Division of Pulmonary, Critical Care, and Sleep Medicine, University of Florida College of Medicine, Gainesville, FL.
Department of Radiology and Radiological Sciences, Department of Medicine, Medical University of South Carolina, Charleston, SC.
Chest. 2014 Mar 1;145(3):464-472. doi: 10.1378/chest.13-0708.
An estimated 150,000 pulmonary nodules are identified each year, and the number is likely to increase given the results of the National Lung Screening Trial. Decision tools are needed to help with the management of such pulmonary nodules. We examined whether adding any of three novel functions of nodule volume improves the accuracy of an existing malignancy prediction model of CT scan-detected nodules.
Swensen's 1997 prediction model was used to estimate the probability of malignancy in CT scan-detected nodules identified from a sample of 221 patients at the Medical University of South Carolina between 2006 and 2010. Three multivariate logistic models that included a novel function of nodule volume were used to investigate the added predictive value. Several measures were used to evaluate model classification performance.
With use of a 0.5 cutoff associated with predicted probability, the Swensen model correctly classified 67% of nodules. The three novel models suggested that the addition of nodule volume enhances the ability to correctly predict malignancy; 83%, 88%, and 88% of subjects were correctly classified as having malignant or benign nodules, with significant net improved reclassification for each (P<.0001). All three models also performed well based on Nagelkerke R2, discrimination slope, area under the receiver operating characteristic curve, and Hosmer-Lemeshow calibration test.
The findings demonstrate that the addition of nodule volume to existing malignancy prediction models increases the proportion of nodules correctly classified. This enhanced tool will help clinicians to risk stratify pulmonary nodules more effectively.
每年大约有 15 万个肺部结节被发现,而且考虑到全国肺癌筛查试验的结果,这个数字可能还会增加。需要决策工具来帮助管理这些肺部结节。我们研究了在 CT 扫描检测到的结节中,增加结节体积的三个新功能是否可以提高现有恶性肿瘤预测模型的准确性。
我们使用 Swensen 1997 年的预测模型来估计 2006 年至 2010 年期间在南卡罗来纳医科大学的 221 名患者的 CT 扫描检测到的结节的恶性肿瘤概率。我们使用三个包含结节体积新功能的多变量逻辑模型来研究附加预测价值。我们使用了几种方法来评估模型的分类性能。
使用与预测概率相关的 0.5 临界值,Swensen 模型正确分类了 67%的结节。三个新模型表明,增加结节体积可以提高正确预测恶性肿瘤的能力;83%、88%和 88%的患者被正确分类为患有恶性或良性结节,且每个模型的重新分类效果均有显著提高(P<.0001)。基于 Nagelkerke R2、判别斜率、接受者操作特征曲线下面积和 Hosmer-Lemeshow 校准检验,所有三个模型的表现也都很好。
这些发现表明,将结节体积加入到现有的恶性肿瘤预测模型中可以增加正确分类的结节比例。这种增强工具将帮助临床医生更有效地对肺结节进行风险分层。