Lerios Theodore, Knopp Jennifer L, Holder-Pearson Lui, Guy Ella F S, Chase J Geoffrey
Department of Mechanical Engineering, Centre for Bio-Engineering, University of Canterbury, Christchurch, New Zealand.
Department of Mechanical Engineering, Centre for Bio-Engineering, University of Canterbury, Christchurch, New Zealand.
Comput Biol Med. 2023 Jan;152:106430. doi: 10.1016/j.compbiomed.2022.106430. Epub 2022 Dec 16.
Current methods to diagnose and monitor COPD employ spirometry as the gold standard to identify lung function reduction with reduced forced expiratory volume (FEV)/vital capacity (VC) ratio. Current methods utilise linear assumptions regarding airway resistance, where nonlinear resistance modelling may provide rapid insight into patient specific condition and disease progression. This study examines model-based expiratory resistance in healthy lungs and those with progressively more severe COPD.
Healthy and COPD pressure (P)[cmHO] and flow (Q)[L/s] data is obtained from the literature, and 5 intermediate levels of COPD and responses are created to simulate COPD progression and assess model-based metric resolution. Linear and nonlinear single compartment models are used to identify changes in inspiratory (R) and linear (R)/nonlinear (RΦ) expiratory resistance with disease severity and over the course of expiration.
R increases from 2.1 to 7.3 cmHO/L/s, R increases from 2.4 to 10.0 cmHO/L/s with COPD severity. Nonlinear RΦ increases (mean RΦ: 2.5 cmHO/L/s (healthy) to 24.4 cmHO/L/s (COPD)), with increasing end-expiratory nonlinearity as COPD severity increases.
Expiratory resistance is increasingly highly nonlinear with COPD severity. These results show a simple, nonlinear model can capture fundamental COPD dynamics and progression from regular breathing data, and such an approach may be useful for patient-specific diagnosis and monitoring.
目前诊断和监测慢性阻塞性肺疾病(COPD)的方法采用肺量计作为金标准,以识别因用力呼气量(FEV)/肺活量(VC)比值降低导致的肺功能下降。当前方法采用关于气道阻力的线性假设,而非线性阻力建模可能会快速洞察患者的具体病情和疾病进展。本研究考察了健康肺以及COPD病情逐渐加重的肺中基于模型的呼气阻力。
从文献中获取健康和COPD患者的压力(P)[cmH₂O]和流量(Q)[L/s]数据,并创建5个COPD中间水平及其相应反应,以模拟COPD进展并评估基于模型的指标分辨率。使用线性和非线性单室模型来识别吸气阻力(R)以及线性(R)/非线性(RΦ)呼气阻力随疾病严重程度和呼气过程中的变化情况。
随着COPD严重程度增加,R从2.1增至7.3 cmH₂O/L/s,R从2.4增至10.0 cmH₂O/L/s。随着COPD严重程度增加,呼气末非线性增强,非线性RΦ增加(平均RΦ:健康者为2.5 cmH₂O/L/s,COPD患者为24.4 cmH₂O/L/s)。
随着COPD严重程度增加,呼气阻力的非线性程度越来越高。这些结果表明,一个简单的非线性模型能够从常规呼吸数据中捕捉COPD的基本动态变化和进展情况,并且这种方法可能对患者特异性诊断和监测有用。