Home Technology Chapter 12 Challenges and ethical considerations
Chapter
Licensed
Unlicensed Requires Authentication

Chapter 12 Challenges and ethical considerations

  • Rishabha Malviya , Shristy Verma , Sonali Sundram and Harshil Shah
Become an author with De Gruyter Brill
Digital Blockchain
This chapter is in the book Digital Blockchain

Abstract

In the healthcare industry, artificial intelligence (AI) is crucial because it helps with disease diagnosis, treatment planning, and operational efficiency. However, there are issues with biases, data breaches, and ethical consequences. The chapter aims to provide some knowledge on the challenges faced by the researchers of AI in healthcare along with some ethical considerations. Collaboration between AI clinicians can succeed if appropriate governance frameworks are in place. An overview of the challenges and ethical quandaries surrounding AI in healthcare is given in the chapter. Explainable AI techniques address issues with bias and transparency. Data privacy, algorithmic transparency, and ethical issues are among the difficulties. Up skilling medical staff, addressing biases, and obtaining patient consent are all necessary before implementing AI in healthcare. Furthermore, healthcare professionals need to believe in AI for it to be adopted. Research suggests that AI holds promise for enhancing patient outcomes and healthcare delivery. More research is necessary to fully grasp how AI will affect healthcare professionals’ roles and responsibilities.

Abstract

In the healthcare industry, artificial intelligence (AI) is crucial because it helps with disease diagnosis, treatment planning, and operational efficiency. However, there are issues with biases, data breaches, and ethical consequences. The chapter aims to provide some knowledge on the challenges faced by the researchers of AI in healthcare along with some ethical considerations. Collaboration between AI clinicians can succeed if appropriate governance frameworks are in place. An overview of the challenges and ethical quandaries surrounding AI in healthcare is given in the chapter. Explainable AI techniques address issues with bias and transparency. Data privacy, algorithmic transparency, and ethical issues are among the difficulties. Up skilling medical staff, addressing biases, and obtaining patient consent are all necessary before implementing AI in healthcare. Furthermore, healthcare professionals need to believe in AI for it to be adopted. Research suggests that AI holds promise for enhancing patient outcomes and healthcare delivery. More research is necessary to fully grasp how AI will affect healthcare professionals’ roles and responsibilities.

Downloaded on 23.12.2025 from https://www.degruyterbrill.com/document/doi/10.1515/9783111574288-012/html?lang=en
Scroll to top button