Improving Lung Cancer Screening Selection: The HUNT Lung Cancer Risk Model for Ever-Smokers Versus the NELSON and 2021 United States Preventive Services Task Force Criteria in the Cohort of Norway: A Population-Based Prospective Study

IF 3 Q2 ONCOLOGY
Olav Toai Duc Nguyen MD , Ioannis Fotopoulos MS , Maria Markaki PhD , Ioannis Tsamardinos PhD , Vincenzo Lagani PhD , Oluf Dimitri Røe PhD
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引用次数: 0

Abstract

Background

Improving the method for selecting participants for lung cancer (LC) screening is an urgent need. Here, we compared the performance of the Helseundersøkelsen i Nord-Trøndelag (HUNT) Lung Cancer Model (HUNT LCM) versus the Dutch-Belgian lung cancer screening trial (Nederlands-Leuvens Longkanker Screenings Onderzoek (NELSON)) and 2021 United States Preventive Services Task Force (USPSTF) criteria regarding LC risk prediction and efficiency.

Methods

We used linked data from 10 Norwegian prospective population-based cohorts, Cohort of Norway. The study included 44,831 ever-smokers, of which 686 (1.5%) patients developed LC; the median follow-up time was 11.6 years (0.01–20.8 years).

Results

Within 6 years, 222 (0.5%) individuals developed LC. The NELSON and 2021 USPSTF criteria predicted 37.4% and 59.5% of the LC cases, respectively. By considering the same number of individuals as the NELSON and 2021 USPSTF criteria selected, the HUNT LCM increased the LC prediction rate by 41.0% and 12.1%, respectively. The HUNT LCM significantly increased sensitivity (p < 0.001 and p = 0.028), and reduced the number needed to predict one LC case (29 versus 40, p < 0.001 and 36 versus 40, p = 0.02), respectively. Applying the HUNT LCM 6-year 0.98% risk score as a cutoff (14.0% of ever-smokers) predicted 70.7% of all LC, increasing LC prediction rate with 89.2% and 18.9% versus the NELSON and 2021 USPSTF, respectively (both p < 0.001).

Conclusions

The HUNT LCM was significantly more efficient than the NELSON and 2021 USPSTF criteria, improving the prediction of LC diagnosis, and may be used as a validated clinical tool for screening selection.

改进肺癌筛查选择:挪威队列(CONOR)中针对长期吸烟者的 HUNT 肺癌风险模型与 NELSON 和 2021 USPSTF 标准的比较,一项基于人群的前瞻性研究
背景迫切需要改进肺癌筛查参与者的选择方法。在此,我们比较了Helseundersøkelsen i Nord-Trøndelag(HUNT)肺癌模型(HUNT LCM)与荷兰-比利时肺癌筛查试验(Nederlands-Leuvens Longkanker Screenings Onderzoek (NELSON))和2021年美国预防服务工作组(USPSTF)标准在肺癌风险预测和效率方面的表现。结果6年内,222人(0.5%)罹患LC。NELSON和2021 USPSTF标准分别预测了37.4%和59.5%的LC病例。通过考虑与 NELSON 和 2021 USPSTF 标准所选人数相同的个体,HUNT LCM 将 LC 预测率分别提高了 41.0% 和 12.1%。HUNT LCM 显著提高了灵敏度(p < 0.001 和 p = 0.028),并减少了预测一个 LC 病例所需的人数(29 对 40,p < 0.001 和 36 对 40,p = 0.02)。将 HUNT LCM 6 年 0.98% 的风险评分作为临界值(14.0% 的曾经吸烟者)可预测 70.7% 的 LC,与 NELSON 和 2021 USPSTF 相比,LC 预测率分别提高了 89.2% 和 18.9%(均为 p < 0.001)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
4.20
自引率
0.00%
发文量
145
审稿时长
19 weeks
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