Department of Radiology, University Medical Center Utrecht, Utrecht, The Netherlands.
JACC Cardiovasc Imaging. 2013 Aug;6(8):899-907. doi: 10.1016/j.jcmg.2013.02.008. Epub 2013 Jun 13.
The aim of this study was to derivate and validate a prediction model for cardiovascular events based on quantification of coronary and aortic calcium volume in lung cancer screening chest computed tomography (CT).
CT-based lung cancer screening in heavy smokers is a very timely topic. Given that the heavily smoking screening population is also at risk for cardiovascular disease, CT-based screening may provide the opportunity to additionally identify participants at high cardiovascular risk.
Inspiratory screening CT of the chest was obtained in 3,648 screening participants. Next, smoking characteristics, patient demographics, and physician-diagnosed cardiovascular events were collected from 10 years before the screening CT (i.e., cardiovascular history) until 3 years after the screening CT (i.e., follow-up time). Cox proportional hazards analysis was used to derivate and validate a prediction model for cardiovascular risk. Age, smoking status, smoking history, and cardiovascular history, together with automatically quantified coronary and aortic calcium volume from the screening CT, were included as independent predictors. The primary outcome measure was the discriminatory value of the model.
Incident cardiovascular events occurred in 145 of 1,834 males (derivation cohort) and 118 of 1,725 males and 2 of 89 females (validation cohort). The model showed good discrimination in the validation cohort with a C-statistic of 0.71 (95% confidence interval: 0.67 to 0.76). When high risk was defined as a 3-year risk of 6% and higher, 589 of 1,725 males were regarded as high risk and 72 of 118 of all events were correctly predicted by the model.
Quantification of coronary and aortic calcium volumes in lung cancer screening CT images-information that is readily available-can be used to predict cardiovascular risk. Such an approach might prove useful in the reduction of cardiovascular morbidity and mortality and may enhance the cost-effectiveness of CT-based screening in heavy smokers.
本研究旨在基于肺癌筛查胸部 CT 中冠状动脉和主动脉钙体积的定量分析,建立并验证心血管事件的预测模型。
在大量吸烟者中进行 CT 筛查肺癌是一个非常及时的话题。鉴于大量吸烟筛查人群也存在心血管疾病风险,CT 筛查可能提供机会来额外识别高心血管风险的参与者。
对 3648 例筛查参与者进行吸气期胸部筛查 CT。接下来,从筛查 CT 前 10 年(即心血管病史)到筛查 CT 后 3 年(即随访时间),收集了吸烟特征、患者人口统计学特征和医生诊断的心血管事件。使用 Cox 比例风险分析来推导和验证心血管风险的预测模型。年龄、吸烟状态、吸烟史以及心血管病史,以及来自筛查 CT 的自动量化的冠状动脉和主动脉钙体积,被纳入为独立预测因子。主要结局测量指标为模型的判别价值。
1834 例男性中的 145 例(推导队列)和 1725 例男性中的 118 例及 89 例女性中的 2 例发生了心血管事件。该模型在验证队列中具有良好的判别能力,C 统计量为 0.71(95%置信区间:0.67 至 0.76)。当高风险定义为 3 年风险 6%及以上时,1725 例男性中有 589 例被视为高风险,且模型正确预测了所有事件中的 118 例中的 72 例。
肺癌筛查 CT 图像中冠状动脉和主动脉钙体积的量化——这些信息是现成的——可用于预测心血管风险。这种方法可能有助于降低心血管发病率和死亡率,并可能增强 CT 筛查在大量吸烟者中的成本效益。