Liver Disease Prediction Using Machine Learning Algorithms with Comparative Analysis of Different Algorithms

Raiaramesh, Ch and Nayak, Rakesh and Sri Naaesh, O and Laxmi Kanth, P. (2023) Liver Disease Prediction Using Machine Learning Algorithms with Comparative Analysis of Different Algorithms. In: 2023 2nd International Conference on Ambient Intelligence in Health Care (ICAIHC), Bhubaneswar, India.

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Abstract

Today's diseases are more prevalent due to our lifestyle choices, eating habits, and other factors. Of all these
illnesses, liver infections or disorders are the leading cause of all-cause mortality, affecting a sizable population of people inside and beyond the human race. Several factors that affect the liver are to blame for this condition. Being overweight, having an unidentified hepatitis illness, and consuming large amounts of alcohol are some of the factors that contribute to developing liver disease. This is the cause of many other symptoms, including aberrant nerve function, blood vomiting or coughing, kidney and liver failure, jaundice, and hepatic encephalopathy. The condition itself is quite costly and difficult to diagnose. Using predictive machine learning techniques, it is possible to improve accuracy while lowering the high cost of identification. We must determine a person's risk factor
utilizing a blood sample and prediction algorithms.
In this paper, we investigate four prediction methods:
decision tree, logistic regressi0n, rand0m forest, and support vector machine. Additionally, the use of clinical data for the computation of liver disease was the main focus of our work. Through our analysis and patient's long-term sickness prediction, we also looked at a number of representational frameworks.

Item Type: Conference or Workshop Item (Paper)
Subjects: E Computer Science and Engineering > E3 Artificial Intelligence and Machine Learning
Departments: Computer Science and Engineering
Depositing User: Dr Laxmikanth P
Date Deposited: 07 Mar 2024 09:53
Last Modified: 07 Mar 2024 09:53
URI: https://ir.vignanits.ac.in/id/eprint/265

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