A Scalable and Extensible Logical Data Model of Electronic Health Record Audit Logs for Temporal Data Mining (RNteract): Model Conceptualization and Formulation.
Victoria L Tiase, Katherine A Sward, Julio C Facelli
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引用次数: 0
Abstract
Background: Increased workload, including workload related to electronic health record (EHR) documentation, is reported as a main contributor to nurse burnout and adversely affects patient safety and nurse satisfaction. Traditional methods for workload analysis are either administrative measures (such as the nurse-patient ratio) that do not represent actual nursing care or are subjective and limited to snapshots of care (eg, time-motion studies). Observing care and testing workflow changes in real time can be obstructive to clinical care. An examination of EHR interactions using EHR audit logs could provide a scalable, unobtrusive way to quantify the nursing workload, at least to the extent that nursing work is represented in EHR documentation. EHR audit logs are extremely complex; however, simple analytical methods cannot discover complex temporal patterns, requiring use of state-of-the-art temporal data-mining approaches. To effectively use these approaches, it is necessary to structure the raw audit logs into a consistent and scalable logical data model that can be consumed by machine learning (ML) algorithms.
Objective: We aimed to conceptualize a logical data model for nurse-EHR interactions that would support the future development of temporal ML models based on EHR audit log data.
Methods: We conducted a preliminary review of EHR audit logs to understand the types of nursing-specific data captured. Using concepts derived from the literature and our previous experience studying temporal patterns in biomedical data, we formulated a logical data model that can describe nurse-EHR interactions, the nurse-intrinsic and situational characteristics that may influence those interactions, and outcomes of relevance to the nursing workload in a scalable and extensible manner.
Results: We describe the data structure and concepts from EHR audit log data associated with nursing workload as a logical data model named RNteract. We conceptually demonstrate how using this logical data model could support temporal unsupervised ML and state-of-the-art artificial intelligence (AI) methods for predictive modeling.
Conclusions: The RNteract logical data model appears capable of supporting a variety of AI-based systems and should be generalizable to any type of EHR system or health care setting. Quantitatively identifying and analyzing temporal patterns of nurse-EHR interactions is foundational for developing interventions that support the nursing documentation workload and address nurse burnout.
背景:据报道,工作量增加(包括与电子健康记录(EHR)文档相关的工作量)是导致护士职业倦怠的主要因素,并对患者安全和护士满意度产生不利影响。传统的工作量分析方法要么是行政措施(如护患比例),不能代表实际的护理工作,要么是主观的,仅限于护理工作的快照(如时间运动研究)。实时观察护理情况和测试工作流程的变化可能会妨碍临床护理。使用电子病历审计日志对电子病历的交互作用进行检查,可以提供一种可扩展的、不显眼的方法来量化护理工作量,至少在电子病历文档所体现的护理工作范围内是如此。电子病历审计日志极其复杂;然而,简单的分析方法无法发现复杂的时间模式,这就需要使用最先进的时间数据挖掘方法。为了有效地使用这些方法,有必要将原始审计日志结构化为机器学习(ML)算法可以使用的一致且可扩展的逻辑数据模型:我们的目标是为护士与电子病历的交互建立一个逻辑数据模型,以支持未来基于电子病历审计日志数据的时态 ML 模型的开发:我们对电子病历审计日志进行了初步审查,以了解所捕获的特定护理数据类型。利用从文献中得出的概念和我们以前研究生物医学数据中时间模式的经验,我们制定了一个逻辑数据模型,该模型能够以可扩展和可延伸的方式描述护士与 EHR 的交互、可能影响这些交互的护士内在特征和情景特征以及与护理工作量相关的结果:我们将电子病历审计日志数据中与护理工作量相关的数据结构和概念描述为一个名为 RNteract 的逻辑数据模型。我们从概念上演示了如何使用该逻辑数据模型支持用于预测建模的时间无监督 ML 和最先进的人工智能 (AI) 方法:结论:RNteract 逻辑数据模型似乎能够支持各种基于人工智能的系统,并可用于任何类型的电子病历系统或医疗环境。定量识别和分析护士与电子病历交互的时间模式,对于开发支持护理文档工作量和解决护士职业倦怠的干预措施至关重要。