Risk Level Prediction of Chronic Kidney Disease Using Neuro- Fuzzy and Hierarchical Clustering Algorithm (s)
Date
2017-01-02
Journal Title
Journal ISSN
Volume Title
Publisher
International Journal of Multimedia and Ubiquitous Engineering
Abstract
Chronic Kidney Disease (CKD) is usually characterized by a gradual loss of the
functioning which the kidney does over time due to various factors. Early prediction and
treatment save the kidney and halts the progress of CKD. CKD disease is being viewed as
global public health issue for the past decade. The greatest threat for this deadly disease
is developing countries where getting therapy is very expensive. The importance of
predicting individuals who are at risk of CKD as well as applying clustering techniques
cannot be underestimated since these can modify the progression of the disease.
Identifying the silent killer disease early offers best opportunities for implementing
possible strategies for lessening the probability of kidney loss. Neuro-fuzzy algorithm is
applied to determine the risk of CKD in patients. Predictions done using neuro-fuzzy gave
an accuracy of 97 percent. Using selected features, prediction for CKD disease is done so
as to identify the risk. The results of the prediction are clustered to identify the percentage
of patients with a high risk of having kidney disease who have a higher probability of
being diabetic. Using hierarchical clustering three clusters formed show that there is a
strong relationship between chronic kidney and diabetes
Description
Risk Level Prediction of Chronic Kidney Disease Using NeuroFuzzy and Hierarchical Clustering Algorithm (s)
Keywords
Nuero-fuzzy, CKD, Diabetes, Clustering, ANFIS, Random Forest
Citation
Chimwayi, Kerina & Haris, Noorie & Caytiles, Ronnie & Iyenger, N Ch Sriman Narayana. (2017). Risk Level Prediction of Chronic Kidney Disease Using Neuro- Fuzzy and Hierarchical Clustering Algorithm (s). International Journal of Multimedia and Ubiquitous Engineering. 12. 23-36. 10.14257/ijmue.2017.12.8.03.