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Building Data-Driven Pathways From Routinely Collected Hospital Data: A Case Study on Prostate Cancer

机译:从常规收集的医院数据构建数据驱动的途径:以前列腺癌为例

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Background Routinely collected data in hospitals is complex, typically heterogeneous, and scattered across multiple Hospital Information Systems (HIS). This big data, created as a byproduct of health care activities, has the potential to provide a better understanding of diseases, unearth hidden patterns, and improve services and cost. The extent and uses of such data rely on its quality, which is not consistently checked, nor fully understood. Nevertheless, using routine data for the construction of data-driven clinical pathways, describing processes and trends, is a key topic receiving increasing attention in the literature. Traditional algorithms do not cope well with unstructured processes or data, and do not produce clinically meaningful visualizations. Supporting systems that provide additional information, context, and quality assurance inspection are needed. Objective The objective of the study is to explore how routine hospital data can be used to develop data-driven pathways that describe the journeys that patients take through care, and their potential uses in biomedical research; it proposes a framework for the construction, quality assessment, and visualization of patient pathways for clinical studies and decision support using a case study on prostate cancer. Methods Data pertaining to prostate cancer patients were extracted from a large UK hospital from eight different HIS, validated, and complemented with information from the local cancer registry. Data-driven pathways were built for each of the 1904 patients and an expert knowledge base, containing rules on the prostate cancer biomarker, was used to assess the completeness and utility of the pathways for a specific clinical study. Software components were built to provide meaningful visualizations for the constructed pathways. Results The proposed framework and pathway formalism enable the summarization, visualization, and querying of complex patient-centric clinical information, as well as the computation of quality indicators and dimensions. A novel graphical representation of the pathways allows the synthesis of such information. Conclusions Clinical pathways built from routinely collected hospital data can unearth information about patients and diseases that may otherwise be unavailable or overlooked in hospitals. Data-driven clinical pathways allow for heterogeneous data (ie, semistructured and unstructured data) to be collated over a unified data model and for data quality dimensions to be assessed. This work has enabled further research on prostate cancer and its biomarkers, and on the development and application of methods to mine, compare, analyze, and visualize pathways constructed from routine data. This is an important development for the reuse of big data in hospitals.
机译:背景技术医院中常规收集的数据是复杂的,通常是异构的,并且分散在多个医院信息系统(HIS)中。作为医疗保健活动的副产品而创建的大数据,有可能使人们更好地了解疾病,挖掘隐藏的模式并改善服务和成本。此类数据的范围和用途取决于其质量,该质量未得到一致检查或完全理解。然而,使用常规数据构建数据驱动的临床途径,描述过程和趋势是一个日益受到文献关注的关键主题。传统算法无法很好地应对非结构化过程或数据,并且无法产生具有临床意义的可视化效果。需要提供其他信息,上下文和质量保证检查的支持系统。目的本研究的目的是探讨如何利用常规医院数据来开发数据驱动的途径,以描述患者的护理历程及其在生物医学研究中的潜在用途。它为前列腺癌的案例研究提供了一个框架,用于临床研究和决策支持的患者路径的构建,质量评估和可视化。方法从英国一家大型医院的8个不同的HIS中提取有关前列腺癌患者的数据,进行验证,并补充当地癌症登记处的信息。为1904名患者中的每位患者建立了数据驱动的途径,并使用一个包含知识库中有关前列腺癌生物标志物的规则的专家知识库来评估特定临床研究途径的完整性和实用性。构建软件组件是为了为构建的路径提供有意义的可视化。结果所提出的框架和途径形式主义能够汇总,可视化和查询以患者为中心的复杂临床信息,以及质量指标和维度的计算。途径的新颖图形表示允许这种信息的合成。结论根据常规收集的医院数据建立的临床途径可以挖掘有关患者和疾病的信息,而这些信息在医院中可能是无法获得或被忽视的。数据驱动的临床途径允许在统一数据模型上整理异构数据(即半结构化和非结构化数据),并评估数据质量维度。这项工作使人们能够对前列腺癌及其生物标志物以及挖掘,比较,分析和可视化由常规数据构建的途径的方法进行进一步的研究和应用。这是在医院中重用大数据的重要发展。

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