Artificial Neural Network Model for Hepatitis C Stage Detection
Author(s) -
Dhiman Sarma,
Tanni Mittra,
Muntasir Hoq,
Promila Haque,
Farah Quasem,
Mohammad Jahangir Alam,
Md. Abdul Motaleb Bhuiya,
Sohrab Hossain
Publication year - 2020
Publication title -
edu journal of computer and electrical engineering
Language(s) - English
Resource type - Journals
ISSN - 2790-4334
DOI - 10.46603/ejcee.v1i1.6
Subject(s) - medicine , hepatitis c virus , hepatitis c , hepatitis , liver cancer , stage (stratigraphy) , liver disease , chronic hepatitis , disease , artificial neural network , artificial intelligence , cancer , virus , virology , computer science , biology , paleontology
Hepatitis C is a liver disease caused by the hepatitis C virus (HCV). In 2015, WHO reports that 71 million people were living with HCV, and 1.34 million died. In 2017, 13.1 million infected people knew their diagnosis and around 5 million patients were treated. HCV can cause acute and chronic hepatitis, where 20% of chronic hepatitis progresses to final-stage chronic liver cancer. Currently, no vaccine of HCV exists, and no effective treatments are available for demolishing the progression of hepatitis C. So spotting the stages of the disease is essential for diagnostic and therapeutic management of infected patients. This paper attempts to detect stages of hepatitis C virus so that further diagnosis and medication of hepatitis patients can be prescribed. It uses a supervised artificial neural network to make a prediction. Evaluation of results is done by cross-validation using the holdout method. Hepatitis C Egyptian-patients' dataset from UCI Machine Learning Repository is used for feeding the algorithms. The research succeeds to detect the hepatitis C stages and achieves an accuracy of 97%.
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