Atiş Sibel, Kanik Arzu, Ozgür Eylem Sercan, Eker Suzan, Tümkaya Münir, Ozge Cengiz
Department of Chest Diseases, Faculty of Medicine, Mersin University, Içel, Turkey.
Tuberk Toraks. 2009;57(3):289-97.
Predictive models play a pivotal role in the provision of accurate and useful probabilistic assessments of clinical outcomes in chronic diseases. This study was aimed to develop a dedicated prognostic index for quantifying progression risk in chronic obstructive pulmonary disease (COPD). Data were collected prospectively from 75 COPD patients during a three years period. A predictive model of progression risk of COPD was developed using Bayesian logistic regression analysis by Markov chain Monte Carlo method. One-year cycles were used for the disease progression in this model. Primary end points for progression were impairment in basal dyspne index (BDI) score, FEV(1) decline, and exacerbation frequency in last three years. Time-varying covariates age, smoking, body mass index (BMI), severity of disease according to GOLD, PaO2, PaCO(2), IC, RV/TLC, DLCO were used under the study. The mean age was 57.1 + or - 8.1. BDI were strongly correlated with exacerbation frequency (p= 0.001) but not with FEV(1) decline. BMI was found to be a predictor factor for impairment in BDI (p= 0.03). The following independent risk factors were significant to predict exacerbation frequency: GOLD staging (OR for GOLD I vs. II and III = 2.3 and 4.0), hypoxemia (OR for mild vs moderate and severe = 2.1 and 5.1) and hyperinflation (OR= 1.6). PaO2 (p= 0.026), IC (p= 0.02) and RV/TLC (p= 0.03) were found to be predictive factors for FEV(1) decline. The model estimated BDI, lung function and exacerbation frequency at the last time point by testing initial data of three years with 95% reliability (p< 0.001). Accordingly, this model was evaluated as confident of 95% for assessing the future status of COPD patients. Using Bayesian predictive models, it was possible to develop a risk-stratification index that accurately predicted progression of COPD. This model can provide decision-making about future in COPD patients with high reliability looking clinical data of beginning.
预测模型在提供关于慢性病临床结局的准确且有用的概率评估方面发挥着关键作用。本研究旨在开发一种专门的预后指数,以量化慢性阻塞性肺疾病(COPD)的进展风险。在三年期间前瞻性收集了75例COPD患者的数据。采用马尔可夫链蒙特卡罗方法通过贝叶斯逻辑回归分析建立了COPD进展风险的预测模型。该模型中疾病进展以一年周期计算。进展的主要终点为基础呼吸困难指数(BDI)评分受损、第一秒用力呼气容积(FEV₁)下降以及过去三年的急性加重频率。研究中使用了随时间变化的协变量,包括年龄、吸烟情况、体重指数(BMI)、根据慢性阻塞性肺疾病全球倡议(GOLD)分级的疾病严重程度、动脉血氧分压(PaO₂)、动脉血二氧化碳分压(PaCO₂)、吸气量(IC)、残气量/肺总量(RV/TLC)、一氧化碳弥散量(DLCO)。平均年龄为57.1±8.1岁。BDI与急性加重频率密切相关(p = 0.001),但与FEV₁下降无关。发现BMI是BDI受损的预测因素(p = 0.03)。以下独立危险因素对预测急性加重频率具有显著意义:GOLD分级(GOLDⅠ级与Ⅱ级和Ⅲ级相比的比值比分别为2.3和4.0)、低氧血症(轻度与中度和重度相比的比值比分别为2.1和5.1)以及肺过度充气(比值比 = 1.6)。发现PaO₂(p = 0.026)、IC(p = 0.02)和RV/TLC(p = 0.03)是FEV₁下降的预测因素。通过对三年初始数据进行测试,该模型以95%的可靠性估计了最后时间点的BDI、肺功能和急性加重频率(p < 0.001)。因此,该模型在评估COPD患者未来状况时的可信度为95%。使用贝叶斯预测模型,有可能开发出一种风险分层指数,准确预测COPD的进展。该模型能够根据起始的临床数据以高可靠性为COPD患者的未来情况提供决策依据。