Abstract
In hospital settings, effective risk management is critical to ensuring patient safety, regulatory compliance, and operational effectiveness. Conventional approaches to risk assessment and mitigation frequently rely on manual procedures and retroactive analysis, which might not be sufficient to recognize and respond to new risks as they arise. This study examines how artificial intelligence (AI) technologies can improve risk management procedures in healthcare facilities, fortifying patient safety precautions and guidelines while improving the standard of care overall. Hospitals can proactively identify and mitigate risks, optimize resource allocation, and improve clinical outcomes by utilizing AI-driven predictive analytics, natural language processing, and machine learning algorithms. The different applications of AI in risk management are discussed in this paper, along with opportunities, problems, and suggestions for their effective use in hospital settings.
Reference196 articles.
1. Bhati D, Deogade MS, Kanyal D. Improving Patient Outcomes Through Effective Hospital Administration: A Comprehensive Review. Cureus 2023;15:e47731.
2. Hopkin P. Fundamentals of risk management: understanding, evaluating and implementing effective risk management. London: Kogan Page Publishers, 2018.
3. NEJM Catalyst. What Is Risk Management in Healthcare? 2018. Available from: https://catalyst.nejm.org/doi/abs/10.1056/CAT.18.0197
4. Sugeris. Advanced protocols in Phoenix 5.0 model. n.d. Available from: https://sigeris.net
5. Lee DH, Yoon SN. Application of artificial intelligence-based technologies in the healthcare industry: opportunities and challenges. Int J Environ Res Pub Health 2021;18:271.