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From theory to practice: Evaluating AI in pharmacy
0
Zitationen
3
Autoren
2025
Jahr
Abstract
PURPOSE: By understanding the principles of AI model evaluation, pharmacists can effectively leverage this technology to enhance patient care and optimize pharmacy operations. SUMMARY: Artificial intelligence (AI) holds immense potential to revolutionize healthcare delivery, especially within pharmacy practice. As AI technologies become more prevalent, it is crucial for pharmacists to be equipped with the knowledge and skills to critically evaluate AI models and studies. This article provides a comprehensive guide for pharmacists, emphasizing the importance of assessing model definitions, data quality, study populations, and model training and validation processes. We discuss the evaluation of AI studies and common performance metrics. CONCLUSION: By adopting a holistic approach, pharmacists can make informed decisions on AI integration, ultimately enhancing patient care and operational efficiency. Equipping pharmacists with these skills ensures that AI technologies are effectively and responsibly implemented in clinical practice.
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