诊断范围:人工智能看不到大脑不知道的东西。

IF 2.2 Q2 MEDICINE, GENERAL & INTERNAL Diagnosis Pub Date : 2024-12-04 DOI:10.1515/dx-2024-0151
Gary E Weissman, Laura Zwaan, Sigall K Bell
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引用次数: 0

摘要

背景:诊断范围是在临床环境中发现的诊断范围。尽管诊断范围是训练和评估人工智能(AI)系统以促进卓越诊断的基本特征,但其对人工智能系统和诊断过程的影响仍未得到充分探索。内容:我们定义了诊断范围的概念,讨论了其在构建安全有效的基于人工智能的诊断决策支持系统中的微妙作用,回顾了当前测量和使用的挑战,并强调了未来研究的知识差距。摘要:诊断范围平行于鉴别诊断,尽管后者是在一个遇到的水平和前者是在一个临床设置的水平。因此,诊断范围将因地理、人口和资源等当地特征而异。在每种情况下,真实的、观察到的和考虑到的范围也可能不同,这既给临床医生、患者和人工智能开发人员带来了挑战,也凸显了提高安全性的机会。需要进一步的工作来系统地定义和测量诊断范围,以准确、公平和有意义的方式在床边。针对特定环境(如初级保健诊所或重症监护病房)量身定制的人工智能工具将需要指定和测量适当的诊断范围。展望:如果人工智能工具与患者和临床医生的需求保持一致,并在准确测量的诊断范围上进行培训,它们将促进卓越的诊断。在每个临床环境中,对诊断范围的仔细理解和严格评估将通过诊断过程中的人类-人工智能合作促进最佳护理。
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Diagnostic scope: the AI can't see what the mind doesn't know.

Background: Diagnostic scope is the range of diagnoses found in a clinical setting. Although the diagnostic scope is an essential feature of training and evaluating artificial intelligence (AI) systems to promote diagnostic excellence, its impact on AI systems and the diagnostic process remains under-explored.

Content: We define the concept of diagnostic scope, discuss its nuanced role in building safe and effective AI-based diagnostic decision support systems, review current challenges to measurement and use, and highlight knowledge gaps for future research.

Summary: The diagnostic scope parallels the differential diagnosis although the latter is at the level of an encounter and the former is at the level of a clinical setting. Therefore, diagnostic scope will vary by local characteristics including geography, population, and resources. The true, observed, and considered scope in each setting may also diverge, both posing challenges for clinicians, patients, and AI developers, while also highlighting opportunities to improve safety. Further work is needed to systematically define and measure diagnostic scope in terms that are accurate, equitable, and meaningful at the bedside. AI tools tailored to a particular setting, such as a primary care clinic or intensive care unit, will each require specifying and measuring the appropriate diagnostic scope.

Outlook: AI tools will promote diagnostic excellence if they are aligned with patient and clinician needs and trained on an accurately measured diagnostic scope. A careful understanding and rigorous evaluation of the diagnostic scope in each clinical setting will promote optimal care through human-AI collaborations in the diagnostic process.

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来源期刊
Diagnosis
Diagnosis MEDICINE, GENERAL & INTERNAL-
CiteScore
7.20
自引率
5.70%
发文量
41
期刊介绍: Diagnosis focuses on how diagnosis can be advanced, how it is taught, and how and why it can fail, leading to diagnostic errors. The journal welcomes both fundamental and applied works, improvement initiatives, opinions, and debates to encourage new thinking on improving this critical aspect of healthcare quality.  Topics: -Factors that promote diagnostic quality and safety -Clinical reasoning -Diagnostic errors in medicine -The factors that contribute to diagnostic error: human factors, cognitive issues, and system-related breakdowns -Improving the value of diagnosis – eliminating waste and unnecessary testing -How culture and removing blame promote awareness of diagnostic errors -Training and education related to clinical reasoning and diagnostic skills -Advances in laboratory testing and imaging that improve diagnostic capability -Local, national and international initiatives to reduce diagnostic error
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