidaIndia

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