Navigating the Ethical Labyrinth: Exploring Uncharted AI Pathways in Predictive Cardiovascular Diagnostics and Patient Autonomy

Authors

  • Dr. Syed Muhammad Anwar Author
  • Dr. Ayesha Khalid Author

Keywords:

AI in Healthcare, Cardiovascular Health Care, Predictive Modeling, Machine Learning, AI in Healthcare

Abstract

The integration of artificial intelligence (AI) in cardiovascular healthcare represents a significant advancement with the potential to revolutionize how cardiovascular diseases (CVD) are diagnosed and treated. AI technologies facilitate the analysis of extensive patient data, enabling early detection and more accurate risk stratification, ultimately improving patient outcomes. However, the deployment of these technologies raises critical ethical concerns that must be addressed to ensure patient autonomy and informed consent are preserved. This paper examines the dual aspects of AI in cardiovascular diagnostics, focusing on its predictive capabilities alongside the ethical implications associated with its use. By analyzing current literature and drawing on case studies, we illuminate the ethical labyrinth surrounding AI technologies, highlighting challenges such as data privacy, algorithmic bias, and the potential erosion of the patient-provider relationship. Furthermore, we propose strategies to enhance patient autonomy, emphasizing the need for transparent practices and the involvement of patients in decision-making processes. This research aims to foster a deeper understanding of how to responsibly integrate AI into cardiovascular healthcare, ensuring that technological advancements align with ethical principles and prioritize patient welfare.

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Published

2024-10-21

How to Cite

Navigating the Ethical Labyrinth: Exploring Uncharted AI Pathways in Predictive Cardiovascular Diagnostics and Patient Autonomy. (2024). AlgoVista: Journal of AI & Computer Science, 1(2). https://algovista.org/index.php/AVJCS/article/view/22

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