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Lung Cancer Risk Prediction Models for Asian Ever-Smokers

Authors
Yang, Jae JeongWen, WanqingZahed, HanaZheng, WeiLan, QingAbe, Sarah K.Rahman, Md. ShafiurIslam, Md. RashedulSaito, EikoGupta, Prakash C.Tamakoshi, AkikoKoh, Woon-PuayGao, Yu-TangSakata, RitsuTsuji, IchiroMalekzadeh, RezaSugawara, YumiKim, JeongseonIto, HidemiNagata, ChisatoYou, San-LinPark, Sue K.Yuan, Jian-MinShin, Myung-HeeKweon, Sun-SeogYi, Sang-WookPednekar, Mangesh S.Kimura, TakashiCai, HuiLu, YukaiEtemadi, ArashKanemura, SeikiWada, KeikoChen, Chien-JenShin, AesunWang, RenweiAhn, Yoon-OkShin, Min-HoOhrr, HeechoulSheikh, MahdiBlechter, BatelAhsan, HabibulBoffetta, PaoloChia, Kee SengMatsuo, KeitaroQiao, You-LinRothman, NathanielInoue, ManamiKang, DaeheeRobbins, Hilary A.Shu, Xiao-Ou
Issue Date
Mar-2024
Publisher
Elsevier Inc.
Keywords
Asia; Calibration; Cohort; Discrimination; Lung cancer; Risk prediction model
Citation
Journal of Thoracic Oncology, v.19, no.3, pp 451 - 464
Pages
14
Indexed
SCIE
SCOPUS
Journal Title
Journal of Thoracic Oncology
Volume
19
Number
3
Start Page
451
End Page
464
URI
https://scholarworks.bwise.kr/skku/handle/2021.sw.skku/110755
DOI
10.1016/j.jtho.2023.11.002
ISSN
1556-0864
1556-1380
Abstract
Introduction: Although lung cancer prediction models are widely used to support risk-based screening, their performance outside Western populations remains uncertain. This study aims to evaluate the performance of 11 existing risk prediction models in multiple Asian populations and to refit prediction models for Asians. Methods: In a pooled analysis of 186,458 Asian ever-smokers from 19 prospective cohorts, we assessed calibration (expected-to-observed ratio) and discrimination (area under the receiver operating characteristic curve [AUC]) for each model. In addition, we developed the “Shanghai models” to better refine risk models for Asians on the basis of two well-characterized population-based prospective cohorts and externally validated them in other Asian cohorts. Results: Among the 11 models, the Lung Cancer Death Risk Assessment Tool yielded the highest AUC (AUC [95% confidence interval (CI)] = 0.71 [0.67–0.74] for lung cancer death and 0.69 [0.67–0.72] for lung cancer incidence) and the Prostate, Lung, Colorectal, and Ovarian Cancer Screening Trial Model had good calibration overall (expected-to-observed ratio [95% CI] = 1.06 [0.90–1.25]). Nevertheless, these models substantially underestimated lung cancer risk among Asians who reported less than 10 smoking pack-years or stopped smoking more than or equal to 20 years ago. The Shanghai models were found to have marginal improvement overall in discrimination (AUC [95% CI] = 0.72 [0.69–0.74] for lung cancer death and 0.70 [0.67–0.72] for lung cancer incidence) but consistently outperformed the selected Western models among low-intensity smokers and long-term quitters. Conclusions: The Shanghai models had comparable performance overall to the best existing models, but they improved much in predicting the lung cancer risk of low-intensity smokers and long-term quitters in Asia. © 2023
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