University Children's Hospital of Basel, 4031 Basel, Switzerland.
J Appl Physiol (1985). 2011 Jun;110(6):1723-31. doi: 10.1152/japplphysiol.01297.2010. Epub 2011 Feb 3.
In this review, we summarize results of recent research on the temporal variability of lung function, symptoms, and inflammatory biomarkers. Specifically, we demonstrate how fluctuation analysis borrowed from statistical physics can be used to gain insight into neurorespiratory control and complex chronic dynamic diseases such as asthma viewed as a system of interacting components (e.g., inflammatory, immunological, and mechanical). Fluctuation analysis tools are based on quantifying the distribution and the short- and long-term temporal history of tidal breathing and lung function parameters to assess neurorespiratory control and monitor chronic disease. The latter includes the assessment of severity and disease control, the impact of treatment and environmental triggers, the temporal characterization of disease phenotypes, and the individual risk of exacerbation. While in many cases specific mechanistic insight into the fluctuations still awaits further research, appropriate analyses of the fluctuations already impact on clinical science and practice.
在这篇综述中,我们总结了最近关于肺功能、症状和炎症生物标志物时间变异性的研究结果。具体来说,我们展示了如何借用统计物理学中的波动分析来深入了解神经呼吸控制以及哮喘等复杂的慢性动态疾病,将其视为相互作用的组件系统(例如炎症、免疫和机械)。波动分析工具基于量化潮式呼吸和肺功能参数的分布以及短期和长期时间历史,以评估神经呼吸控制和监测慢性疾病。后者包括评估严重程度和疾病控制、治疗和环境触发因素的影响、疾病表型的时间特征以及恶化的个体风险。虽然在许多情况下,对波动的具体机制仍有待进一步研究,但波动的适当分析已经对临床科学和实践产生了影响。