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泛癌种肺癌风险预测模型的预测准确性——基于丹麦肺癌筛查试验CT的外部验证

Predictive Accuracy of the PanCan Lung Cancer Risk Prediction Model -External Validation based on CT from the Danish Lung Cancer Screening Trial.

作者信息

Winkler Wille Mathilde M, van Riel Sarah J, Saghir Zaigham, Dirksen Asger, Pedersen Jesper Holst, Jacobs Colin, Thomsen Laura Hohwü, Scholten Ernst Th, Skovgaard Lene T, van Ginneken Bram

机构信息

Department of Respiratory Medicine, Gentofte Hospital, Kildegårdsvej 28, Opg.1D, st.th., DK-2900, Hellerup, Denmark,

出版信息

Eur Radiol. 2015 Oct;25(10):3093-9. doi: 10.1007/s00330-015-3689-0. Epub 2015 Mar 13.

Abstract

OBJECTIVES

Lung cancer risk models should be externally validated to test generalizability and clinical usefulness. The Danish Lung Cancer Screening Trial (DLCST) is a population-based prospective cohort study, used to assess the discriminative performances of the PanCan models.

METHODS

From the DLCST database, 1,152 nodules from 718 participants were included. Parsimonious and full PanCan risk prediction models were applied to DLCST data, and also coefficients of the model were recalculated using DLCST data. Receiver operating characteristics (ROC) curves and area under the curve (AUC) were used to evaluate risk discrimination.

RESULTS

AUCs of 0.826-0.870 were found for DLCST data based on PanCan risk prediction models. In the DLCST, age and family history were significant predictors (p = 0.001 and p = 0.013). Female sex was not confirmed to be associated with higher risk of lung cancer; in fact opposing effects of sex were observed in the two cohorts. Thus, female sex appeared to lower the risk (p = 0.047 and p = 0.040) in the DLCST.

CONCLUSIONS

High risk discrimination was validated in the DLCST cohort, mainly determined by nodule size. Age and family history of lung cancer were significant predictors and could be included in the parsimonious model. Sex appears to be a less useful predictor.

KEY POINTS

• High accuracy in logistic modelling for lung cancer risk stratification of nodules. • Lung cancer risk prediction is primarily based on size of pulmonary nodules. • Nodule spiculation, age and family history of lung cancer are significant predictors. • Sex does not appear to be a useful risk predictor.

摘要

目的

肺癌风险模型应进行外部验证,以检验其普遍性和临床实用性。丹麦肺癌筛查试验(DLCST)是一项基于人群的前瞻性队列研究,用于评估泛癌模型的判别性能。

方法

从DLCST数据库中纳入了718名参与者的1152个结节。将简约和完整的泛癌风险预测模型应用于DLCST数据,并使用DLCST数据重新计算模型系数。采用受试者工作特征(ROC)曲线和曲线下面积(AUC)来评估风险判别能力。

结果

基于泛癌风险预测模型的DLCST数据的AUC为0.826 - 0.870。在DLCST中,年龄和家族史是显著的预测因素(p = 0.001和p = 0.013)。未证实女性性别与肺癌风险较高相关;事实上,在两个队列中观察到了性别的相反作用。因此,在DLCST中女性性别似乎降低了风险(p = 0.047和p = 0.040)。

结论

在DLCST队列中验证了高风险判别能力,主要由结节大小决定。年龄和肺癌家族史是显著的预测因素,可纳入简约模型。性别似乎是一个不太有用的预测因素。

关键点

• 肺癌结节风险分层的逻辑模型具有高精度。• 肺癌风险预测主要基于肺结节大小。• 结节毛刺、年龄和肺癌家族史是显著的预测因素。• 性别似乎不是一个有用的风险预测因素。

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