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纳入肺功能的肺癌风险预测模型:在英国生物库前瞻性队列研究中的建立和验证。

Lung Cancer Risk Prediction Model Incorporating Lung Function: Development and Validation in the UK Biobank Prospective Cohort Study.

机构信息

David C. Muller, Mattias Johansson, and Paul Brennan, International Agency for Research on Cancer, Lyon, France; David C. Muller, Imperial College London, London, United Kingdom.

出版信息

J Clin Oncol. 2017 Mar 10;35(8):861-869. doi: 10.1200/JCO.2016.69.2467. Epub 2017 Jan 17.

DOI:10.1200/JCO.2016.69.2467
PMID:28095156
Abstract

Purpose Several lung cancer risk prediction models have been developed, but none to date have assessed the predictive ability of lung function in a population-based cohort. We sought to develop and internally validate a model incorporating lung function using data from the UK Biobank prospective cohort study. Methods This analysis included 502,321 participants without a previous diagnosis of lung cancer, predominantly between 40 and 70 years of age. We used flexible parametric survival models to estimate the 2-year probability of lung cancer, accounting for the competing risk of death. Models included predictors previously shown to be associated with lung cancer risk, including sex, variables related to smoking history and nicotine addiction, medical history, family history of lung cancer, and lung function (forced expiratory volume in 1 second [FEV1]). Results During accumulated follow-up of 1,469,518 person-years, there were 738 lung cancer diagnoses. A model incorporating all predictors had excellent discrimination (concordance (c)-statistic [95% CI] = 0.85 [0.82 to 0.87]). Internal validation suggested that the model will discriminate well when applied to new data (optimism-corrected c-statistic = 0.84). The full model, including FEV1, also had modestly superior discriminatory power than one that was designed solely on the basis of questionnaire variables (c-statistic = 0.84 [0.82 to 0.86]; optimism-corrected c-statistic = 0.83; p = 3.4 × 10). The full model had better discrimination than standard lung cancer screening eligibility criteria (c-statistic = 0.66 [0.64 to 0.69]). Conclusion A risk prediction model that includes lung function has strong predictive ability, which could improve eligibility criteria for lung cancer screening programs.

摘要

目的

已经开发出了几种肺癌风险预测模型,但迄今为止,没有一种模型评估过基于人群的队列中肺功能的预测能力。我们试图利用英国生物库前瞻性队列研究的数据,开发并内部验证一个包含肺功能的模型。

方法

本分析纳入了 502321 名无先前肺癌诊断的参与者,主要年龄在 40 至 70 岁之间。我们使用灵活的参数生存模型来估计 2 年内肺癌的发病概率,同时考虑到死亡的竞争风险。模型纳入了先前显示与肺癌风险相关的预测因素,包括性别、与吸烟史和尼古丁成瘾相关的变量、病史、肺癌家族史和肺功能(1 秒用力呼气量 [FEV1])。

结果

在累积随访 1469518 人年期间,有 738 例肺癌诊断。包含所有预测因素的模型具有出色的区分度(一致性(c)-统计量[95%CI]为 0.85[0.82 至 0.87])。内部验证表明,当应用于新数据时,该模型将具有良好的区分度(校正后的乐观 c-统计量=0.84)。包含 FEV1 的全模型也具有比仅基于问卷变量设计的模型稍高的区分能力(c-统计量=0.84[0.82 至 0.86];校正后的乐观 c-统计量=0.83;p=3.4×10)。全模型比标准的肺癌筛查资格标准具有更好的区分能力(c-统计量=0.66[0.64 至 0.69])。

结论

包含肺功能的风险预测模型具有很强的预测能力,这可能会改善肺癌筛查计划的资格标准。

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