Abstract
The rapid advancement of machine learning (ML) technologies has significantly impacted various sectors, with healthcare standing out as a prominent area for transformation. Machine learning holds the potential to revolutionize healthcare, particularly in the areas of diagnosis, treatment plans, drug development, and personalized medicine. However, with the growing integration of ML into healthcare systems, ethical concerns regarding data privacy, security, and fairness have emerged, requiring comprehensive governance frameworks to ensure the responsible use of these technologies. This research investigates the ethical considerations associated with the application of machine learning in healthcare, focusing on data governance practices that are crucial for ensuring ethical decision-making and protecting patient rights. The study explores the role of data governance in safeguarding the ethical use of ML algorithms, emphasizing the need for transparency, accountability, and fairness. It critically examines existing frameworks, regulations, and best practices that guide the ethical application of ML in healthcare, highlighting the challenges and opportunities in data management, patient consent, algorithmic bias, and discrimination. Furthermore, the research investigates the role of healthcare organizations, policymakers, and regulatory bodies in fostering an environment where ML can be used responsibly while minimizing ethical risks. By synthesizing existing literature, interviewing healthcare professionals, and analyzing real-world examples, this study offers a comprehensive perspective on the current state of healthcare data governance and provides actionable recommendations for addressing the ethical challenges that arise with ML adoption. The findings indicate that while there is significant progress in developing ethical guidelines for ML in healthcare, gaps remain in policy implementation and the uniformity of governance practices. The research suggests the need for continuous collaboration among technologists, healthcare providers, and policymakers to create robust data governance frameworks that align with evolving technologies. Additionally, the study emphasizes the importance of patient-centric approaches, ensuring that ethical principles like autonomy, privacy, and non-discrimination are prioritized in every aspect of ML application. This research contributes to the broader understanding of how healthcare systems can integrate ML technologies in an ethical and accountable manner. It provides valuable insights for healthcare providers, regulatory authorities, and researchers working to ensure that the potential benefits of ML are realized without compromising patient trust or safety. By addressing the ethical challenges of ML in healthcare, this study aims to pave the way for the responsible and equitable use of technology in improving patient outcomes and advancing medical innovation.
Library of Congress Subject Headings
Medical care--Data processing--Automation--Moral and ethical aspects; Machine learning--Moral and ethical aspects; Data protection
Publication Date
Fall 2024
Document Type
Thesis
Student Type
Graduate
Degree Name
Professional Studies (MS)
Department, Program, or Center
Graduate Programs & Research
Advisor
Sanjay Modak
Advisor/Committee Member
Ehsan Warriach
Recommended Citation
Ebadi, Roya, "Data Ownership and Control: Ethical Perspectives in the Digital Age" (2024). Thesis. Rochester Institute of Technology. Accessed from
https://repository.rit.edu/theses/12010
Campus
RIT Dubai
Plan Codes
PROFST-MS