临床环境中数据仓库的发展和使用:范围综述。

IF 3.2 Q1 HEALTH CARE SCIENCES & SERVICES
Frontiers in digital health Pub Date : 2025-06-05 eCollection Date: 2025-01-01 DOI:10.3389/fdgth.2025.1599514
Shiyang Lyu, Simon Craig, Gerard O'Reilly, David Taniar
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引用次数: 0

摘要

数据仓库在临床环境中的出现,极大地增强了数据分析能力,便于准确、全面地提取有价值的信息。通过分析每种类型的数据仓库的优势、挑战和影响,本范围审查探讨了数据仓库在临床环境中的贡献,特别关注一般类型和专门类型。方法:该范围评价遵循系统评价和荟萃分析(PRISMA)指南的首选报告项目。我们检索了四个数据库(PubMed, CINAHL, Scopus和ieee - explore),确定了2014年1月1日至2024年1月1日期间同行评审的英语研究,这些研究关注于医疗保健中的数据仓库,涵盖了一般或专门的数据仓库应用。使用Python编程提取搜索结果,并将数据转换为表格格式进行分析。结果:去除重复1194份后,保留独特论文4864份。摘要筛选排除了4590例不相关,剩下274例进行全文评估。总共有27篇论文符合纳入标准,其中17篇关注一般数据仓库,10篇关注专业数据仓库。一般数据仓库主要用于解决数据集成问题,特别是电子健康记录(EHR)/电子医疗记录(EMR)和一般临床数据。这些仓库通常使用星型模式体系结构,具有在线分析处理(OLAP)和查询分析功能。相比之下,专门的数据仓库侧重于通过处理特定于疾病的广泛数据来提高决策支持的质量,使用专门的架构和先进的人工智能(AI)功能来解决与这些任务相关的独特和复杂的挑战。结论:通用数据仓库有效地集成了不同的数据源,以提供疾病管理、患者护理和资源管理的综合视图。但是,它们的灵活性和分析能力需要改进。相比之下,专门的数据仓库越来越受欢迎,因为它们专注于特定疾病或研究目的,使用数据挖掘和人工智能等先进工具来实现卓越的分析性能。尽管这些专业仓库设计新颖,但由于其定制性质,它们面临着可扩展性方面的挑战。用先进的分析和灵活的架构来解决这些挑战是至关重要的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The development and use of data warehousing in clinical settings: a scoping review.

Introduction: The emergence of data warehousing in clinical settings has greatly enhanced data analysis capabilities, facilitating the accurate and comprehensive extraction of valuable information. This scoping review explores the contributions of data warehouses in clinical settings by analysing the strengths, challenges and implications of each type of data warehouse, with a particular focus on general and specialised types.

Methods: This scoping review adheres to the Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) guidelines. We searched four databases (PubMed, CINAHL, Scopus and IEEE-Xplore), identifying peer-reviewed, English-language studies from 1st January 2014 to 1st January 2024, that focus on data warehousing in healthcare, covering either general or specialised data warehouse applications. Python programming was used to extract the search results and transform the data into a tabular format for analysis.

Results: After removing 1,194 duplicates, 4,864 unique papers remained. Abstract screening excluded 4,590 as irrelevant, leaving 274 for full-text evaluation. In total, 27 papers met the inclusion criteria, of which 17 focused on general data warehouses and 10 on specialised data warehouses.General data warehouses were found to be primarily used to address data integration issues, particularly for electronic health record (EHR)/ Electronic medical Record (EMR) and general clinical data. These warehouses typically use a star schema architecture with online analytical processing (OLAP) and query analysis capabilities. In contrast, specialised data warehouses were focused on improving the quality of decision support by handling a wide range of data specific to diseases, using specialised architectures and advanced artificial intelligence (AI) capabilities to address the unique and complex challenges associated with these tasks.

Conclusions: General purpose data warehouses effectively integrate disparate data sources to provide a comprehensive view of disease management, patient care, and resource management. However, their flexibility and analytical capabilities need improvement. In contrast, specialised data warehouses are gaining popularity for their focus on specific diseases or research purposes, using advanced tools such as data mining and AI for superior analytical performance. Despite their innovative designs, these specialised warehouses face scalability challenges due to their customised nature. Addressing these challenges with advanced analytics and flexible architectures is critical.

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CiteScore
4.20
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