爆发预测的人工智能建模:识别万古霉素耐药肠球菌携带者的图神经网络方法。

IF 7.7
PLOS digital health Pub Date : 2025-04-10 eCollection Date: 2025-04-01 DOI:10.1371/journal.pdig.0000821
Gregor Donabauer, Anca Rath, Aila Caplunik-Pratsch, Anja Eichner, Jürgen Fritsch, Martin Kieninger, Susanne Gaube, Wulf Schneider-Brachert, Udo Kruschwitz, Bärbel Kieninger
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引用次数: 0

摘要

预防万古霉素耐药肠球菌(VRE)的医院传播应采取隔离患者和强化感染控制措施,但仍需早期发现VRE携带者。然而,VRE仍没有标准的筛查标准,这对患者安全构成了重大威胁。我们的研究旨在开发和评估一种基于人工智能(AI)的方法,用于识别和预测高危患者,这些患者可以通过人在环的方法协助感染防控工作人员。我们使用了来自8372名患者的数据,将医院内125,000多次运动与患者相关信息相结合,创建了时间相关的图序列,并应用图神经网络(gnn)将患者分类为VRE携带者或非携带者。我们的模型在任务上的宏观F1得分为0.880(灵敏度为0.808,特异性为0.942)。对预测影响最大的参数是临床诊断(ICD)和操作/程序(OPS)的代码,它们作为高维患者节点特征集成在我们的模型中。我们证明了用GNN建模一个“活的”医院是早期发现潜在VRE携带者的一种很有前途的方法。这证明基于人工智能的工具结合异构信息类型可以高灵敏度地预测VRE携带,因此可以作为未来自动化感染预防控制系统的有希望的基础。这种系统可以通过有针对性的、具有成本效益的干预措施,帮助提高患者安全,并主动减少院内传播事件。此外,它们可以使更有效的方法来管理抗菌素耐药性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AI modeling for outbreak prediction: A graph-neural-network approach for identifying vancomycin-resistant enterococcus carriers.

The isolation of affected patients and intensified infection control measures are used to prevent nosocomial transmission of vancomycin-resistant enterococci (VRE), but early detection of VRE carriers is needed. However, there are still no standard screening criteria for VRE, which poses a significant threat to patient safety. Our study aimed to develop and evaluate an artificial intelligence (AI)-based approach for identifying and predicting of at-risk patients who could assist infection prevention and control staff through a human-in-the-loop approach. We used data from 8,372 patients, combining more than 125,000 movements within our hospital with patient-related information to create time-dependent graph sequences and applied graph neural networks (GNNs) to classify patients as VRE carriers or noncarriers. Our model achieves a macro F1 score of 0.880 on the task (sensitivity of 0.808, specificity of 0.942). The parameters with the strongest impact on the prediction are the codes for clinical diagnosis (ICD) and operations/procedures (OPS), which are integrated as high-dimensional patient node features in our model. We demonstrate that modeling a "living" hospital with a GNN is a promising approach for the early detection of potential VRE carriers. This proves that AI-based tools combining heterogeneous information types can predict VRE carriage with high sensitivity and could therefore serve as a promising basis for future automated infection prevention control systems. Such systems could help enhance patient safety and proactively reduce nosocomial transmission events through targeted, cost-efficient interventions. Moreover, they could enable a more effective approach to managing antimicrobial resistance.

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