Abstract

Chronic kidney disease (CKD) is one of the leading medical ailments in developing countries. Due to the limited healthcare infrastructure and the lack of trained human resources, the CKD problem aggravates if it is not addressed in its earlier stages. In this regard, the role of machine learning-based automated diagnosis systems plays a vital role to deal with the CKD problem. In most of the studies conducted on the automated CKD decision modeling, the main emphasis is given to enhancing the predictive accuracy of the system. In this study, we focus on the applicability challenges of automated decision systems taking CKD diagnosis as a case study within the purview of developing countries. In this regard, we propose a cost-sensitive ensemble feature ranking method that takes a more realistic approach to group-based feature selection. Two candidate solutions are proposed for group-based feature selection to meet different objectives. Subsequently, both the candidate solutions are combined into a consolidated solution. It is pertinent to note that it is one of the first studies in which cost-sensitive ensemble feature ranking for non-overlapping groups is successfully demonstrated to achieve the stated objectives i.e. low-cost and high-accuracy solution. Based on an extensive set of experiments, we demonstrate that a cost-effective and accurate solution for the CKD problem can be obtained. The experimentation includes 7 well-known classification algorithms and 8 comparative feature selection methods to show the efficacy of the proposed approach. It is concluded that the applicability of the automated CKD systems can be enhanced by including the cost consideration into the objective space of the solution formulation. Therefore, a trade-off solution can be obtained that is cost-effective and yet accurate enough to serve as a CKD screening system.

Highlights

  • Chronic kidney disease (CKD) is a healthcare problem with serious consequences that is characterized by a gradual loss of kidney function over time

  • The case study problem is based on a benchmark dataset that is used in several recent studies, and the respective cost factor is taken from a developing world perspective

  • Unlike some of the studies on cost-based feature selection where an overly simplified version of cost is considered i.e. interdependence of features are overlooked, we have modeled the problem as a non-overlapping groupbased feature selection

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Summary

Introduction

Chronic kidney disease (CKD) is a healthcare problem with serious consequences that is characterized by a gradual loss of kidney function over time. CKD is generally defined as abnormalities in the structure or function of the kidney or a decrease in Glomerular filtration rate (GFR) < 60 ml/min/1.73 m2 for 3 months [1]. The main function of the kidney is to filter out the excessive waste in the body along with balancing the body’s fluids [2]. In the advanced stages of kidney deterioration, bodily waste builds up that in turn impair the regulation of blood pressure, red blood cell creation, and the formation of bones, with life-threatening consequences. In case of severe kidney damage, the available options are in terms of renal replacement therapy or kidney transplant, where the latter is not a readily available treatment option, the former affects the overall quality of life while.

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