Department of Pharmacy, Uppsala University, Uppsala, Sweden.
Section of Infectious Diseases, Department of Medical Sciences, Uppsala University, Uppsala, Sweden.
Cytokine. 2023 Sep;169:156296. doi: 10.1016/j.cyto.2023.156296. Epub 2023 Jul 17.
Describing the kinetics of cytokines involved as biomarkers of sepsis progression could help to optimise interventions in septic patients. This work aimed to quantitively characterise the cytokine kinetics upon exposure to live E. coli by developing an in silico model, and to explore predicted cytokine kinetics at different bacterial exposure scenarios.
Data from published in vivo studies using a porcine sepsis model were analysed. A model describing the time courses of bacterial dynamics, endotoxin (ETX) release, and the kinetics of TNF and IL-6 was developed. The model structure was extended from a published model that quantifies the ETX-cytokines relationship. An external model evaluation was conducted by applying the model to literature data. Model simulations were performed to explore the sensitivity of the host response towards differences in the input rate of bacteria, while keeping the total bacterial burden constant.
The analysis included 645 observations from 30 animals. The blood bacterial count was well described by a one-compartment model with linear elimination. A scaling factor was estimated to quantify the ETX release by bacteria. The model successfully described the profiles of TNF, and IL-6 without a need to modify the ETX-cytokines model structure. The kinetics of TNF, and IL-6 in the external datasets were well predicted. According to the simulations, the ETX tolerance development results in that low initial input rates of bacteria trigger the lowest cytokine release.
The model quantitively described and predicted the cytokine kinetics triggered by E. coli exposure. The host response was found to be sensitive to the bacterial exposure rate given the same total bacterial burden.
描述脓毒症进展相关细胞因子的动力学特征,有助于优化脓毒症患者的干预措施。本研究旨在通过开发一种计算模型来定量描述暴露于活大肠杆菌时细胞因子的动力学特征,并探索不同细菌暴露情况下预测的细胞因子动力学。
分析了使用猪脓毒症模型的已发表体内研究数据。开发了一个描述细菌动力学、内毒素(ETX)释放以及 TNF 和 IL-6 动力学的模型。该模型结构是从量化 ETX-细胞因子关系的已发表模型扩展而来。通过将模型应用于文献数据,进行了外部模型评估。进行了模型模拟,以研究宿主反应对细菌输入率差异的敏感性,同时保持总细菌负荷不变。
该分析包括 30 只动物的 645 个观察值。血液细菌计数通过具有线性消除的单室模型得到很好的描述。估计了一个比例因子来量化细菌释放的 ETX。该模型成功描述了 TNF 和 IL-6 的曲线,无需修改 ETX-细胞因子模型结构。外部数据集的 TNF 和 IL-6 动力学得到了很好的预测。根据模拟结果,ETX 耐受的发展导致低初始细菌输入率引发最低的细胞因子释放。
该模型定量描述并预测了大肠杆菌暴露引发的细胞因子动力学。在相同的总细菌负荷下,宿主反应被发现对细菌暴露率敏感。