Department of Applied Physics and Electronics, Umeå University, SE-90187 Umeå, Sweden.
J Breath Res. 2019 Mar 1;13(2):026001. doi: 10.1088/1752-7163/aafc91.
Real-time breath gas analysis coupled to gas exchange modeling is emerging as promising strategy to enhance the information gained from breath tests. It is shown for exhaled breath carbon monoxide (eCO), a potential biomarker for oxidative stress and respiratory diseases, that a weighted, nonlinear least-squares fit of simulated to measured expirograms can be used to extract physiological parameters, such as airway and alveolar concentrations and diffusing capacities. Experimental CO exhalation profiles are acquired with high time-resolution and precision using mid-infrared tunable diode laser absorption spectroscopy and online breath sampling. A trumpet model with axial diffusion is employed to generate eCO profiles based on measured exhalation flow rates and volumes. The concept is demonstrated on two healthy non-smokers exhaling at a flow rate of 250 ml s during normal breathing and at 120 ml s after 10 s of breath-holding. The obtained gas exchange parameters of the two subjects are in a similar range, but clearly distinguishable. Over a series of twenty consecutive expirograms, the intra-individual variation in the alveolar parameters is less than 6%. After a 2 h exposure to 10 ± 2 ppm CO, end-tidal and alveolar CO concentrations are significantly increased (by factors of 2.7 and 4.9 for the two subjects) and the airway CO concentration is slightly higher, while the alveolar diffusing capacity is unchanged compared to before exposure. Using model simulations, it is found that a three-fold increase in maximum airway CO flux and a reduction in alveolar diffusing capacity by 60% lead to clearly distinguishable changes in the exhalation profile shape. This suggests that extended breath CO analysis has clinical relevance in assessing airway inflammation and chronic obstructive pulmonary disease. Moreover, the novel methodology contributes to the standardization of real-time breath gas analysis.
实时呼出气分析与气体交换模型相结合,正成为增强呼吸测试信息的一种很有前途的策略。对于呼出气一氧化碳(eCO),一种潜在的氧化应激和呼吸疾病的生物标志物,研究表明,模拟到测量的呼出气廓线的加权非线性最小二乘拟合可用于提取生理参数,如气道和肺泡浓度和扩散能力。使用中红外可调谐二极管激光吸收光谱和在线呼吸采样,以高时间分辨率和精度获得实验 CO 呼气廓线。采用带有轴向扩散的喇叭模型,根据测量的呼气流量和体积生成 eCO 廓线。该概念在两名健康非吸烟者身上进行了验证,他们以 250 ml/s 的流速正常呼吸,10 秒后以 120 ml/s 的流速屏气。两名受试者的气体交换参数在相似范围内,但可明显区分。在连续 20 次呼出气廓线中,个体内肺泡参数的变异小于 6%。暴露于 10±2 ppm CO 2 小时后,终末和肺泡 CO 浓度显著增加(两名受试者分别增加了 2.7 倍和 4.9 倍),气道 CO 浓度略高,而肺泡扩散能力与暴露前相比不变。通过模型模拟,发现气道最大 CO 通量增加三倍和肺泡扩散能力降低 60%,会导致呼气廓线形状明显改变。这表明,扩展的 CO 呼气分析在评估气道炎症和慢性阻塞性肺疾病方面具有临床意义。此外,新方法有助于实时呼出气分析的标准化。