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Generative-AI-Generated Challenges for Health Data Research
17
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1
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2023
Jahr
Abstract
Click to increase image sizeClick to decrease image sizeThis article refers to:What Should ChatGPT Mean for Bioethics?Is Academic Enhancement Possible by Means of Generative AI-Based Digital Twins?Ethics Education for Healthcare Professionals in the Era of ChatGPT and Other Large Language Models: Do We Still Need It?"Large Language Models" Do Much More than Just Language: Some Bioethical Implications of Multi-Modal AIThe Epistemological Danger of Large Language ModelsAUTOGEN: A Personalized Large Language Model for Academic Enhancement—Ethics and Proof of PrincipleUnreliable LLM Bioethics Assistants: Ethical and Pedagogical RisksGenerative AI, Specific Moral Values: A Closer Look at ChatGPT's New Ethical Implications for Medical AIThe Hidden Costs of ChatGPT: A Call for Greater Transparency DISCLOSURE STATEMENTNo potential conflict of interest was reported by the author(s).Additional informationFundingThis work was supported by the National Human Genome Research Institute (K01HG01049), the National Center for Advancing Translational Sciences (R01TR004244, UM1TR004404), and the Center for Bioethics & Social Sciences in Medicine at the University of Michigan Medical School.
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