Publication: Symptomatic Analysis Prediction of Kidney Related Diseases using Machine Learning
Type:
Article
Date
2021-12-09
Journal Title
Journal ISSN
Volume Title
Publisher
2021 3rd International Conference on Advancements in Computing (ICAC), SLIIT
Abstract
Sri Lanka has been witnessing an increase in kidney
disease issues for a while. Elderly kidney patients, kidney
transplant patients who passed the risk level after the surgery
are not treated in the emergency clinic. These patients are
handed over to their families to take care of them. In any case,
it is impossible to tackle a portion of the issues that emerge
regarding the patient at home. It is hoped to enter patient’s data
from home every day and to develop a system that can use that
entered data to predict whether a patient is in an essential
circumstance or not. Additionally, individuals in high-hazard
regions cannot know whether they are in danger of creating
kidney disappointments or not and individuals in danger of
creating kidney sickness because of Diabetes Mellitus. Thus, we
desire to emphasize the framework to improve answers for this
issue. The research focuses on developing a system that includes
early kidney disease prediction models involving machine
learning classification algorithms by considering the relevant
variables. In predictive analysis, six machine learning methods
are used: Support Vector Machine (SVM with kernels),
Random Forest (RF), Decision Tree, Logistic Regression, and
Multilayer Perceptron. These classification algorithms'
performance is evaluated using statistical measures such as
sensitivity (recall), precision, accuracy, and F-score. In
categorizing, accuracy determines which examples are accurate.
The experimental results reveal that Support Vector Machine
outperforms other classification algorithms in terms of
accuracy.
Description
Keywords
chronic kidney disease, diabetes mellitus, random forest, support vector machine
