| Literature DB >> 35671077 |
Joel Grunhut1, Oge Marques2,3, Adam T M Wyatt4.
Abstract
Artificial intelligence (AI) is on course to become a mainstay in the patient's room, physician's office, and the surgical suite. Current advancements in health care technology might put future physicians in an insufficiently equipped position to deal with the advancements and challenges brought about by AI and machine learning solutions. Physicians will be tasked regularly with clinical decision-making with the assistance of AI-driven predictions. Present-day physicians are not trained to incorporate the suggestions of such predictions on a regular basis nor are they knowledgeable in an ethical approach to incorporating AI in their practice and evolving standards of care. Medical schools do not currently incorporate AI in their curriculum due to several factors, including the lack of faculty expertise, the lack of evidence to support the growing desire by students to learn about AI, or the lack of Liaison Committee on Medical Education's guidance on AI in medical education. Medical schools should incorporate AI in the curriculum as a longitudinal thread in current subjects. Current students should understand the breadth of AI tools, the framework of engineering and designing AI solutions to clinical issues, and the role of data in the development of AI innovations. Study cases in the curriculum should include an AI recommendation that may present critical decision-making challenges. Finally, the ethical implications of AI in medicine must be at the forefront of any comprehensive medical education. ©Joel Grunhut, Oge Marques, Adam T M Wyatt. Originally published in JMIR Medical Education (https://mededu.jmir.org), 07.06.2022.Entities:
Keywords: AI; artificial intelligence; medical education; medical student
Year: 2022 PMID: 35671077 PMCID: PMC9214616 DOI: 10.2196/35587
Source DB: PubMed Journal: JMIR Med Educ ISSN: 2369-3762
Multitiered solutions to include AIa in the medical education curriculum.
| Levels and target areas of improvement | Examples | |
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| AAMCb | Questionnaire, materials, and guidance |
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| LCMEc | Minimal requirements and expert panels |
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| Multi-institutional research | Longitudinal research on attitudes and quality improvements |
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| Faculty expansion | Bioethics, bioinformatics, and medical AI experience |
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| Basic knowledge lessons | Introductory courses, benefits and pitfalls of AI, and ethics of AI |
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| Case-based learning | Multispecialty implications in previous cases and biostatistical implications |
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| Journal clubs or reading groups | Specialty-specific journals, health care systems journals, and AI in health care journals |
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| Use of AI in clinical setting | Tumor board, radiology rotation, and point of care ultrasound |
aAI: artificial intelligence.
bAAMC: Association of American Medical Colleges.
cLCME: Liaison Committee on Medical Education.