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Harnessing the power of artificial intelligence in diagnostic systems
0
Zitationen
4
Autoren
2026
Jahr
Abstract
Artificial intelligence (AI) and machine learning are poised to reshape medical diagnostics, yet their path to integration is marked by both promise and complexity. This Perspective article synthesizes the current landscape, articulating AI’s value in enhancing diagnostic accuracy, efficiency, and access—from imaging and pathology to genomics and laboratory workflows. It then critically examines the barriers to reliable adoption, including data bias, ethical concerns, regulatory gaps, and risks of exacerbating health inequities. Moving beyond identification of challenges, we propose a structured implementation framework designed to guide responsible integration. This framework spans governance and fairness auditing, privacy-preserving deployment (e.g., via federated learning), continuous monitoring, and global capacity building. Central to this approach is the principle of human-AI collaboration, where AI augments clinical expertise within a transparent and equity-sensitive ecosystem. We argue that through coordinated stakeholder action, grounded in this actionable framework, AI can be steered toward a future of more precise, efficient, and equitable diagnostic systems worldwide.
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