Chua Mui Teng, Boon Yuru, Lee Zi Yao, Kok Jian Hao Jaryl, Lim Clement Kee Woon, Cheung Nicole Mun Teng, Yong Lorraine Pei Xian, Kuan Win Sen
Emergency Medicine Department, National University Hospital, National University Health System, Singapore, Singapore.
Department of Surgery, Yong Loo Lin School of Medicine, National University of Singapore, Singapore, Singapore.
Ann Transl Med. 2025 Feb 28;13(1):4. doi: 10.21037/atm-24-150. Epub 2025 Feb 25.
Early recognition and treatment of sepsis in the emergency department (ED) is important. Traditional predictive analytics and clinical decision rules lack accuracy in identifying patients with sepsis. Artificial intelligence (AI) is increasingly prevalent in healthcare and offers application potential in the care of patients with sepsis. This review examines the evidence of AI in diagnosing, managing and prognosticating sepsis in the ED.
We performed literature search in PubMed, Embase, Google Scholar and Scopus databases for studies published between 1 January 2010 and 30 June 2024 that evaluated the use of AI in adult patients with sepsis in ED, using the following search terms: ("artificial intelligence" OR "machine learning" OR "neural networks, computer" OR "deep learning" OR "natural language processing"), AND ("sepsis" OR "septic shock", AND "emergency services" OR "emergency department"). Independent searches were conducted in duplicate with discrepancies adjudicated by a third member.
Incorporating multiple variables such as vital signs, free text input, laboratory tests and electrocardiogram was possible with AI compared to traditional models leading to improvement in diagnostic performance. Machine learning (ML) models outperformed traditional scoring tools in both diagnosis and prognosis of sepsis. ML models were able to analyze trends over time and showed utility in predicting mortality, severe sepsis and septic shock. Additionally, real-time ML-assisted alert systems are effective in improving time-to-antibiotic administration and ML algorithms can differentiate sepsis patients into distinct phenotypes to tailor management (especially fluid therapy and critical care interventions), potentially improving outcomes. Existing AI tools for sepsis currently lack generalizability and user acceptance. This is risk of automation bias with loss of clinicians' skills if over-reliance develops.
Overall, AI holds great promise in revolutionizing management of patients with sepsis in the ED as a clinical support tool. However, its application is currently still constrained by inherent limitations. Balanced integration of AI technology with clinician input is essential to harness its full potential and ensure optimal patient outcomes.
在急诊科(ED)早期识别和治疗脓毒症至关重要。传统的预测分析和临床决策规则在识别脓毒症患者方面缺乏准确性。人工智能(AI)在医疗保健领域日益普及,并在脓毒症患者的护理中具有应用潜力。本综述探讨了人工智能在急诊科诊断、管理和预测脓毒症方面的证据。
我们在PubMed、Embase、谷歌学术和Scopus数据库中进行文献检索,以查找2010年1月1日至2024年6月30日期间发表的评估人工智能在急诊科成年脓毒症患者中应用的研究,使用以下检索词:(“人工智能”或“机器学习”或“神经网络,计算机”或“深度学习”或“自然语言处理”),以及(“脓毒症”或“脓毒性休克”,以及“紧急服务”或“急诊科”)。独立检索由两人重复进行,差异由第三名成员裁决。
与传统模型相比,人工智能能够整合多个变量,如生命体征、自由文本输入、实验室检查和心电图,从而提高诊断性能。机器学习(ML)模型在脓毒症的诊断和预后方面均优于传统评分工具。ML模型能够分析随时间的趋势,并在预测死亡率、严重脓毒症和脓毒性休克方面显示出效用。此外,实时ML辅助警报系统在缩短抗生素给药时间方面有效,并且ML算法可以将脓毒症患者分为不同的表型以进行个性化管理(尤其是液体治疗和重症监护干预),有可能改善治疗结果。目前用于脓毒症的现有人工智能工具缺乏通用性和用户接受度。如果过度依赖,存在自动化偏差以及临床医生技能丧失的风险。
总体而言,作为一种临床支持工具,人工智能在彻底改变急诊科脓毒症患者的管理方面具有巨大潜力。然而,其应用目前仍受到固有局限性的限制。将人工智能技术与临床医生的意见进行平衡整合对于充分发挥其潜力并确保最佳患者治疗结果至关重要。