Abstract

Kidney disease is a major public health concern that has only recently emerged. Toxins are removed from the body by the kidneys through urine. In the early stages of the condition, the patient has no problems, but recovery is difficult in the later stages. Doctors must be able to recognize this condition early in order to save the lives of their patients. To detect this illness early on, researchers have used a variety of methods. Prediction analysis based on machine learning has been shown to be more accurate than other methodologies. This research can help us to better understand global disparities in kidney disease, as well as what we can do to address them and coordinate our efforts to achieve global kidney health equity. This study provides an excellent feature-based prediction model for detecting kidney disease. Various machine learning algorithms, including k-nearest neighbors algorithm (KNN), artificial neural networks (ANN), support vector machines (SVM), naive bayes (NB), and others, as well as Re-cursive Feature Elimination (RFE) and Chi-Square test feature-selection techniques, were used to build and analyze various prediction models on a publicly available dataset of healthy and kidney disease patients. The studies found that a logistic regression-based prediction model with optimal features chosen using the Chi-Square technique had the highest accuracy of 98.75 percent. White Blood Cell Count (Wbcc), Blood Glucose Random (bgr), Blood Urea (Bu), Serum Creatinine (Sc), Packed Cell Volume (Pcv), Albumin (Al), Hemoglobin (Hemo), Age, Sugar (Su), Hypertension (Htn), Diabetes Mellitus (Dm), and Blood Pressure (Bp) are examples of these traits.

Highlights

  • IntroductionKidney disease is a condition that affects people all over the world, but the disease’s prevalence, identification, and treatment are all very different

  • Kidney disease affects over 750 million people worldwide, a figure that is growing

  • The total number of records properly categorized to the total number of records in a class is known as the recall ratio (FN)

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Summary

Introduction

Kidney disease is a condition that affects people all over the world, but the disease’s prevalence, identification, and treatment are all very different. Chronic kidney failure is characterized by a progressive decline in kidney function over time (usually years). As a result of a chronic renal condition, kidney failure does not occur overnight. Patients who have been exposed for an extended period of time to lead-based medications and poisons are at risk of developing this disease. According to the World Health Organization, only 11% of the world’s population receive adequate treatment for renal failure. Because they cannot afford dialysis or a kidney transplant, low-income patients die of renal failure. Taking preventative measures before things get out of hand is a viable option

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