Dept of Radiology, Nuclear Medicine, and Anatomy, Radboud University Medical Center, Nijmegen, The Netherlands
Dept of Radiology, Nuclear Medicine, and Anatomy, Radboud University Medical Center, Nijmegen, The Netherlands.
Eur Respir J. 2021 Sep 2;58(3). doi: 10.1183/13993003.03386-2020. Print 2021 Sep.
Combined assessment of cardiovascular disease (CVD), COPD and lung cancer may improve the effectiveness of lung cancer screening in smokers. The aims were to derive and assess risk models for predicting lung cancer incidence, CVD mortality and COPD mortality by combining quantitative computed tomography (CT) measures from each disease, and to quantify the added predictive benefit of self-reported patient characteristics given the availability of a CT scan.
A survey model (patient characteristics only), CT model (CT information only) and final model (all variables) were derived for each outcome using parsimonious Cox regression on a sample from the National Lung Screening Trial (n=15 000). Validation was performed using Multicentric Italian Lung Detection data (n=2287). Time-dependent measures of model discrimination and calibration are reported.
Age, mean lung density, emphysema score, bronchial wall thickness and aorta calcium volume are variables that contributed to all final models. Nodule features were crucial for lung cancer incidence predictions but did not contribute to CVD and COPD mortality prediction. In the derivation cohort, the lung cancer incidence CT model had a 5-year area under the receiver operating characteristic curve of 82.5% (95% CI 80.9-84.0%), significantly inferior to that of the final model (84.0%, 82.6-85.5%). However, the addition of patient characteristics did not improve the lung cancer incidence model performance in the validation cohort (CT model 80.1%, 74.2-86.0%; final model 79.9%, 73.9-85.8%). Similarly, the final CVD mortality model outperformed the other two models in the derivation cohort (survey model 74.9%, 72.7-77.1%; CT model 76.3%, 74.1-78.5%; final model 79.1%, 77.0-81.2%), but not the validation cohort (survey model 74.8%, 62.2-87.5%; CT model 72.1%, 61.1-83.2%; final model 72.2%, 60.4-84.0%). Combining patient characteristics and CT measures provided the largest increase in accuracy for the COPD mortality final model (92.3%, 90.1-94.5%) compared to either other model individually (survey model 87.5%, 84.3-90.6%; CT model 87.9%, 84.8-91.0%), but no external validation was performed due to a very low event frequency.
CT measures of CVD and COPD provides small but reproducible improvements to nodule-based lung cancer risk prediction accuracy from 3 years onwards. Self-reported patient characteristics may not be of added predictive value when CT information is available.
综合评估心血管疾病(CVD)、COPD 和肺癌,可能会提高吸烟者肺癌筛查的效果。本研究旨在通过结合每种疾病的定量计算机断层扫描(CT)指标,得出并评估预测肺癌发病率、CVD 死亡率和 COPD 死亡率的风险模型,并评估在提供 CT 扫描的情况下,自我报告的患者特征的附加预测价值。
在全国肺癌筛查试验(n=15000)的样本中,使用简约 Cox 回归分别为每个结局构建了调查模型(仅患者特征)、CT 模型(仅 CT 信息)和最终模型(所有变量)。使用多中心意大利肺癌检测数据(n=2287)进行验证。报告了模型区分度和校准的时间依赖性度量。
年龄、平均肺密度、肺气肿评分、支气管壁厚度和主动脉钙体积是所有最终模型的共同变量。结节特征对于肺癌发病率预测至关重要,但对 CVD 和 COPD 死亡率预测没有贡献。在推导队列中,肺癌发生率 CT 模型的 5 年受试者工作特征曲线下面积为 82.5%(95%CI 80.9-84.0%),显著低于最终模型(84.0%,82.6-85.5%)。然而,在验证队列中,添加患者特征并没有提高肺癌发生率模型的性能(CT 模型 80.1%,74.2-86.0%;最终模型 79.9%,73.9-85.8%)。同样,最终 CVD 死亡率模型在推导队列中优于其他两个模型(调查模型 74.9%,72.7-77.1%;CT 模型 76.3%,74.1-78.5%;最终模型 79.1%,77.0-81.2%),但在验证队列中并非如此(调查模型 74.8%,62.2-87.5%;CT 模型 72.1%,61.1-83.2%;最终模型 72.2%,60.4-84.0%)。与单独使用任何一种模型相比,将患者特征与 CT 测量值相结合,为 COPD 死亡率最终模型提供了最大的准确性提高(92.3%,90.1-94.5%),而其他模型分别为(调查模型 87.5%,84.3-90.6%;CT 模型 87.9%,84.8-91.0%),但由于事件频率非常低,没有进行外部验证。
CVD 和 COPD 的 CT 测量值可从 3 年后开始,对基于结节的肺癌风险预测准确性进行微小但可重复的改善。当提供 CT 信息时,自我报告的患者特征可能没有额外的预测价值。