Predicting Life Expectancy of Hepatitis B Patients using Machine Learning

Nabeel Ali,Dolley Srivastava, Aditya Tiwari, Akash Pandey,Abhay Kumar Pandey, Akshat Sahu

2022 IEEE International Conference on Distributed Computing and Electrical Circuits and Electronics (ICDCECE)(2022)

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Abstract
The goal of this project is to find the best tool for predicting the life expectancy of people with Hepatitis B. Different Machine Learning methods have been completely studied and various Machine Learning methods have been carried out by different experimenters. Hepatitis B is a worldwide disease with a high mortality rate. Different methods have been used by different researchers to predict the life expectancy of Hepatitis B patients. The Machine Learning models and algorithms such as the Classification model, Logistic Regression model, Recursive Feature Elimination Algorithm, Cirrhosis Mortality model, Extreme Gradient Boosting, Random Forest, Decision Tree have been utilized by different researchers to predict the life expectancy of Hepatitis B patients. Some algorithms and models showed very interesting and proving results whereas some were not that good. Area Under Curve analysis was used to assess the estimation of various models. The AUROC value of the PSO model was minimal, while the ADT model had the highest accuracy. XGBoost showed appropriate predictive performance. All other models showed good calibration.
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Key words
life expectancy,machine learning
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