Bhardwaj Megha, Schöttker Ben, Holleczek Bernd, Benner Axel, Schrotz-King Petra, Brenner Hermann
Division of Clinical Epidemiology and Aging Research, German Cancer Research Center (DKFZ), 69120 Heidelberg, Germany.
Division of Preventive Oncology, German Cancer Research Center (DKFZ) and National Center for Tumor Diseases (NCT), 69120 Heidelberg, Germany.
Cancers (Basel). 2022 Apr 26;14(9):2146. doi: 10.3390/cancers14092146.
Randomized trials have demonstrated a substantial reduction in lung cancer (LC) mortality by screening heavy smokers with low-dose computed tomography (LDCT). The aim of this study was to assess if and to what extent blood-based inflammatory protein biomarkers might enhance selection of those at highest risk for LC screening. Ever smoking participants were chosen from 9940 participants, aged 50-75 years, who were followed up with respect to LC incidence for 17 years in a prospective population-based cohort study conducted in Saarland, Germany. Using proximity extension assay, 92 inflammation protein biomarkers were measured in baseline plasma samples of ever smoking participants, including 172 incident LC cases and 285 randomly selected participants free of LC. Smoothly clipped absolute deviation (SCAD) penalized regression with 0.632+ bootstrap for correction of overoptimism was applied to derive an inflammation protein biomarker score (INS) and a combined INS-pack-years score in a training set, and algorithms were further evaluated in an independent validation set. Furthermore, the performances of nine LC risk prediction models individually and in combination with inflammatory plasma protein biomarkers for predicting LC incidence were comparatively evaluated. The combined INS-pack-years score predicted LC incidence with area under the curves (AUCs) of 0.811 and 0.782 in the training and the validation sets, respectively. The addition of inflammatory plasma protein biomarkers to established nine LC risk models increased the AUCs up to 0.121 and 0.070 among ever smoking participants from training and validation sets, respectively. Our results suggest that inflammatory protein biomarkers may have potential to improve the selection of people for LC screening and thereby enhance screening efficiency.
随机试验表明,通过低剂量计算机断层扫描(LDCT)筛查重度吸烟者可大幅降低肺癌(LC)死亡率。本研究的目的是评估基于血液的炎症蛋白生物标志物是否以及在多大程度上可以优化LC筛查高危人群的选择。在德国萨尔州进行的一项基于人群的前瞻性队列研究中,从9940名年龄在50 - 75岁的参与者中选取曾经吸烟的参与者,并对其LC发病率进行了17年的随访。使用邻位延伸分析方法,在曾经吸烟参与者的基线血浆样本中检测了92种炎症蛋白生物标志物,其中包括172例LC确诊病例和285例随机选择的无LC参与者。采用平滑截断绝对偏差(SCAD)惩罚回归结合0.632 + 自抽样法校正过度乐观情况,在训练集中得出炎症蛋白生物标志物评分(INS)和INS - 吸烟包年综合评分,并在独立验证集中进一步评估算法。此外,还对九个LC风险预测模型单独以及与炎症血浆蛋白生物标志物联合预测LC发病率的性能进行了比较评估。INS - 吸烟包年综合评分在训练集和验证集中预测LC发病率的曲线下面积(AUC)分别为0.811和0.782。在已建立的九个LC风险模型中加入炎症血浆蛋白生物标志物后,训练集和验证集中曾经吸烟参与者的AUC分别提高了0.121和0.070。我们的结果表明,炎症蛋白生物标志物可能有潜力改善LC筛查人群的选择,从而提高筛查效率。