Muchmore Patrick, Rappaport Edward B, Eckel Sandrah P
Department of Preventive Medicine, University of Southern California, Los Angeles, California
Department of Preventive Medicine, University of Southern California, Los Angeles, California.
Physiol Rep. 2017 Aug;5(15). doi: 10.14814/phy2.13276.
The fractional concentration of nitric oxide in exhaled breath (fe) is a biomarker of airway inflammation with applications in clinical asthma management and environmental epidemiology. fe concentration depends on the expiratory flow rate. Standard fe is assessed at 50 mL/sec, but "extended NO analysis" uses fe measured at multiple different flow rates to estimate parameters quantifying proximal and distal sources of NO in the lower respiratory tract. Most approaches to modeling multiple flow fe assume the concentration of NO throughout the airway has achieved a "steady-state." In practice, this assumption demands that subjects maintain sustained flow rate exhalations, during which both fe and expiratory flow rate must remain constant, and the fe maneuver is summarized by the average fe concentration and average flow during a small interval. In this work, we drop the steady-state assumption in the classic two-compartment model. Instead, we have developed a new parameter estimation approach based on measuring and adjusting for a continuously varying flow rate over the entire fe maneuver. We have developed a Bayesian inference framework for the parameters of the partial differential equation underlying this model. Based on multiple flow fe data from the Southern California Children's Health Study, we use observed and simulated NO concentrations to demonstrate that our approach has reasonable computation time and is consistent with existing steady-state approaches, while our inferences consistently offer greater precision than current methods.
呼出气中一氧化氮的分数浓度(fe)是一种气道炎症生物标志物,在临床哮喘管理和环境流行病学中具有应用价值。fe浓度取决于呼气流量。标准fe是在50毫升/秒的流量下评估的,但“扩展一氧化氮分析”使用在多个不同流量下测量的fe来估计量化下呼吸道近端和远端一氧化氮来源的参数。大多数对多流量fe进行建模的方法都假设整个气道中一氧化氮的浓度已达到“稳态”。在实际操作中,这一假设要求受试者保持持续的呼气流量,在此期间fe和呼气流量都必须保持恒定,并且fe操作通过一小段时间内的平均fe浓度和平均流量来总结。在这项工作中,我们放弃了经典双室模型中的稳态假设。相反,我们开发了一种新的参数估计方法,该方法基于在整个fe操作过程中测量和调整不断变化的流量。我们为该模型所基于的偏微分方程的参数开发了一个贝叶斯推理框架。基于南加州儿童健康研究的多流量fe数据,我们使用观察到的和模拟的一氧化氮浓度来证明我们的方法具有合理的计算时间,并且与现有的稳态方法一致,同时我们的推断始终比当前方法具有更高的精度。