利用人工智能改善儿童败血症的诊断和管理:当前进展、挑战和未来方向。

IF 1.2 4区 医学 Q3 EMERGENCY MEDICINE
Pavlos Siolos, Saif Pasha, Maria Triantafyllou, Nora Wolff, Zara Ibrahim, Panagiotis Kratimenos, Rishi Kamaleswaran, Tom Velez, Ioannis Koutroulis
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引用次数: 0

摘要

人工智能(AI)已被应用于快速进展的社区获得性儿童败血症的早期识别和管理,这是儿童死亡的主要原因。电子健康记录的广泛采用与数字技术的快速发展相结合,使得由合作临床医生团队培训的知识驱动型人工智能(称为专家系统)和数据驱动型人工智能(称为机器学习(ML))的联合培训成为可能,从而获得基于“大数据”训练的预测性聚类算法。机器学习的一个重要子集是“深度学习”,它包括理解、解释和操纵人类图像和语言的工具,例如自然语言处理及其子集大型语言模型。我们正处于一个快速部署人工智能/机器学习驱动的工具的时代,从实时电子健康记录嵌入式决策支持工具到连续可穿戴生命体征监视器和移动/会话虚拟助理/分类应用程序。这些应用有可能改变挽救生命的败血症护理提供的及时性。本综述探讨了目前和潜在的AI/ML在脓毒症治疗中的应用,包括筛查/早期发现、风险分层/结果预测、个性化治疗和持续患者监测的工具。我们强调成功的实施和正在进行的临床试验,强调对患者结果的影响。最后,我们讨论了未来的实际考虑,如减少偏见和融入临床工作流程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Harnessing AI for Improved Diagnosis and Management of Pediatric Sepsis: Current Advances, Challenges, and Future Directions.

Artificial intelligence (AI) has been applied to early recognition and management of rapidly progressive, community-acquired pediatric sepsis, a leading cause of childhood mortality. The broad adoption of electronic health records combined with rapid advances in digital technologies have enabled the federated training of both knowledge-driven AI, known as expert systems, trained by teams of collaborating clinicians, and data-driven AI, known as machine learning (ML), to derive predictive, clustering algorithms trained on "big data." An important subset of ML is "deep learning," which includes tools that understand, interpret, and manipulate human imagery and language, such as natural language processing and its subset large language models. We are in an era of rapid deployment of AI/ML-powered tools ranging from real-time electronic health records-embedded decision support tools to continuous wearable vital sign monitors and mobile/conversational virtual assistants/triage apps. These applications have the potential of transforming the timeliness of life-saving sepsis care delivery. This review explores the current and potential AI/ML applications in sepsis care, including tools for screening/early detection, risk stratification/outcome prediction, personalized treatment, and continuous patient monitoring. We highlight successful implementations and ongoing clinical trials, emphasizing the impact on patient outcomes. Finally, we address practical considerations for the future, such as bias mitigation and integration into clinical workflows.

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来源期刊
Pediatric emergency care
Pediatric emergency care 医学-急救医学
CiteScore
2.40
自引率
14.30%
发文量
577
审稿时长
3-6 weeks
期刊介绍: Pediatric Emergency Care®, features clinically relevant original articles with an EM perspective on the care of acutely ill or injured children and adolescents. The journal is aimed at both the pediatrician who wants to know more about treating and being compensated for minor emergency cases and the emergency physicians who must treat children or adolescents in more than one case in there.
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