Research Article

Implementing Explainable AI for Early Detection of Chronic Kidney Disease: Strategic Insights for Health Information Systems Management

Authors

Abstract

Early detection of Chronic Kidney Disease plays an essential role in achieving better medical results together with minimizing extended healthcare expenditures. Multiple factors regarding the complexity and opacity of artificial intelligence (AI) models prevent their use for clinical decision-making. This article analyzes Explainable AI (XAI) implementations for CKD early detection while discussing the essential role of Health Information Systems (HIS) management. The integration of interpretable machine learning models into current HIS systems allows healthcare providers to provide clearer diagnostics along with maintaining trust among healthcare staff and meeting existing regulatory standards. The research provides an implementation guide that links XAI technology frameworks to data protection systems and frontline training initiatives and clinical practice sequences for senior healthcare professionals who need ethical and effective artificial intelligence solutions. Healthcare system accountability and data-based operations combine to create a system that benefits both medical professionals and their patients in managing CKD.

Article information

Journal

Journal of Computer Science and Technology Studies

Volume (Issue)

7 (5)

Pages

140-153

Published

2025-05-29

How to Cite

Hossain, K. M. S. ., Zannat Kabir , J. U. ., Shakil, F. I. ., Kabir Joy, M. I. ., & Nabil, A. R. (2025). Implementing Explainable AI for Early Detection of Chronic Kidney Disease: Strategic Insights for Health Information Systems Management. Journal of Computer Science and Technology Studies, 7(5), 140-153. https://doi.org/10.32996/jcsts.2025.7.5.19

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Keywords:

Explainable Artificial Intelligence (XAI), Chronic Kidney Disease (CKD), Early Disease Detection, Health Information Systems (HIS), Clinical Decision Support, Interpretable Machine Learning, Medical AI Transparency