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Decision Tree-Based Explainable AI for Diagnosis of Chronic Kidney Disease
12
Zitationen
3
Autoren
2023
Jahr
Abstract
Chronic Kidney Disease (CKD) is a high-risk health condition that is progressive and life-threatening. Early diagnosis of the same is highly recommended and there have been various means, but Explainable AI in CKD is to enhance transparency, trust, and clinical decision-making, The proposed system which is based on Decision Tree based Explainable AI(DT-EAI), aims at providing a confident solution for early diagnosis. It follows a Data-driven approach where the system uses the CKD Data set and preprocess and selects the features using the Gini Importance value, generates a model using the Decision Tree, Interprets the model using the SHAP value, Evaluates and validates using the Cross-Validation and this is iteratively carried out while getting the feedback form health professions on the results and interpretations. The model is refined and enhanced for accuracy and interpretability. The system is later deployed and used for early diagnosis. The performance of the proposed system is evaluated using the F1 score and Fidelity Accuracy Index(FAI).
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