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Main Authors: Okonji, Onyekachukwu R., Yunusov, Kamol, Gordon, Bonnie
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2406.10632
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author Okonji, Onyekachukwu R.
Yunusov, Kamol
Gordon, Bonnie
author_facet Okonji, Onyekachukwu R.
Yunusov, Kamol
Gordon, Bonnie
contents Generative AI is rapidly transforming medical imaging and text analysis, offering immense potential for enhanced diagnosis and personalized care. However, this transformative technology raises crucial ethical, societal, and legal questions. This paper delves into these complexities, examining issues of accuracy, informed consent, data privacy, and algorithmic limitations in the context of generative AI's application to medical imaging and text. We explore the legal landscape surrounding liability and accountability, emphasizing the need for robust regulatory frameworks. Furthermore, we dissect the algorithmic challenges, including data biases, model limitations, and workflow integration. By critically analyzing these challenges and proposing responsible solutions, we aim to foster a roadmap for ethical and responsible implementation of generative AI in healthcare, ensuring its transformative potential serves humanity with utmost care and precision.
format Preprint
id arxiv_https___arxiv_org_abs_2406_10632
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Applications of Generative AI in Healthcare: algorithmic, ethical, legal and societal considerations
Okonji, Onyekachukwu R.
Yunusov, Kamol
Gordon, Bonnie
Computer Vision and Pattern Recognition
Artificial Intelligence
Generative AI is rapidly transforming medical imaging and text analysis, offering immense potential for enhanced diagnosis and personalized care. However, this transformative technology raises crucial ethical, societal, and legal questions. This paper delves into these complexities, examining issues of accuracy, informed consent, data privacy, and algorithmic limitations in the context of generative AI's application to medical imaging and text. We explore the legal landscape surrounding liability and accountability, emphasizing the need for robust regulatory frameworks. Furthermore, we dissect the algorithmic challenges, including data biases, model limitations, and workflow integration. By critically analyzing these challenges and proposing responsible solutions, we aim to foster a roadmap for ethical and responsible implementation of generative AI in healthcare, ensuring its transformative potential serves humanity with utmost care and precision.
title Applications of Generative AI in Healthcare: algorithmic, ethical, legal and societal considerations
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2406.10632