人工智能工具在减少医学不确定性方面的潜力及医学教育的方向》(The Potential of Artificial Intelligence Tools for Reducing Ununcertainty in Medicine and Directions for Medical Education)。

IF 3.2 Q1 EDUCATION, SCIENTIFIC DISCIPLINES
Sauliha Rabia Alli, Soaad Qahhār Hossain, Sunit Das, Ross Upshur
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引用次数: 0

摘要

无标签:在医学领域,不确定性是与生俱来的。医生每天都要在没有十足把握的情况下做出决定,无论是在了解病人的问题、进行体格检查、解释诊断检测结果还是提出治疗方案方面。造成这种不确定性的原因很多,包括对病人缺乏了解、医生个人能力有限以及客观诊断工具的预测能力有限。这种不确定性给提供合格的病人护理带来了重大问题。研究工作和教学试图减少不确定性,这已成为医学的固有特点。尽管如此,不确定性依然猖獗。人工智能(AI)工具正在迅速发展并融入实践,它可能会改变我们驾驭不确定性的方式。在最强大的形式下,人工智能工具可能有能力改善有关疾病、患者信仰、价值观和偏好的数据收集,从而为医患沟通留出更多时间。通过使用以前未曾考虑过的方法,这些工具有可能减少医学中的不确定性,例如由于缺乏临床信息以及提供者的技能和偏见而产生的不确定性。尽管存在这种可能性,但在医疗实践中使用人工智能工具却遇到了相当大的阻力。在这篇观点文章中,我们讨论了人工智能对医学不确定性的影响,并探讨了在医学院和住院医师培训项目中教授使用人工智能工具的实用方法,包括人工智能伦理、实际技能和技术能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Potential of Artificial Intelligence Tools for Reducing Uncertainty in Medicine and Directions for Medical Education.

Unlabelled: In the field of medicine, uncertainty is inherent. Physicians are asked to make decisions on a daily basis without complete certainty, whether it is in understanding the patient's problem, performing the physical examination, interpreting the findings of diagnostic tests, or proposing a management plan. The reasons for this uncertainty are widespread, including the lack of knowledge about the patient, individual physician limitations, and the limited predictive power of objective diagnostic tools. This uncertainty poses significant problems in providing competent patient care. Research efforts and teaching are attempts to reduce uncertainty that have now become inherent to medicine. Despite this, uncertainty is rampant. Artificial intelligence (AI) tools, which are being rapidly developed and integrated into practice, may change the way we navigate uncertainty. In their strongest forms, AI tools may have the ability to improve data collection on diseases, patient beliefs, values, and preferences, thereby allowing more time for physician-patient communication. By using methods not previously considered, these tools hold the potential to reduce the uncertainty in medicine, such as those arising due to the lack of clinical information and provider skill and bias. Despite this possibility, there has been considerable resistance to the implementation of AI tools in medical practice. In this viewpoint article, we discuss the impact of AI on medical uncertainty and discuss practical approaches to teaching the use of AI tools in medical schools and residency training programs, including AI ethics, real-world skills, and technological aptitude.

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来源期刊
JMIR Medical Education
JMIR Medical Education Social Sciences-Education
CiteScore
6.90
自引率
5.60%
发文量
54
审稿时长
8 weeks
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