Department of Clinical Research and Molecular Medicine, Norwegian University of Science and Technology (NTNU), Prinsesse Kristinas gate. 1, Trondheim, NO, 7030, Norway.
Levanger Hospital, Nord-Trøndelag Hospital Trust, Cancer Clinic, Kirkegata 2, Levanger, NO, 7600, Norway.
J Cancer Res Clin Oncol. 2024 Aug 12;150(8):389. doi: 10.1007/s00432-024-05909-w.
The HUNT Lung Cancer Model (HUNT LCM) predicts individualized 6-year lung cancer (LC) risk among individuals who ever smoked cigarettes with high precision based on eight clinical variables. Can the performance be improved by adding genetic information?
A polygenic model was developed in the prospective Norwegian HUNT2 study with clinical and genotype data of individuals who ever smoked cigarettes (n = 30749, median follow up 15.26 years) where 160 LC were diagnosed within six years. It included the variables of the original HUNT LCM plus 22 single nucleotide polymorphisms (SNPs) highly associated with LC. External validation was performed in the prospective Norwegian Tromsø Study (n = 2663).
The novel HUNT Lung-SNP model significantly improved risk ranking of individuals over the HUNT LCM in both HUNT2 (p < 0.001) and Tromsø (p < 0.05) cohorts. Furthermore, detection rate (number of participants selected to detect one LC case) was significantly better for the HUNT Lung-SNP vs. HUNT LCM in both cohorts (42 vs. 48, p = 0.003 and 11 vs. 14, p = 0.025, respectively) as well as versus the NLST, NELSON and 2021 USPSTF criteria. The area under the receiver operating characteristic curve (AUC) was higher for the HUNT Lung-SNP in both cohorts, but significant only in HUNT2 (AUC 0.875 vs. 0.844, p < 0.001). However, the integrated discrimination improvement index (IDI) indicates a significant improvement of LC risk stratification by the HUNT Lung-SNP in both cohorts (IDI 0.019, p < 0.001 (HUNT2) and 0.013, p < 0.001 (Tromsø)).
The HUNT Lung-SNP model could have a clinical impact on LC screening and has the potential to replace the HUNT LCM as well as the NLST, NELSON and 2021 USPSTF criteria in a screening setting. However, the model should be further validated in other populations and evaluated in a prospective trial setting.
HUNT 肺癌模型(HUNT LCM)可以根据 8 个临床变量,为曾经吸烟的个体提供高精度的个体化 6 年肺癌(LC)风险预测。通过添加遗传信息,是否可以提高其性能?
在前瞻性挪威 HUNT2 研究中,基于临床和基因型数据,开发了一个多基因模型,该模型包括曾经吸烟的个体(n=30749,中位随访时间为 15.26 年),其中 160 例在 6 年内被诊断为 LC。该模型包含原始 HUNT LCM 的变量,以及与 LC 高度相关的 22 个单核苷酸多态性(SNP)。外部验证在前瞻性挪威特罗姆瑟研究(n=2663)中进行。
在 HUNT2(p<0.001)和特罗姆瑟(p<0.05)队列中,新的 HUNT 肺癌-SNP 模型在个体风险排序方面明显优于 HUNT LCM。此外,在两个队列中,HUNT Lung-SNP 模型的检出率(检出一个 LC 病例所需的参与者人数)明显优于 HUNT LCM(42 比 48,p=0.003 和 11 比 14,p=0.025),以及与 NLST、NELSON 和 2021 USPSTF 标准相比。在两个队列中,HUNT Lung-SNP 的受试者工作特征曲线下面积(AUC)均较高,但在 HUNT2 中具有统计学意义(AUC 0.875 比 0.844,p<0.001)。然而,综合判别改善指数(IDI)表明,HUNT Lung-SNP 模型可显著改善两个队列的 LC 风险分层(IDI 0.019,p<0.001(HUNT2)和 0.013,p<0.001(特罗姆瑟))。
HUNT 肺癌-SNP 模型可能对 LC 筛查具有临床影响,并有可能取代 HUNT LCM 以及 NLST、NELSON 和 2021 USPSTF 标准在筛查环境中的地位。然而,该模型还需要在其他人群中进一步验证,并在前瞻性试验环境中进行评估。