Diabetes Correlated Renal Fault Prediction through Deep Learning

INTRODUCTION: Diabetic nephropathy is one of the complications of diabetes that causes damage to kidneys. Deep learning techniques are widely used to predict different diseases. OBJECTIVES: The main aim of this work is to develop an effective prediction model using deep...

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Main Authors: Shiva Reddy, Nilambar Sethi, R. Rajender
Format: Article
Language:English
Published: European Alliance for Innovation (EAI) 2020-12-01
Series:EAI Endorsed Transactions on Pervasive Health and Technology
Subjects:
Online Access:https://eudl.eu/pdf/10.4108/eai.11-11-2020.166958
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spelling doaj-36e219c1040344529590af701e1a9acc2021-01-29T08:41:27ZengEuropean Alliance for Innovation (EAI)EAI Endorsed Transactions on Pervasive Health and Technology2411-71452020-12-0162410.4108/eai.11-11-2020.166958Diabetes Correlated Renal Fault Prediction through Deep LearningShiva Reddy0Nilambar Sethi1R. Rajender2Research Scholar, Department of Computer Science and Engineering, BPUT, Rourkela, Odisha, IndiaDepartment of Computer Science and Engineering, GIET, Gunupur, Odisha, IndiaDepartment of Computer Science and Engineering, LENDI Engineering College, Vizianagaram, A.P, IndiaINTRODUCTION: Diabetic nephropathy is one of the complications of diabetes that causes damage to kidneys. Deep learning techniques are widely used to predict different diseases. OBJECTIVES: The main aim of this work is to develop an effective prediction model using deep learning. To get an effective model, a suitable dataset is considered that comprises of features related to diabetic nephropathy. METHODS: Deep belief network (DBN) is the proposed deep learning technique which is compared with naive bayes, CART decision tree, logistic regression and support vector machine. DBN is composed of Restricted Boltzmann Machines (RBM). The algorithms are analysed based on evaluation measures like area under PR curve, area under ROC curve, gini coefficient and jaccard index.RESULTS: After comparison of all algorithms, it was observed that DBN has performed better in terms of AUROC, gini coefficient and jaccard index with values 0.8203, 0.6406 and 0.7777 respectively. But CART obtained better value of 0.9039 only for AUPR. CONCLUSION: The proposed technique has outperformed other techniques in terms of three metrics and is identified as the best performing algorithm. Hence, it is suggested to use DBN while predicting diabetic nephropathy.https://eudl.eu/pdf/10.4108/eai.11-11-2020.166958diabetic nephropathy deep learning technique naive bayes (nb),cart logistic regression support vector machine (svm) deep belief network(dbn) machine learning(ml) area under pr curve(aupr) area under roc curve (auroc) gini coefficient and jaccard index
collection DOAJ
language English
format Article
sources DOAJ
author Shiva Reddy
Nilambar Sethi
R. Rajender
spellingShingle Shiva Reddy
Nilambar Sethi
R. Rajender
Diabetes Correlated Renal Fault Prediction through Deep Learning
EAI Endorsed Transactions on Pervasive Health and Technology
diabetic nephropathy
deep learning technique
naive bayes (nb),cart
logistic regression
support vector machine (svm)
deep belief network(dbn)
machine learning(ml)
area under pr curve(aupr)
area under roc curve (auroc)
gini coefficient and jaccard index
author_facet Shiva Reddy
Nilambar Sethi
R. Rajender
author_sort Shiva Reddy
title Diabetes Correlated Renal Fault Prediction through Deep Learning
title_short Diabetes Correlated Renal Fault Prediction through Deep Learning
title_full Diabetes Correlated Renal Fault Prediction through Deep Learning
title_fullStr Diabetes Correlated Renal Fault Prediction through Deep Learning
title_full_unstemmed Diabetes Correlated Renal Fault Prediction through Deep Learning
title_sort diabetes correlated renal fault prediction through deep learning
publisher European Alliance for Innovation (EAI)
series EAI Endorsed Transactions on Pervasive Health and Technology
issn 2411-7145
publishDate 2020-12-01
description INTRODUCTION: Diabetic nephropathy is one of the complications of diabetes that causes damage to kidneys. Deep learning techniques are widely used to predict different diseases. OBJECTIVES: The main aim of this work is to develop an effective prediction model using deep learning. To get an effective model, a suitable dataset is considered that comprises of features related to diabetic nephropathy. METHODS: Deep belief network (DBN) is the proposed deep learning technique which is compared with naive bayes, CART decision tree, logistic regression and support vector machine. DBN is composed of Restricted Boltzmann Machines (RBM). The algorithms are analysed based on evaluation measures like area under PR curve, area under ROC curve, gini coefficient and jaccard index.RESULTS: After comparison of all algorithms, it was observed that DBN has performed better in terms of AUROC, gini coefficient and jaccard index with values 0.8203, 0.6406 and 0.7777 respectively. But CART obtained better value of 0.9039 only for AUPR. CONCLUSION: The proposed technique has outperformed other techniques in terms of three metrics and is identified as the best performing algorithm. Hence, it is suggested to use DBN while predicting diabetic nephropathy.
topic diabetic nephropathy
deep learning technique
naive bayes (nb),cart
logistic regression
support vector machine (svm)
deep belief network(dbn)
machine learning(ml)
area under pr curve(aupr)
area under roc curve (auroc)
gini coefficient and jaccard index
url https://eudl.eu/pdf/10.4108/eai.11-11-2020.166958
work_keys_str_mv AT shivareddy diabetescorrelatedrenalfaultpredictionthroughdeeplearning
AT nilambarsethi diabetescorrelatedrenalfaultpredictionthroughdeeplearning
AT rrajender diabetescorrelatedrenalfaultpredictionthroughdeeplearning
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