Creating a data warehouse to support monitoring of NSQHS blood management standard from EMR data.

IF 3.3 3区 医学 Q2 MEDICAL INFORMATICS BMC Medical Informatics and Decision Making Pub Date : 2024-11-22 DOI:10.1186/s12911-024-02732-8
David Cheng-Zarate, James Burns, Cathy Ngo, Agnes Haryanto, Gregory Duncan, David Taniar, Michael Wybrow
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Abstract

Background: Blood management is an important aspect of healthcare and vital for the well-being of patients. For effective blood management, it is essential to determine the quality and documentation of the processes for blood transfusions in the Electronic Medical Records (EMR) system. The EMR system stores information on most activities performed in a digital hospital. As such, it is difficult to get an overview of all data. The National Safety and Quality Health Service (NSQHS) Standards define metrics that assess the care quality of health entities such as hospitals. To produce these metrics, data needs to be analysed historically. However, data in the EMR is not designed to easily perform analytical queries of the kind which are needed to feed into clinical decision support tools. Thus, another system needs to be implemented to store and calculate the metrics for the blood management national standard.

Methods: In this paper, we propose a clinical data warehouse that stores the transformed data from EMR to be able to identify that the hospital is compliant with the Australian NSQHS Standards for blood management. Firstly, the data needed was explored and evaluated. Next, a schema for the clinical data warehouse was designed for the efficient storage of EMR data. Once the schema was defined, data was extracted from the EMR to be preprocessed to fit the schema design. Finally, the data warehouse allows the data to be consumed by decision support tools.

Results: We worked with Eastern Health, a major Australian health service, to implement the data warehouse that allowed us to easily query and supply data to be ingested by clinical decision support systems. Additionally, this implementation provides flexibility to recompute the metrics whenever data is updated. Finally, a dashboard was implemented to display important metrics defined by the National Safety and Quality Health Service (NSQHS) Standards on blood management.

Conclusions: This study prioritises streamlined data modeling and processing, in contrast to conventional dashboard-centric approaches. It ensures data readiness for decision-making tools, offering insights to clinicians and validating hospital compliance with national standards in blood management through efficient design.

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创建数据仓库,支持从 EMR 数据中监测 NSQHS 血液管理标准。
背景:血液管理是医疗保健的一个重要方面,对患者的健康至关重要。为实现有效的血液管理,必须确定电子病历(EMR)系统中输血流程的质量和文档记录。EMR 系统存储了数字化医院中大多数活动的信息。因此,很难对所有数据进行全面了解。国家安全与优质医疗服务(NSQHS)标准规定了评估医院等医疗实体医疗质量的指标。要得出这些指标,需要对数据进行历史分析。然而,EMR 中的数据在设计上不便于执行分析查询,而这种查询是临床决策支持工具所必需的。因此,需要实施另一个系统来存储和计算血液管理国家标准的指标:在本文中,我们提出了一个临床数据仓库,用于存储从 EMR 转化而来的数据,以确定医院是否符合澳大利亚 NSQHS 血液管理标准。首先,对所需数据进行了探索和评估。接着,设计了临床数据仓库的模式,以便有效存储 EMR 数据。一旦确定了模式,就从电子病历中提取数据进行预处理,以适应模式设计。最后,数据仓库允许决策支持工具使用数据:我们与澳大利亚主要医疗服务机构 Eastern Health 合作实施了数据仓库,使我们能够轻松查询和提供数据,供临床决策支持系统使用。此外,这种实施方式还具有灵活性,可以在数据更新时重新计算指标。最后,我们还实施了一个仪表板,用于显示《国家安全与质量卫生服务标准》(NSQHS)中有关血液管理的重要指标:与传统的以仪表盘为中心的方法不同,这项研究优先考虑简化数据建模和处理。结论:与传统的以仪表盘为中心的方法不同,本研究优先考虑简化数据建模和处理,确保决策工具的数据准备就绪,为临床医生提供见解,并通过高效的设计验证医院是否符合国家血液管理标准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
7.20
自引率
5.70%
发文量
297
审稿时长
1 months
期刊介绍: BMC Medical Informatics and Decision Making is an open access journal publishing original peer-reviewed research articles in relation to the design, development, implementation, use, and evaluation of health information technologies and decision-making for human health.
期刊最新文献
Natural language processing data services for healthcare providers. Prediction model of ICU readmission in Chinese patients with acute type A aortic dissection: a retrospective study. Qualitative metrics from the biomedical literature for evaluating large language models in clinical decision-making: a narrative review. Creating a data warehouse to support monitoring of NSQHS blood management standard from EMR data. Multimodal machine learning for language and speech markers identification in mental health.
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