Affiliation:
1. Sangam University, India
Abstract
A growing number of people throughout the world are suffering from chronic kidney disease (CKD), which is a major public health issue. Detection and prediction of CKD are crucial for healthcare providers to intervene timely and effectively in the fight against the disease. A number of medical fields have seen encouraging results from combining AI technologies with fuzzy logic and expert systems in recent years. The purpose of this study is to develop a CKD prediction model using an expert system that combines AI and fuzzy logic. By combining nephrologists' extensive knowledge with fuzzy logic and AI algorithms, the suggested expert system can improve prediction accuracy. A number of clinical and laboratory variables are integrated into the system. These include age, blood pressure, serum creatinine, and urine protein levels, among others. Fuzzy logic takes into account the inherent imprecision and ambiguity of medical data.
Reference13 articles.
1. Challenges and Opportunities in CKD Detection Technologies: A Review.;C.Brown;Nephrology Challenges,2018
2. Assessment of GFR by four methods in adults in Ashanti, Ghana: the need for an eGFR equation for lean African populations
3. Machine Learning for Early Detection of CKD: A Comprehensive Review.;L.Garcia;Journal of Nephrology Research,2019
4. Innovations in Biochemical Marker Analysis for Precision CKD Diagnosis.;S.Garcia;Journal of Biomolecular Diagnostics,2018
5. The risk of acute renal failure in patients with chronic kidney disease