Syafaah, Lailis and Zulfatman, Zulfatman and pakaya, ilham and Lestandy, Merinda (2021) Comparison of Machine Learning Classification Methods in Hepatitis C Virus. JOIN (Jurnal Online Informatika), 6 (1). pp. 73-78. ISSN 2527-9165
Syafaah Zulfatman Pakaya - Classification HCV KNN Machine learning Naïve Bayes Neural network Random forest.pdf
Download (442kB) | Preview
Similarity - Syafaah Zulfatman Pakaya - Classification HCV KNN Machine learning Naïve Bayes Neural network Random forest.pdf
Download (2MB) | Preview
Abstract
The hepatitis C virus (HCV) is considered a problem to the health of societies are the main. There are around 120-130 million or 3% of the world's total population infected with HCV. Without treatment, most major infectious acute evolve into chronic, followed by diseases liver, such as cirrhosis and cancer liver. The data parameters used in this study included albumin (ALB), bilirubin (BIL), choline esterase (CHE), -glutamyl-transferase (GGT), aspartate amino-transferase (AST), alanine amino-transferase (ALT), cholesterol (CHOL), creatinine (CREA), protein (PROT), and Alkaline phosphatase (ALP). This research proposes a methodology based on machine learning classification methods including k-nearest neighbors, naïve Bayes, neural network, and random forest. The aim of this study is to assess and evaluate the level of accuracy using the algorithm classification machine learning to detect the disease HCV. The result show that the accuracy of the method NN has a value of accuracy are high, namely at 95.12% compared to the method KNN, naïve Bayes and RF in a row amounted to 89.43%, 90.24%, and 94.31%.
Item Type: | Article |
---|---|
Keywords: | Hepatitis C, machine learning, classifications, naive bayes |
Subjects: | T Technology > TK Electrical engineering. Electronics Nuclear engineering |
Divisions: | Faculty of Engineering > Department of Electrical Engineering (20201) |
Depositing User: | faruq Amrul Faruq |
Date Deposited: | 06 Sep 2024 06:11 |
Last Modified: | 06 Sep 2024 06:37 |
URI: | https://eprints.umm.ac.id/id/eprint/10873 |