Analisis Pola Penyakit Hipertensi Menggunakan Algoritma C4.5
Dublin Core
Title
Analisis Pola Penyakit Hipertensi Menggunakan Algoritma C4.5
Subject
Data mining, algoritm C4.5,hypertension
Description
There are approximately 95% of cases of unknown cause of hypertension, while the rest
caused by other diseases such as coronary heart disease, impaired kidney function, and
impaired cognitive function or stroke. RSUD Embung Fatimah is an Indonesian hospital
located in Batam Island Riau Province. In 2015, the total number of inpatients for
hospitalization reaches 10,317 inhabitants. With the large number of patients per year it
causes patient data is increasing. To overcome the problem in tackling people with
hypertension disease, it is necessary to analyze the existing disease data, to predict the
patient's illness which must be handled based on the pattern of the disease. In data mining
there is a model that can be used to predict a pattern in a condition that is predictive or
prediction model. One of the algorithms that can be used to create a decision tree (decission
tree) is the C4.5 algorithm. The C4.5 algorithm is a method used for predictive classification.
Using C4.5 algorithm method, the researcher can classify the pattern of hypertension as a
comorbid illness of heart failure, kidney failure, diabetes, stroke and hypoglycemia. In this
study, researchers used WEKA (Waikato Environment for Knowledge Analysis) software as
tools or tools used to perform testing in order to obtain the pattern of disease from
hypertension. From the research findings in the find that in the prediction of hypertension
disease as a disease, the attributes that are very influential to hypertension are heart failure
caused by other diseases such as coronary heart disease, impaired kidney function, and
impaired cognitive function or stroke. RSUD Embung Fatimah is an Indonesian hospital
located in Batam Island Riau Province. In 2015, the total number of inpatients for
hospitalization reaches 10,317 inhabitants. With the large number of patients per year it
causes patient data is increasing. To overcome the problem in tackling people with
hypertension disease, it is necessary to analyze the existing disease data, to predict the
patient's illness which must be handled based on the pattern of the disease. In data mining
there is a model that can be used to predict a pattern in a condition that is predictive or
prediction model. One of the algorithms that can be used to create a decision tree (decission
tree) is the C4.5 algorithm. The C4.5 algorithm is a method used for predictive classification.
Using C4.5 algorithm method, the researcher can classify the pattern of hypertension as a
comorbid illness of heart failure, kidney failure, diabetes, stroke and hypoglycemia. In this
study, researchers used WEKA (Waikato Environment for Knowledge Analysis) software as
tools or tools used to perform testing in order to obtain the pattern of disease from
hypertension. From the research findings in the find that in the prediction of hypertension
disease as a disease, the attributes that are very influential to hypertension are heart failure
Creator
Nurul Azwanti, Erlin Elisa
Publisher
Perpustakaan Horizon Karawang
Date
2019
Contributor
Fajar Bagus W
Format
PDF
Language
Indonesia
Type
Text
Files
Collection
Citation
Nurul Azwanti, Erlin Elisa, “Analisis Pola Penyakit Hipertensi Menggunakan Algoritma C4.5,” Repository Horizon University Indonesia, accessed November 22, 2024, https://repository.horizon.ac.id/items/show/3172.