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Ethical Challenges and Guidelines for AI Deployment in Healthcare
1
Zitationen
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Autoren
2024
Jahr
Abstract
Artificial intelligence (AI) technologies have the potential to completely change healthcare by making diagnoses more accurate, planning treatments better, and patient results better. But using AI in healthcare brings up big social issues that need to be dealt with to protect patients’ safety, privacy, and liberty. This part talks about the ethical problems and rules for using AI in urology and gastroenterology. It focuses on important rules and methods for using AI in an ethical way. The first part of the chapter talks about basic moral concepts that should lead the creation and use of AI technologies in healthcare. These include beneficence, non-maleficence, liberty, and justice. The article then talks about specific problems that come up when AI is used in urology and gastroenterology. These problems include worries about data security, the fairness and bias of AI algorithms, and how to use AI in clinical practice. There are ethical guidelines for using AI in urology and gastroenterology. These include suggestions for managing and governing data, getting patients’ permission and protecting their privacy, finding ways to make AI programs less biased, and testing and validating AI technologies in the real world. There are also case studies that show how AI can be used in urology to find prostate cancer early and in gastroenterology to figure out what is wrong with the digestive system. At the end of the chapter, suggestions are made for what should happen next. These include making progress in AI ethics and regulation, getting parties to work together for ethical AI adoption, and keeping an eye on and judging AI technologies all the time. By following ethical rules and principles, healthcare professionals can get the most out of AI technologies while reducing the risks. This will improve patient care in urology and gastroenterology in the long run.
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