2023
DOI: 10.18280/ria.370226
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Prediction of Chronic Kidney Disease with Machine Learning Models and Feature Analysis Using SHAP

Yalamanchili Surekha,
Koteswara Rao Kodepogu,
Gaddala Lalitha Kumari
et al.

Abstract: The world is significantly impacted by chronic kidney disease (CKD), both in terms of the health and financial costs. CKD is becoming a bigger issue globally, especially in low-and middle-income nations. According to the Global Burden of Disease Survey, 697.5 million people worldwide suffered from chronic kidney disease (CKD) in 2019.Addressing the burden of CKD requires a comprehensive approach that includes prevention, earlydetection, and effective management of the condition. The main objective of this rese… Show more

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