Medical Students Attitude Towards Artificial Intelligence: A Multicentre Survey

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To assess undergraduate healthcare students’ attitudes towards artificial intelligence (AI) in radiology and medicine. A total of 263 students (166 female, 94 male, median age 23 years) responded to the questionnaire. Radiology ought to take the lead in educating students about these emerging technologies. Respondents’ anonymity was ensured. A web-based questionnaire was made employing SurveyMonkey, and was sent out to students at 3 big health-related schools. It consisted of a variety of sections aiming to evaluate the students’ prior expertise of AI in radiology and beyond, as well as their attitude towards AI in radiology especially and in medicine in basic. Respondents agreed that AI could potentially detect pathologies in radiological examinations (83%) but felt that AI would not be in a position to establish a definite diagnosis (56%). The majority agreed that AI will revolutionise and strengthen radiology (77% and 86%), when disagreeing with statements that human radiologists will be replaced (83%). Over two-thirds agreed on the need to have for AI to be included in health-related education (71%). In sub-group analyses male and tech-savvy respondents had been additional confident on the rewards of AI and much less fearful of these technologies. Around 52% had been aware of the ongoing discussion about AI in radiology and 68% stated that they were unaware of the technologies involved. Contrary to anecdotes published in the media, undergraduate health-related students do not be concerned that AI will replace human radiologists, and are aware of the possible applications and implications of AI on radiology and medicine.

% AI involvement. In healthcare, there is terrific hope that AI could enable better illness surveillance, facilitate early detection, permit for improved diagnosis, uncover novel treatment options, and develop an era of really customized medicine. Consequently, there has been a substantial boost in AI study in medicine in current years. Physician time is increasingly restricted as the number of products to talk about per clinical take a look at has vastly outpaced the time allotted per check out,4 as properly as due to the increased time burden of documentation and inefficient technology.5 Provided the time limitations of a physician’s, as the time demands for rote tasks enhance, the time for physicians to apply definitely human skills decreases. We think, primarily based on a number of recent early-stage research, that AI can obviate repetitive tasks to clear the way for human-to-human bonding and the application of emotional intelligence and judgment in healthcare. There is also profound fear on the portion of some that it will overtake jobs and disrupt the physician-patient relationship, e.g., AI researchers predict that AI-powered technologies will outperform humans at surgery by 2053.3 The wealth of information now out there in the kind of clinical and pathological pictures, continuous biometric information, and online of points (IoT) devices are ideally suited to power the deep understanding laptop algorithms that lead to AI-generated evaluation and predictions. By embracing AI, we think that humans in healthcare can improve time spent on uniquely human abilities: constructing relationships, exercising empathy, and applying human judgment to guide and advise.

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