Center for Digital Health, Mayo Clinic, Rochester, Minnesota.
Precision Population Science Lab, Mayo Clinic, Rochester, Minnesota.
AMIA Jt Summits Transl Sci Proc. 2022 May 23;2022:25-35. eCollection 2022.
Achieving optimal care for pediatric asthma patients depends on giving clinicians efficient access to pertinent patient information. Unfortunately, adherence to guidelines or best practices has shown to be challenging, as relevant information is often scattered throughout the patient record in both structured data and unstructured clinical notes. Furthermore, in the absence of supporting tools, the onus of consolidating this information generally falls upon the clinician. In this study, we propose a machine learning-based clinical decision support (CDS) system focused on pediatric asthma care to alleviate some of this burden. This framework aims to incorporate a machine learning model capable of predicting asthma exacerbation risk into the clinical workflow, emphasizing contextual data, supporting information, and model transparency and explainability. We show that this asthma exacerbation model is capable of predicting exacerbation with an 0.8 AUC-ROC. This model, paired with a comprehensive informatics-based process centered on clinical usability, emphasizes our focus on meeting the needs of the clinical practice with machine learning technology.
实现儿科哮喘患者的最佳护理取决于为临床医生提供高效获取相关患者信息的途径。不幸的是,尽管遵循指南或最佳实践具有挑战性,但相关信息通常分散在患者记录中的结构化数据和非结构化临床记录中。此外,在缺乏支持工具的情况下,通常需要临床医生来整合这些信息。在这项研究中,我们提出了一个基于机器学习的临床决策支持 (CDS) 系统,专注于儿科哮喘护理,以减轻这种负担。该框架旨在将能够预测哮喘恶化风险的机器学习模型纳入临床工作流程中,强调上下文数据、支持信息以及模型的透明度和可解释性。我们表明,该哮喘恶化模型能够以 0.8 AUC-ROC 预测恶化情况。该模型与以临床可用性为中心的综合信息学为基础的过程相结合,强调了我们专注于通过机器学习技术满足临床实践需求。