Division of Emergency Medicine, Ann & Robert H. Lurie Children's Hospital of Chicago, Department of Pediatrics, Northwestern University Feinberg School of Medicine, Chicago, IL, USA.
Division of Critical Care Medicine, Ann & Robert H. Lurie Children's Hospital of Chicago, Department of Pediatrics, Northwestern University Feinberg School of Medicine, Chicago, IL, USA.
Pediatr Res. 2023 Jan;93(2):334-341. doi: 10.1038/s41390-022-02226-1. Epub 2022 Jul 29.
Machine learning models may be integrated into clinical decision support (CDS) systems to identify children at risk of specific diagnoses or clinical deterioration to provide evidence-based recommendations. This use of artificial intelligence models in clinical decision support (AI-CDS) may have several advantages over traditional "rule-based" CDS models in pediatric care through increased model accuracy, with fewer false alerts and missed patients. AI-CDS tools must be appropriately developed, provide insight into the rationale behind decisions, be seamlessly integrated into care pathways, be intuitive to use, answer clinically relevant questions, respect the content expertise of the healthcare provider, and be scientifically sound. While numerous machine learning models have been reported in pediatric care, their integration into AI-CDS remains incompletely realized to date. Important challenges in the application of AI models in pediatric care include the relatively lower rates of clinically significant outcomes compared to adults, and the lack of sufficiently large datasets available necessary for the development of machine learning models. In this review article, we summarize key concepts related to AI-CDS, its current application to pediatric care, and its potential benefits and risks. IMPACT: The performance of clinical decision support may be enhanced by the utilization of machine learning-based algorithms to improve the predictive performance of underlying models. Artificial intelligence-based clinical decision support (AI-CDS) uses models that are experientially improved through training and are particularly well suited toward high-dimensional data. The application of AI-CDS toward pediatric care remains limited currently but represents an important area of future research.
机器学习模型可以集成到临床决策支持 (CDS) 系统中,以识别有特定诊断或临床恶化风险的儿童,从而提供基于证据的建议。与传统的基于规则的 CDS 模型相比,这种在临床决策支持 (AI-CDS) 中使用人工智能模型有几个优点,它可以通过提高模型准确性、减少假警报和漏诊来提高准确性。AI-CDS 工具必须经过适当的开发,提供决策背后的基本原理的见解,无缝集成到护理路径中,易于使用,回答与临床相关的问题,尊重医疗保健提供者的专业知识,并且具有科学依据。虽然在儿科护理中已经报道了许多机器学习模型,但迄今为止,它们在 AI-CDS 中的集成仍未完全实现。在儿科护理中应用 AI 模型的重要挑战包括与成人相比,临床相关结果的发生率相对较低,以及缺乏足够大的数据集来开发机器学习模型。在这篇综述文章中,我们总结了与 AI-CDS 相关的关键概念,及其在儿科护理中的当前应用及其潜在的益处和风险。影响:通过利用基于机器学习的算法来提高基础模型的预测性能,可以提高临床决策支持的性能。基于人工智能的临床决策支持 (AI-CDS) 使用通过训练经验性提高的模型,特别适合高维数据。目前,AI-CDS 在儿科护理中的应用仍然有限,但代表了未来研究的一个重要领域。