Ironside-Smith Rupert, Noë Beryl, Allen Stuart M, Costello Shannon, Turner Liam D
School of Computer Science and Informatics, Cardiff University, Abacws, Senghennydd Road, Cardiff, CF24 4AG UK.
Florence Nightingale Faculty of Nursing, Midwifery and Palliative Care, King's College London, 57 Waterloo Road, London, SE1 8WA UK.
Netw Model Anal Health Inform Bioinform. 2024;13(1):55. doi: 10.1007/s13721-024-00490-1. Epub 2024 Oct 7.
Vital signs observations are regular measurements used by healthcare staff to track a patient's overall health status on hospital wards. We look at the potential in re-purposing aggregated and anonymised hospital data sources surrounding vital signs recording to provide new insights into how care is managed and delivered on wards. In this paper, we conduct a retrospective longitudinal observational study of 770,720 individual vital signs recordings across 20 hospital wards in South Wales (UK) and present a network modelling framework to explore and extract behavioural patterns via analysis of the resulting network structures at a global and local level. Self-loop edges, dyad, triad, and tetrad subgraphs were extracted and evaluated against a null model to determine individual statistical significance, and then combined into ward-level feature vectors to provide the means for determining notable behaviours across wards. Modelling data as a static network, by aggregating all vital sign observation data points, resulted in high uniformity but with the loss of important information which was better captured when modelling the static-temporal network, highlighting time's crucial role as a network element. Wards mostly followed expected patterns, with chains or stand-alone supplementary observations by clinical staff. However, observation sequences that deviate from this are revealed in five identified motif subgraphs and 6 anti-motif subgraphs. External ward characteristics also showed minimal impact on the relative abundance of subgraphs, indicating a 'superfamily' phenomena that has been similarly seen in complex networks in other domains. Overall, the results show that network modelling effectively captured and exposed behaviours within vital signs observation data, and demonstrated uniformity across hospital wards in managing this practice.
生命体征观察是医护人员用于在医院病房跟踪患者整体健康状况的常规测量方法。我们探讨了重新利用围绕生命体征记录的汇总和匿名化医院数据源的潜力,以提供有关病房护理管理和提供方式的新见解。在本文中,我们对英国南威尔士20个医院病房的770,720条个体生命体征记录进行了回顾性纵向观察研究,并提出了一个网络建模框架,通过在全局和局部层面分析所得网络结构来探索和提取行为模式。提取自环边、二元组、三元组和四元组子图,并根据零模型进行评估以确定个体统计显著性,然后将其组合成病房级特征向量,以提供确定各病房显著行为的方法。通过汇总所有生命体征观察数据点将数据建模为静态网络,导致高度均匀性,但丢失了重要信息,而在对静态-时间网络进行建模时能更好地捕捉这些信息,这突出了时间作为网络元素的关键作用。病房大多遵循预期模式,临床工作人员进行链式或独立的补充观察。然而,在五个识别出的基序子图和六个反基序子图中发现了偏离此模式的观察序列。外部病房特征对这些子图的相对丰度影响也最小,这表明在其他领域的复杂网络中也类似出现的“超家族”现象。总体而言,结果表明网络建模有效地捕捉并揭示了生命体征观察数据中的行为,并展示了各医院病房在管理这种做法上的一致性。