Survey of Liver Disease Prediction Using Machine Learning

Authors

  • Trupti M. Kodinariya Assistant Professor, Department of Computer Engineering, Government Engineering College, Rajkot, Gujarat, India
  • Nikhil Gondaliya Profesor and Head at Department of Information Technology, G H Patel College of Engineering and Technology, Vallabh Vidyanagar, Gujarat, India

DOI:

https://doi.org/10.37591/joaira.v10i1.489

Keywords:

Deep learning, Liver Disease, Liver Function Test, Machine learning

Abstract

Liver disease is one of the major causes of death in all over world that impacts the number of people around the world. Diagnosis of liver at early stages is crucial to reduce morality. As technology is growing in health care, machine learning significantly affects health care for predicting conditions at early stages. This study reviews the different approaches based on machine learning and deep learning to predict liver disease. The survey shows that blood test method is used to classify patient as healthy or sick and liver diagnosis based on radiologist images such as Ultrasonic images (US), Computer tomography (CT) images, Magnetic resonance imaging (MRI) etc. are used for liver cancer, fatty liver and cirrhosis detection.

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Published

2023-04-28

Issue

Section

Review Article