Mao Xiaowei, Zhang Wei, Ni Yi-Qian, Niu Yanjie, Jiang Li-Yan
Pulmonary and Critical Care Medicine, Shanghai Jiao Tong University, Shanghai Chest Hospital, Shanghai, People's Republic of China.
Pulmonary and Critical Care Medicine, Sir Run Run Shaw Hospital, School of Medicine, Zhejiang University, Hangzhou, People's Republic of China.
J Multidiscip Healthc. 2021 Nov 15;14:3187-3194. doi: 10.2147/JMDH.S327285. eCollection 2021.
Most patients with lung cancer have impaired pulmonary function. Single pulmonary function parameters have been suggested as good indices for predicting postoperative pulmonary complications (PPC). The purpose of this retrospective study was to construct a prediction model, including more than one pulmonary function parameter, for better prediction of PPC in patients with lung cancer and impaired pulmonary function.
Our database of patients who underwent lung resection for non-small cell lung cancer was reviewed and those with impaired pulmonary function were enrolled. Clinical data, including PPC, were recorded. Univariate and logistic regression analyses were applied to explore potential predictors and a prediction model constructed based on the results of logistic regression.
Patients with impaired pulmonary function (n = 124) were enrolled. Most patients were male, current smokers, >60 years old, and had adenocarcinoma and mild ventilatory dysfunction or diffusion dysfunction. In univariate analysis, we identified six pulmonary function parameters that differed significantly between the PPC and non-PPC groups. Receiver operating characteristic curves were used to determine the best cutoff values. In logistic regression, only forced expiratory volume in 1 second/forced vital capacity (FEV1/FVC%), peak expiratory flow (PEF%), and post predictive operation (ppo)-FEV1% remained significant. Based on these results, we constructed a prediction model for PPC including FEV1/FVC%, PEF%, and ppo-FEV1%, which had an good diagnostic performance of, with 76.7% sensitivity and 67.6% specificity.
Our prediction model, including the pulmonary function parameters, FEV1/FVC%, PEF%, and ppo-FEV1%, shows excellent performance for predicting PPC in patients with lung cancer and impaired pulmonary function following resection, and has potential for wide application in clinical practice.
大多数肺癌患者存在肺功能受损。单一肺功能参数已被认为是预测术后肺部并发症(PPC)的良好指标。本回顾性研究的目的是构建一个包含多个肺功能参数的预测模型,以更好地预测肺癌且肺功能受损患者的PPC。
回顾了我们数据库中接受非小细胞肺癌肺切除术的患者,纳入肺功能受损的患者。记录包括PPC在内的临床数据。应用单因素和逻辑回归分析来探索潜在预测因素,并根据逻辑回归结果构建预测模型。
纳入124例肺功能受损患者。大多数患者为男性、当前吸烟者、年龄>60岁,患有腺癌且有轻度通气功能障碍或弥散功能障碍。在单因素分析中,我们确定了PPC组和非PPC组之间有显著差异的六个肺功能参数。采用受试者工作特征曲线确定最佳临界值。在逻辑回归中,仅1秒用力呼气量/用力肺活量(FEV1/FVC%)、呼气峰值流速(PEF%)和术后预测值(ppo)-FEV1%仍具有显著性。基于这些结果,我们构建了一个包含FEV1/FVC%、PEF%和ppo-FEV1%的PPC预测模型,其诊断性能良好,敏感性为76.7%,特异性为67.6%。
我们的预测模型,包括肺功能参数FEV1/FVC%、PEF%和ppo-FEV1%,在预测肺癌且肺功能受损患者切除术后的PPC方面表现优异,具有在临床实践中广泛应用的潜力。