临床网络映射预测脓毒症危重患者的生存。

IF 2.2 Q3 PHYSIOLOGY
Emily Ito, Tope Oyelade, Matthew Wikner, Jinyuan Liu, Watjana Lilaonitkul, Ali R Mani
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引用次数: 0

摘要

脓毒症是一种涉及多器官系统的复杂疾病。脓毒症的网络生理学方法可能揭示集体系统行为和内在器官相互作用。然而,由于缺乏使用常规临床和实验室数据评估生理网络的分析方法,为个体患者绘制功能连接图一直具有挑战性。本研究基于常规实验室数据,探讨了使用临床网络作图来评估器官连通性和预测败血症结果。从MIMIC-III数据库中回顾性分析162例符合脓毒症-3标准的脓毒症患者的数据。利用15个代表器官系统的生理变量,通过相关分析构建器官网络连通性。相关分析确定了与30天生存率相关的7种相互作用。使用Parenclitic网络分析来测量个体患者器官系统之间的相关性与幸存者观察到的参考生理相互作用的偏差。ph -碳酸氢盐轴的偏斜(风险比= 2.081,p
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Parenclitic network mapping predicts survival in critically ill patients with sepsis.

Sepsis is a complex disease involving multiple organ systems. A network physiology approach to sepsis may reveal collective system behaviors and intrinsic organ interactions. However, mapping functional connectivity for individual patients has been challenging due to the lack of analytical methods for evaluating physiological networks using routine clinical and laboratory data. This study explored the use of parenclitic network mapping to assess organ connectivity and predict sepsis outcomes based on routine laboratory data. Data from 162 sepsis patients meeting Sepsis-3 criteria were retrospectively analyzed from the MIMIC-III database. Fifteen physiological variables representing organ systems were used to construct organ network connectivity through correlation analysis. Correlation analysis identified 7 interactions linked to 30-day survival. Parenclitic network analysis was used to measure deviations in individual patients' correlations between organ systems from the reference physiological interactions observed in survivors. Parenclitic deviations in the pH-bicarbonate axis (hazard ratio = 2.081, p < 0.001) and pH-lactate axis (hazard ratio = 2.773, p = 0.024) significantly predicted 30-day mortality, independent of the Sequential Organ Failure Assessment (SOFA) score and ventilation status. This study highlights the potential of parenclitic network mapping to provide insights into sepsis pathophysiology and differences in organ system connectivity between survivors and non-survivors independent of sepsis severity and mechanical ventilation status.

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来源期刊
Physiological Reports
Physiological Reports PHYSIOLOGY-
CiteScore
4.20
自引率
4.00%
发文量
374
审稿时长
9 weeks
期刊介绍: Physiological Reports is an online only, open access journal that will publish peer reviewed research across all areas of basic, translational, and clinical physiology and allied disciplines. Physiological Reports is a collaboration between The Physiological Society and the American Physiological Society, and is therefore in a unique position to serve the international physiology community through quick time to publication while upholding a quality standard of sound research that constitutes a useful contribution to the field.
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