Title of article :
CKD-PML: Toward an effective model for Improving diagnosis of Chronic Kidney Disease
Author/Authors :
Asgarnezhad, Razieh Department of Computer Engineering - Isfahan (Khorasgan) Branch - Islamic Azad University, Isfahan, Iran , Alhameedawi, Karrar Ali Mohsin Department of Computer Engineering - Isfahan (Khorasgan) Branch - Islamic Azad University, Isfahan, Iran
Abstract :
Chronic Kidney Disease is one of the most common metabolic diseases. The challenge in this area is a pre-processing
problem. Artificial Intelligence techniques have been implemented over medical disease diagnoses successfully.
Classification systems aim clinicians to predict the risk factors that cause Chronic Kidney Disease. To address this challenge,
we introduce an effective model to investigate the role of pre-processing and machine learning techniques for classification
problems in the diagnosis of Chronic Kidney Disease. The model has four stages including, Pre-processing, Feature
Selection, Classification, and Performance. Missing values and outliers are two problems that are addressed in the preprocessing
stage. Many classifiers are used for classification. Two tools are conducted to reveal model performance for the
diagnosis of Chronic Kidney Disease. The results confirmed the superiority of the proposed model over its counterparts.
Farsi abstract :
فاقد چكيده فارسي
Keywords :
Pre-processing , Chronic Kidney Disease , Classification , Machine Learning Techniques
Journal title :
Journal of Computer and Robotics