Hu Xiang-Lin, Xu Song-Tao, Wang Xiao-Cen, Luo Jin-Long, Hou Dong-Ni, Zhang Xiao-Min, Bao Chen, Yang Dong, Song Yuan-Lin, Bai Chun-Xue
1Department of Pulmonary Medicine, Zhongshan Hospital, Fudan University, 180 Fenglin Road, Shanghai, 200032 China.
2Department of Thoracic Surgery, Zhongshan Hospital, Fudan University, Shanghai, China.
EPMA J. 2019 May 8;10(2):173-183. doi: 10.1007/s13167-019-00168-z. eCollection 2019 Jun.
In the era of fast track surgery, early and accurately estimating whether postoperative length of stay (p-LOS) will be prolonged after lung cancer surgery is very important, both for patient's discharge planning and hospital bed management. Pulmonary function tests (PFTs) are very valuable routine examinations which should not be underutilized before lung cancer surgery. Thus, this study aimed to establish an accurate but simple prediction tool, based on PFTs, for achieving a personalized prediction of prolonged p-LOS in patients following lung resection.
The medical information of 1257 patients undergoing lung cancer surgery were retrospectively reviewed and served as the training set. p-LOS exceeding the third quartile value was considered prolonged. Using logistic regression analyses, potential predictors of prolonged p-LOS were identified among various preoperative factors containing PFTs and intraoperative factors. A nomogram was constructed and subjected to internal and external validation.
Five independent risk factors for prolonged p-LOS were identified, including older age, being male, and ratio of residual volume to total lung capacity (RV/TLC) ≥ 45.0% which is the only modifiable risk factor, more invasive surgical approach, and surgical type. The nomogram comprised of these five predictors exhibited sufficient predictive accuracy, with the area under the receiver operating characteristic curve (AUC) of 0.76 [95% confidence interval (CI) 0.73-0.79] in the internal validation. Also its predictive performance remained fine in the external validation, with the AUC of 0.70 (95% CI 0.60-0.79). The calibration curves showed satisfactory agreements between the model predicted probability and the actually observed probability.
Preoperative amelioration of RV/TLC may prevent lung cancer patients from unnecessary prolonged p-LOS. The integrated nomogram we developed could provide personalized risk prediction of prolonged p-LOS. This prediction tool may help patients perceive expected hospital stays and enable clinicians to achieve better bed management after lung cancer surgery.
在快速康复外科时代,早期准确预估肺癌手术后住院时间(p-LOS)是否会延长,对于患者出院计划和医院床位管理都非常重要。肺功能测试(PFTs)是非常有价值的常规检查,在肺癌手术前不应被忽视。因此,本研究旨在基于肺功能测试建立一种准确且简单的预测工具,以实现对肺切除术后患者p-LOS延长的个性化预测。
回顾性分析1257例接受肺癌手术患者的医疗信息,作为训练集。p-LOS超过第三个四分位数被视为延长。通过逻辑回归分析,在包括肺功能测试和术中因素在内的各种术前因素中确定p-LOS延长的潜在预测因素。构建列线图并进行内部和外部验证。
确定了p-LOS延长的五个独立危险因素,包括年龄较大、男性、残气量与肺总量之比(RV/TLC)≥45.0%(这是唯一可改变的危险因素)、更具侵入性的手术方式和手术类型。由这五个预测因素组成的列线图显示出足够的预测准确性,内部验证中受试者工作特征曲线(AUC)下面积为0.76 [95%置信区间(CI)0.73 - 0.79]。其预测性能在外部验证中也保持良好,AUC为0.70(95% CI 0.60 - 0.79)。校准曲线显示模型预测概率与实际观察概率之间具有令人满意的一致性。
术前改善RV/TLC可能防止肺癌患者出现不必要的p-LOS延长。我们开发的综合列线图可以提供p-LOS延长的个性化风险预测。这种预测工具可能有助于患者了解预期住院时间,并使临床医生在肺癌手术后实现更好的床位管理。