医学、人工智能和不确定性:为什么统计思维是基础?

IF 2.1 Q3 PSYCHIATRY
Claudio Córdova, Otavio Nóbrega
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引用次数: 0

摘要

医学领域历来抵制不确定性,常常将新的科学证据整合到临床实践中,有时甚至推迟了近二十年。这种惰性反映了根深蒂固的文化和认识论障碍,这些障碍也阻碍了人工智能(AI)等创新的采用。然而,呼吁更严格的医学决策并不新鲜。18世纪,皮埃尔-西蒙·拉普拉斯(Pierre-Simon Laplace)强调了概率论在临床推理中的价值,后来威廉·奥斯勒(William Osler)也赞同这一观点,他将医学描述为“不确定性的科学和概率的艺术”。这些早期的见解通过奥斯汀·布拉德福德·希尔爵士和阿奇博尔德·科克伦爵士的工作获得了关注,他们的贡献为基于证据的实践(EBP)奠定了基础。在20世纪90年代,戈登·盖亚特(Gordon Guyatt)正式引入了循证医学(EBM),倡导以经验数据、专业知识和患者价值为基础的临床决策。在这个不断变化的环境中,基本的统计知识已经不够了。在这种情况下,培养概率推理和统计思维对于支持伦理健全和循证一致的决策以指导临床培训和实践中有意义的转变至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Medicine, artificial intelligence and uncertainty: Why is statistical thinking fundamental?

The medical field has historically resisted uncertainty, often delaying the integration of new scientific evidence into clinical practice-sometimes by nearly two decades. This inertia reflects deep-rooted cultural and epistemological barriers that also impede the adoption of innovations such as Artificial Intelligence (AI). Yet, the call for more rigorous decision-making in medicine is not new. In the 18th century, Pierre-Simon Laplace emphasized the value of probability theory in clinical reasoning, a view later echoed by William Osler, who famously described medicine as "the science of uncertainty and the art of probability." These early insights gained traction through the work of Sir Austin Bradford Hill and Archibald Cochrane, whose contributions laid the groundwork for Evidence-Based Practice (EBP). In the 1990s, Gordon Guyatt formally introduced Evidence-Based Medicine (EBM), advocating for clinical decisions grounded in empirical data, professional expertise, and patient values. In this evolving landscape, basic statistical literacy is no longer sufficient. In this context, cultivating probabilistic reasoning and statistical thinking has become essential to support ethically sound and evidence-aligned decisions to guide a meaningful transformation in both clinical training and practice.

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来源期刊
CiteScore
4.40
自引率
0.00%
发文量
32
审稿时长
13 weeks
期刊介绍: Information not localized
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