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1.
Front Pharmacol ; 7: 383, 2016.
Artigo em Inglês | MEDLINE | ID: mdl-27847476

RESUMO

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.

2.
Front Pharmacol ; 7: 342, 2016.
Artigo em Inglês | MEDLINE | ID: mdl-27729864

RESUMO

Inflammation induced by traumatic brain injury (TBI) is a complex mediator of morbidity and mortality. We have previously demonstrated the utility of both data-driven and mechanistic models in settings of traumatic injury. We hypothesized that differential dynamic inflammation programs characterize TBI survivors vs. non-survivors, and sought to leverage computational modeling to derive novel insights into this life/death bifurcation. Thirteen inflammatory cytokines and chemokines were determined using Luminex™ in serial cerebrospinal fluid (CSF) samples from 31 TBI patients over 5 days. In this cohort, 5 were non-survivors (Glasgow Outcome Scale [GOS] score = 1) and 26 were survivors (GOS > 1). A Pearson correlation analysis of initial injury (Glasgow Coma Scale [GCS]) vs. GOS suggested that survivors and non-survivors had distinct clinical response trajectories to injury. Statistically significant differences in interleukin (IL)-4, IL-5, IL-6, IL-8, IL-13, and tumor necrosis factor-α (TNF-α) were observed between TBI survivors vs. non-survivors over 5 days. Principal Component Analysis and Dynamic Bayesian Network inference suggested differential roles of chemokines, TNF-α, IL-6, and IL-10, based upon which an ordinary differential equation model of TBI was generated. This model was calibrated separately to the time course data of TBI survivors vs. non-survivors as a function of initial GCS. Analysis of parameter values in ensembles of simulations from these models suggested differences in microglial and damage responses in TBI survivors vs. non-survivors. These studies suggest the utility of combined data-driven and mechanistic models in the context of human TBI.

3.
Int J Pure Appl Math ; 63(3): 269-278, 2010.
Artigo em Inglês | MEDLINE | ID: mdl-28845122

RESUMO

Center of pressure electronic platform testing is proposed as an affordable early diagnostic tool for persons at risk of Parkinson's disease. A stiffness measures and crossing time statistic are studied for possible use in such a diagnosis.

4.
Int J Appl Math (Sofia) ; 18(4): 487-500, 2005.
Artigo em Inglês | MEDLINE | ID: mdl-28955157

RESUMO

The human postural control system is difficult to quantify since it seems to be subject to both deterministic forces as well as stochastic effects. The attempt made in this paper is to study postural control under quiet stance on the one hand, and by engaging the brain through a fluency test, on the other. A Kistler electronic platform is the vehicle by way of which we gather observations in the form of center of pressure (COP) trajectories. From these two-dimensional trajectories we extract several measures that describe various features of the postural control system. Some of the measures are descriptive, while others incorporate physical forces that enter the process. From these measures we then build predictive models and apply them to a set of patients with Parkinson's disease (PD) and a set of normal control subjects to validate and calibrate them. We further use the measures built out of the center of pressure trajectories to test the significance of the fluency (cognitive-motor dual task) effect on the two groups. The fluency effect is found significant in the parkinsonian group as well as the normal controls. The clinical importance of these findings lies in the fact that the models may be used as a more objective assessment of postural control that may either replace or supplement the more subjective Unified Parkinson's Disease Rating Scale (UPDRS). The models may also be used as an assessment tool for the evaluation of patients subsequent to pharmacological and surgical treatment.

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