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生理网络映射在预测急性肝衰竭危重症患者生存中的应用。

Application of physiological network mapping in the prediction of survival in critically ill patients with acute liver failure.

机构信息

Division of Medicine, Institute for Liver and Digestive Health, UCL, Royal Free Campus, Rowland Hill Street, London, NW3 2PF, UK.

Network Physiology Laboratory, Division of Medicine, UCL, London, UK.

出版信息

Sci Rep. 2024 Oct 9;14(1):23571. doi: 10.1038/s41598-024-74351-2.

Abstract

Reduced functional connectivity of physiological systems is associated with poor prognosis in critically ill patients. However, physiological network analysis is not commonly used in clinical practice and awaits quantitative evidence. Acute liver failure (ALF) is associated with multiorgan failure and mortality. Prognostication in ALF is highly important for clinical management but is currently dependent on models that do not consider the interaction between organ systems. This study aims to examine whether physiological network analysis can predict survival in patients with ALF. Data from 640 adult patients admitted to the ICU for paracetamol-induced ALF were extracted from the MIMIC-III database. Parenclitic network analysis was performed on the routine biomarkers using 28-day survivors as reference population and network clusters were identified for survivors and non-survivors using k-clique percolation method. Network analysis showed that liver function biomarkers were more clustered in survivors than in non-survivors. Arterial pH was also found to cluster with serum creatinine and bicarbonate in survivors compared with non-survivors, where it clustered with respiratory nodes indicating physiologically distinctive compensatory mechanism. Deviation along the pH-bicarbonate and pH-creatinine axes significantly predicts mortality independent of current prognostic indicators. These results demonstrate that network analysis can provide pathophysiologic insight and predict survival in critically ill patients with ALF.

摘要

生理系统功能连接减少与危重症患者预后不良有关。然而,生理网络分析在临床实践中并不常用,需要定量证据支持。急性肝衰竭(ALF)常伴有多器官衰竭和死亡率。ALF 的预后对临床管理非常重要,但目前依赖于不考虑器官系统相互作用的模型。本研究旨在探讨生理网络分析是否可预测 ALF 患者的生存情况。从 MIMIC-III 数据库中提取了 640 名因乙酰氨基酚引起的 ALF 入住 ICU 的成年患者的数据。使用 28 天幸存者作为参考人群,对常规生物标志物进行网络分析,并使用 k-团渗滤法识别幸存者和非幸存者的网络簇。网络分析表明,肝功能生物标志物在幸存者中的聚类程度高于非幸存者。与非幸存者相比,动脉 pH 值也与血清肌酐和碳酸氢盐聚类,与呼吸节点聚类,表明存在生理上独特的代偿机制。沿着 pH-碳酸氢盐和 pH-肌酐轴的偏差独立于当前预后指标显著预测死亡率。这些结果表明,网络分析可以提供病理生理学见解,并预测患有 ALF 的危重症患者的生存情况。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5545/11464518/80440fe14e96/41598_2024_74351_Fig1_HTML.jpg

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