HEALTH POLICY AND CONFLICT RESOLUTION IN HEALTHCARE
DOI:
https://doi.org/10.65035/ndn60h04Keywords:
diagnostic accuracy, operational metrics, AI-driven analyticsAbstract
This article examines the limitations of current quality evaluation systems in radiology, which often focus on operational metrics rather than patient outcomes. It highlights the need for a comprehensive approach that incorporates diagnostic accuracy, clinical impact, and patient-centered perspectives. The article advocates for value-based healthcare models that better recognize radiology's role in improving patient care. It suggests integrating outcome-based indicators and using AI-driven analytics to enhance real-time feedback and quality improvement in radiology departments, aligning with the broader trend toward value-based care focused on accurate diagnoses and improved patient outcomes.
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Copyright (c) 2026 Saba Ashraf, Syed Asadullah Arslan (Author)

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All articles published in the Journal of Medical & Health Sciences Review (JMHSR) remain the copyright of their respective authors. JMHSR publishes its content under the Creative Commons Attribution‑NonCommercial 4.0 International License (CC BY‑NC 4.0), which allows readers to freely share, copy, adapt, and build upon the work for non‑commercial purposes, provided proper credit is given to both the authors and the journal.



