Litcius/Paper detail

Risk Prediction Of Chronic Kidney Disease Using Machine Learning Algorithms

Shanila Yunus Yashfi, Md Ashikul Islam, Pritilata, Nazmus Sakib, Tanzila Islam, Mohammad Shahbaaz, Sadaf Salman Pantho

202073 citationsDOI

Abstract

CKD is a serious reason of demise and disability. It was the 27th focal reason in 1990 and became 18th focal reason in 2010. Near about 1 million people lose their life in 2013. In spite of that, people of developing countries are being affected by CKD. We analyzed the data of CKD patient and proposed a system from which it will be possible to predict the risk of CKD. We have used 455 patients' data. Online data set which is collected from UCI Machine Learning Repository and real time dataset which is collected from Khulna City Medical College are used here. We used Python as a high-level interpreted programming language for developing our system. We trained the data using 10-fold CV and applied Random forest and ANN. The accuracy achieved by Random forest algorithm is 97.12% and ANN is 94.5%. This system will help to predict early disclosure of chronic kidney diseases.

Topics & Concepts

Random forestPython (programming language)Kidney diseaseMachine learningComputer scienceDemiseAlgorithmArtificial intelligenceData setMedicineInternal medicineLawPolitical scienceOperating systemArtificial Intelligence in HealthcareMachine Learning in Healthcare