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AI integration in nephrology: evaluating ChatGPT for accurate ICD-10 documentation and coding
17
Zitationen
8
Autoren
2024
Jahr
Abstract
ChatGPT 4.0 can significantly improve ICD-10 coding accuracy in nephrology through case scenarios for pre-visit testing, potentially reducing healthcare professionals' workload. However, the small error percentage underscores the need for ongoing review and improvement of AI systems to ensure accurate reimbursement, optimal patient care, and reliable research data.
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