Leveraging artificial intelligence to reduce diagnostic errors in emergency medicine: Challenges, opportunities, and future directions.

IF 3.4 3区 医学 Q1 EMERGENCY MEDICINE
R Andrew Taylor, Rohit B Sangal, Moira E Smith, Adrian D Haimovich, Adam Rodman, Mark S Iscoe, Suresh K Pavuluri, Christian Rose, Alexander T Janke, Donald S Wright, Vimig Socrates, Arwen Declan
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Abstract

Diagnostic errors in health care pose significant risks to patient safety and are disturbingly common. In the emergency department (ED), the chaotic and high-pressure environment increases the likelihood of these errors, as emergency clinicians must make rapid decisions with limited information, often under cognitive overload. Artificial intelligence (AI) offers promising solutions to improve diagnostic errors in three key areas: information gathering, clinical decision support (CDS), and feedback through quality improvement. AI can streamline the information-gathering process by automating data retrieval, reducing cognitive load, and providing clinicians with essential patient details quickly. AI-driven CDS systems enhance diagnostic decision making by offering real-time insights, reducing cognitive biases, and prioritizing differential diagnoses. Furthermore, AI-powered feedback loops can facilitate continuous learning and refinement of diagnostic processes by providing targeted education and outcome feedback to clinicians. By integrating AI into these areas, the potential for reducing diagnostic errors and improving patient safety in the ED is substantial. However, successfully implementing AI in the ED is challenging and complex. Developing, validating, and implementing AI as a safe, human-centered ED tool requires thoughtful design and meticulous attention to ethical and practical considerations. Clinicians and patients must be integrated as key stakeholders across these processes. Ultimately, AI should be seen as a tool that assists clinicians by supporting better, faster decisions and thus enhances patient outcomes.

医疗保健中的诊断错误对患者安全构成重大风险,而且非常普遍。在急诊科(ED),混乱和高压的环境增加了这些错误发生的可能性,因为急诊临床医生必须在认知超负荷的情况下利用有限的信息做出快速决策。人工智能(AI)在以下三个关键领域为改善诊断错误提供了前景广阔的解决方案:信息收集、临床决策支持(CDS)和通过质量改进进行反馈。人工智能可以简化信息收集流程,实现数据检索自动化,减轻认知负荷,并为临床医生快速提供重要的患者详细信息。人工智能驱动的 CDS 系统可提供实时见解、减少认知偏差并优先考虑鉴别诊断,从而增强诊断决策。此外,人工智能驱动的反馈回路可通过向临床医生提供有针对性的教育和结果反馈,促进诊断流程的不断学习和完善。通过将人工智能融入这些领域,在急诊室减少诊断错误和提高患者安全的潜力是巨大的。然而,在急诊室成功实施人工智能具有挑战性和复杂性。将人工智能作为一种安全、以人为本的急诊室工具进行开发、验证和实施,需要深思熟虑的设计和对伦理及实际问题的细致考虑。在这些过程中,临床医生和患者必须作为主要利益相关者参与其中。最终,人工智能应被视为一种工具,通过支持更好、更快的决策来协助临床医生,从而提高患者的治疗效果。
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来源期刊
Academic Emergency Medicine
Academic Emergency Medicine 医学-急救医学
CiteScore
7.60
自引率
6.80%
发文量
207
审稿时长
3-8 weeks
期刊介绍: Academic Emergency Medicine (AEM) is the official monthly publication of the Society for Academic Emergency Medicine (SAEM) and publishes information relevant to the practice, educational advancements, and investigation of emergency medicine. It is the second-largest peer-reviewed scientific journal in the specialty of emergency medicine. The goal of AEM is to advance the science, education, and clinical practice of emergency medicine, to serve as a voice for the academic emergency medicine community, and to promote SAEM''s goals and objectives. Members and non-members worldwide depend on this journal for translational medicine relevant to emergency medicine, as well as for clinical news, case studies and more. Each issue contains information relevant to the research, educational advancements, and practice in emergency medicine. Subject matter is diverse, including preclinical studies, clinical topics, health policy, and educational methods. The research of SAEM members contributes significantly to the scientific content and development of the journal.
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