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Tempering Expectations on the Medical AI Revolution: the medical trainee viewpoint
Zoe Hu;
Ricky Hu;
Olivia Yau;
Minnie Teng;
Patrick Wang;
Grace Hu;
Rohit Singla
ABSTRACT
Artificial intelligence (AI) has been poised to revolutionize the field of medicine for over thirty years. With the rapid growth in computing power and exponential growth of data, medical AI has transformed from an afterthought into an imminent possibility. These technological advancements have understandably raised concerns from healthcare trainees and professionals that AI may be taking over their duties. In this work, we discuss the multi-faceted issue of medical AI adoption specifically from the perspective of healthcare trainees and aims to temper preconceived notions regarding its impact and rapid progression.
Citation
Please cite as:
Hu Z, Hu R, Yau O, Teng M, Wang P, Hu G, Singla R
Tempering Expectations on the Medical Artificial Intelligence Revolution: The Medical Trainee Viewpoint