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Artificial Intelligence-Driven Nephrology: The Role of Large Language Models in Kidney Care
2
Zitationen
7
Autoren
2025
Jahr
Abstract
(i) Improving AI accuracy, increasing model transparency, and ensuring seamless integration into clinical settings maximize AI benefits in nephrology. (ii) Regulatory approvals and validation are essential to build trust among patients, physicians, and healthcare institutions. (iii) When integrated correctly into clinical workflows, AI can transform nephrology practice by providing efficient, data-driven insights, improving patient outcomes, and reducing administrative burdens. (iv) Ethical, responsible adoption with stringent oversight is crucial for successfully implementing AI in nephrology.
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