Abstract

In this paper, a hybrid intelligent system that consists of the sparse matrix approach incorporated in neural network learning model as a decision support tool for medical data classification is presented. The main objective of this research is to develop an effective intelligent system that can be used by medical practitioners to accelerate diagnosis and treatment processes. The sparse matrix approach incorporated in neural network learning algorithm for scalability, minimize higher memory storage capacity usage, enhancing implementation time and speed up the analysis of the medical data classification problem. The hybrid intelligent system aims to exploit the advantages of the constituent models and, at the same time, alleviate their limitations. The proposed intelligent classification system maximizes the intelligently classification of medical data and minimizes the number of trends inaccurately identified. To evaluate the effectiveness of the hybrid intelligent system, three benchmark medical data sets, viz., Hepatitis, SPECT Heart and Cleveland Heart from the UCI Repository of Machine Learning, are used for evaluation. A number of useful performance metrics in medical applications which include accuracy, sensitivity, specificity. The results were analyzed and compared with those from other methods published in the literature. The experimental outcomes positively demonstrate that the hybrid intelligent system was effective in undertaking medical data classification tasks.

Highlights

  • Many factors have led to unhealthy behaviours, inappropriate diets and a lack of physical activity in the developed countries, which has intensified the development of chronic diseases known as non-communicable diseases (NCDs)

  • The results obtained with three data sets for reliability purposes were compared in terms of accuracy, sensitivity, specificity and execution time based on the machine learning mechanism

  • The accuracy, sensitivity and specificity of the proposed classifier for Hepatitis datasets were obtained as 95.18 %, 95.04% and 97.00%, respectively

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Summary

Introduction

Many factors have led to unhealthy behaviours, inappropriate diets and a lack of physical activity in the developed countries, which has intensified the development of chronic diseases known as non-communicable diseases (NCDs) These NCDs are the main contributors to the health burden causes of disability and death in low- and middle-income (LMICs) countries and disaster-prone areas accounting for 63% of all annual deaths globally(Prakash, 2017). It is responsible for about 80% of all deaths that occur in low and middleincome countries. It has been predicted that, by the year 2030, 40.5% of individuals in the United States will have CVDs, leading to approximately $818 billion for medical costs and $276 billion in indirect costs (due to lost productivity) (Tseng et al, 2019)

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