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国家肺癌筛查试验中延长随访后的肺癌发病率和死亡率。

Lung Cancer Incidence and Mortality with Extended Follow-up in the National Lung Screening Trial.

出版信息

J Thorac Oncol. 2019 Oct;14(10):1732-1742. doi: 10.1016/j.jtho.2019.05.044. Epub 2019 Jun 28.

Abstract

INTRODUCTION

The National Lung Screening Trial (NLST) randomized high-risk current and former smokers to three annual screens with either low-dose computed tomography (LDCT) or chest radiography (CXR) and demonstrated a significant reduction in lung cancer mortality in the LDCT arm after a median of 6.5 years' follow-up. We report on extended follow-up of NLST subjects.

METHODS

Subjects were followed by linkage to state cancer registries and the National Death Index. The number needed to screen (NNS) to prevent one lung cancer death was computed as the reciprocal of the difference in the proportion of patients dying of lung cancer across arms. Lung cancer mortality rate ratios (RRs) were computed overall and adjusted for dilution effect, with the latter including only deaths with a corresponding diagnosis close enough to the end of protocol screening.

RESULTS

The median follow-up times were 11.3 years for incidence and 12.3 years for mortality. In all, 1701 and 1681 lung cancers were diagnosed in the LDCT and CXR arms, respectively (RR = 1.01, 95% confidence interval [CI]: 0.95-1.09). The observed numbers of lung cancer deaths were 1147 (with LDCT) versus 1236 (with CXR) (RR = 0.92, 95% CI: 0.85-1.00). The difference in the number of patients dying of lung cancer (per 1000) across arms was 3.3, translating into an NNS of 303, which is similar to the original NNS estimate of around 320. The dilution-adjusted lung cancer mortality RR was 0.89 (95% CI: 0.80-0.997). With regard to overall mortality, there were 5253 (with LDCT) and 5366 (with CXR) deaths, for a difference across arms (per 1000) of 4.2 (95% CI: -2.6 to 10.9).

CONCLUSION

Extended follow-up of the NLST showed an NNS similar to that of the original analysis. There was no overall increase in lung cancer incidence in the LDCT arm versus in the CXR arm.

摘要

简介

国家肺癌筛查试验(NLST)将高危的现吸烟者和前吸烟者随机分为三组,分别接受每年三次低剂量计算机断层扫描(LDCT)或胸部 X 光检查(CXR)筛查,中位随访 6.5 年后,LDCT 组的肺癌死亡率显著降低。我们报告了 NLST 受试者的延长随访结果。

方法

通过与州癌症登记处和国家死亡指数的链接对受试者进行随访。计算每筛查一千人可预防一例肺癌死亡的人数(NNS),其方法是计算两组中死于肺癌的患者比例差异的倒数。总体计算肺癌死亡率比(RR),并进行稀释效应调整,后者仅包括与协议筛查结束时间足够接近的诊断对应的死亡。

结果

发病率的中位随访时间为 11.3 年,死亡率的中位随访时间为 12.3 年。在 LDCT 和 CXR 组中,分别诊断出 1701 例和 1681 例肺癌(RR=1.01,95%置信区间[CI]:0.95-1.09)。观察到的肺癌死亡人数为 1147 例(LDCT 组)与 1236 例(CXR 组)(RR=0.92,95%CI:0.85-1.00)。两组间死于肺癌的患者数量差异为 3.3,相当于 NNS 为 303,与最初的 NNS 估计值(约 320)相似。经过稀释调整后的肺癌死亡率 RR 为 0.89(95%CI:0.80-0.997)。关于总体死亡率,LDCT 组有 5253 例死亡,CXR 组有 5366 例死亡,两组间差异(每 1000 人)为 4.2(95%CI:-2.6 至 10.9)。

结论

NLST 的延长随访显示 NNS 与原始分析相似。LDCT 组的肺癌发病率与 CXR 组相比没有总体增加。

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