Georgetown University Medical Center, Washington, DC 20007, USA.
J Natl Cancer Inst. 2012 Nov 7;104(21):1647-59. doi: 10.1093/jnci/djs398. Epub 2012 Oct 26.
The impact of lung cancer screening on smoking behavior is unclear. The aims of this ancillary study of the Prostate Lung Colorectal and Ovarian Cancer Screening Trial were to produce risk prediction models to identify individuals at risk of relapse or continued smoking and to evaluate whether cancer-screening variables affect long-term smoking outcomes.
Participants completed a baseline questionnaire at trial enrollment and a supplemental questionnaire 4-14 years after enrollment, which assessed several cancer-related variables, including family history of cancer, comorbidities, and tobacco use. Multivariable logistic regression models were used to predict smoking status at completion of the supplemental questionnaire. The models' predictive performances were evaluated by assessing discrimination via the receiver operator characteristic area under the curve (ROC AUC) and calibration. Models were internally validated using bootstrap methods.
Of the 31 694 former smokers on the baseline questionnaire, 1042 (3.3%) had relapsed (ie, reported being a current smoker on the supplemental questionnaire). Of the 6807 current smokers on the baseline questionnaire, 4439 (65.2%) reported continued smoking on the supplemental questionnaire. Relapse was associated with multiple demographic, medical, and tobacco-related characteristics. This model had a bootstrap median ROC AUC of 0.862 (95% confidence interval [CI] = 0.858 to 0.866) and a calibration slope of 1.004 (95% CI = 0.978 to 1.029), indicating excellent discrimination and calibration. Predictors of continued smoking also included multiple demographic, medical, and tobacco-related characteristics. This model had an ROC AUC of 0.611 (95% CI = 0.605 to 0.614) and a slope of 1.006 (95% CI = 0.962 to 1.041), indicating modest discrimination. Neither the trial arm nor the lung-screening result was statistically significantly associated with smoking outcomes.
These models, if validated externally, may have public health utility in identifying individuals at risk for adverse smoking outcomes, who may benefit from relapse prevention and smoking cessation interventions.
肺癌筛查对吸烟行为的影响尚不清楚。本项前列腺癌、肺癌、结直肠癌和卵巢癌筛查试验的辅助研究旨在建立风险预测模型,以识别有复发或继续吸烟风险的个体,并评估癌症筛查变量是否会影响长期吸烟结局。
参与者在试验入组时完成基线问卷,入组后 4-14 年完成补充问卷,评估了几种与癌症相关的变量,包括癌症家族史、合并症和烟草使用情况。采用多变量逻辑回归模型预测补充问卷完成时的吸烟状况。通过评估受试者工作特征曲线下面积(ROC AUC)和校准来评估模型的预测性能。采用自举方法对内部分值模型进行验证。
在基线问卷中有吸烟史的 31 694 名前吸烟者中,有 1042 名(3.3%)复发(即在补充问卷中报告为当前吸烟者)。在基线问卷中有吸烟史的 6807 名当前吸烟者中,有 4439 名(65.2%)报告在补充问卷中继续吸烟。复发与多种人口统计学、医学和烟草相关特征有关。该模型的自举中位数 ROC AUC 为 0.862(95%置信区间 [CI] = 0.858-0.866),校准斜率为 1.004(95% CI = 0.978-1.029),表明具有良好的判别力和校准度。继续吸烟的预测因素还包括多种人口统计学、医学和烟草相关特征。该模型的 ROC AUC 为 0.611(95% CI = 0.605-0.614),斜率为 1.006(95% CI = 0.962-1.041),表明判别力适中。试验臂和肺部筛查结果均与吸烟结局无统计学显著关联。
如果这些模型能够在外部得到验证,它们可能具有公共卫生实用价值,可以识别有不良吸烟结局风险的个体,这些个体可能受益于复发预防和戒烟干预。