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Dynamic Profiling: Modeling the Dynamics of Inflammation and Predicting Outcomes in Traumatic Brain Injury Patients

机译:动态剖析:对创伤性脑损伤患者的炎症动力学建模并预测结果

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摘要

Inflammation induced by traumatic brain injury (TBI) is complex, individual-specific, and associated with morbidity and mortality. We sought to develop dynamic, data-driven, predictive computational models of TBI-induced inflammation based on cerebrospinal fluid (CSF) biomarkers. Thirteen inflammatory mediators were determined in serial CSF samples from 27 severe TBI patients. The Glasgow Coma Scale (GCS) score quantifies the initial severity of the neurological status of the patient on a numerical scale from 3 to 15. The 6-month Glasgow Outcome Scale (GOS) score, the outcome variable, was taken as the variable to express and predict as a function of the other input variables. Data on each subject consisting of ten clinical (one-dimensional) variables, such as age, gender, and presence of infection, along with inflammatory biomarker time series were used to generate both multinomial logistic as well as probit models that predict low (poor outcome) or high (favorable outcome) levels of the GOS score. To determine if CSF inflammation biomarkers could predict TBI outcome, a logistic model for low (≤3; poor neurological outcome) or high levels (≥4; favorable neurological outcome) of the GOS score involving a full effect of the pro-inflammatory cytokine tumor necrosis factor-α and both linear and quadratic effects of the anti-inflammatory cytokine interleukin-10 was obtained. To better stratify patients as their pathology progresses over time, a technique called “Dynamic Profiling” was developed in which patients were clustered, using the spectral Laplacian and Hartigan’s k-means method, into disjoint groups at different stages. Initial clustering was based on GCS score; subsequent clustering was performed based on clinical and demographic information and then further, sequential clustering based on the levels of individual inflammatory mediators over time. These clusters assess the risk of mortality of a new patient after each inflammatory mediator reading, based on the existing information in the previous data in the cluster to which the new patient belongs at the time, in essence acting as a “virtual clinician.” Using the Dynamic Profiling method, we show examples that suggest that severe TBI patient neurological outcomes could be predicted as a function of time post-TBI using CSF inflammatory mediators.
机译:外伤性脑损伤(TBI)诱发的炎症是复杂的,因人而异的,并与发病率和死亡率相关。我们力求开发基于脑脊液(CSF)生物标志物的TBI诱导的炎症的动态,数据驱动,预测计算模型。在来自27例重型TBI患者的连续CSF样本中确定了13种炎症介质。格拉斯哥昏迷量表(GCS)评分以3到15的数字量表量化了患者神经系统状况的初始严重程度。6个月的格拉斯哥成果量表(GOS)评分即结果变量被视为根据其他输入变量来表达和预测。每个受试者的数据包括十个临床(一维)变量,例如年龄,性别和感染的存在,以及炎性生物标志物的时间序列,用于生成多项式逻辑模型和预测低(不良结果)的概率模型)或GOS得分高(有利的结果)水平。为了确定脑脊液炎症生物标记物是否可以预测TBI结局,采用低(≤3;神经系统不良)或高水平(≥4;良好神经系统结局)的Logistic模型,包括促炎性细胞因子肿瘤的全部作用获得了坏死因子-α和抗炎细胞因子白细胞介素10的线性和二次效应。为了更好地根据病情随时间推移对患者进行分层,开发了一种称为“动态分析”的技术,该技术使用拉普拉斯光谱和Hartigan的k均值方法将患者聚类到不同阶段的不相交的组中。初始聚类基于GCS评分;随后根据临床和人口统计学信息进行聚类,然后根据各个炎症介质随时间的变化进一步进行顺序聚类。这些组基于每次新炎症所属的组中先前数据中的现有信息,在每次炎症介质读取后评估新患者死亡的风险,实质上是充当“虚拟临床医生”。使用动态分析方法,我们显示了一些示例,这些示例表明使用CSF炎性介质,可以将严重的TBI患者神经系统预后预测为TBI后时间的函数。

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