Abstract

Diabetes is one of the foremost causes for the increase in mortality among children and adults in recent years. Classification systems are being used by doctors to analyse and diagnose the medical data. Radial basis function neural networks are more attractive for classification of diseases, especially in diabetes classification, because of it’s non iterative nature. Radial basis function neural networks are four layer feed forward neural network with input layer, pattern layer, summation layer and the decision layer respectively. The size of the pattern layer increases on par with training data set size. Though various attempts have made to solve this issue by clustering input data using different clustering algorithms like k-means, k-medoids, and SOFM etc. However main difficulty of determining the optimal number of neurons in the pattern layer remain unsolved. In this paper, we present a new model based on cluster validity index with radial basis neural network for classification of diabetic patients data. We employ cluster validity index in class by class fashion for determining the optimal number of neurons in pattern layer. A new convex fitness function has also been designed for bat inspired optimization algorithm to identify the weights between summation layer and pattern layer. The proposed model for radial basis function neural network is tested on Pima Indians Diabetes data set and synthetic data sets. Experimental results proved that our approach performs better in terms of accuracy, sensitivity, specificity, classification time, training time, network complexity and computational time compared to conventional radial basis function neural network. It is also proved that proposed model performs better compared to familiar classifiers namely probabilistic neural network, feed forward neural network, cascade forward network, time delay network, artificial immuine system and GINI classifier.

Highlights

  • Diabetes is a metabolic and hereditary disease that causes due to deficiency of insulin hormone in human body

  • We have used measures like classification accuracy, sensitivity, specificity, complexity, computational time, training time and classification time to evaluate the performance of the proposed model

  • The obtained optimal number of clusters for each class is enclosed in Table 13 using parentheses besides computational time values. These results proved once again that, even with larger data sets, proposed model achieves significant reduction in computational time compared to direct approach

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Summary

Introduction

Diabetes is a metabolic and hereditary disease that causes due to deficiency of insulin hormone in human body. Lack of sufficient insulin causes presence of excess sugar levels in the blood. Many people referred diabetes as Diabetes Mellitus (DM) It has symptoms like frequent urination, increased hunger, increase thirst and high blood sugar. Classification and decision support systems are extensively used by medical experts and doctors. These decision support systems extract meaningful information from given medical data. This will help doctors to improve their prognosis and diagnosis procedure to provide better planning for treatment. Purnami et al.[10] to improve the accuracy over smooth support vector machine for classifying Pima Indian diabetic patients data

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