Literature DB >> 29055736

Participant selection for lung cancer screening by risk modelling (the Pan-Canadian Early Detection of Lung Cancer [PanCan] study): a single-arm, prospective study.

Martin C Tammemagi1, Heidi Schmidt2, Simon Martel3, Annette McWilliams4, John R Goffin5, Michael R Johnston6, Garth Nicholas7, Alain Tremblay8, Rick Bhatia9, Geoffrey Liu2, Kam Soghrati2, Kazuhiro Yasufuku2, David M Hwang2, Francis Laberge3, Michel Gingras3, Sergio Pasian3, Christian Couture3, John R Mayo10, Paola V Nasute Fauerbach11, Sukhinder Atkar-Khattra12, Stuart J Peacock12, Sonya Cressman12, Diana Ionescu12, John C English10, Richard J Finley10, John Yee10, Serge Puksa5, Lori Stewart5, Scott Tsai5, Ehsan Haider13, Colm Boylan13, Jean-Claude Cutz5, Daria Manos6, Zhaolin Xu6, Glenwood D Goss7, Jean M Seely7, Kayvan Amjadi7, Harmanjatinder S Sekhon7, Paul Burrowes8, Paul MacEachern8, Stefan Urbanski8, Don D Sin14, Wan C Tan14, Natasha B Leighl2, Frances A Shepherd2, William K Evans5, Ming-Sound Tsao2, Stephen Lam15.   

Abstract

BACKGROUND: Results from retrospective studies indicate that selecting individuals for low-dose CT lung cancer screening on the basis of a highly predictive risk model is superior to using criteria similar to those used in the National Lung Screening Trial (NLST; age, pack-year, and smoking quit-time). We designed the Pan-Canadian Early Detection of Lung Cancer (PanCan) study to assess the efficacy of a risk prediction model to select candidates for lung cancer screening, with the aim of determining whether this approach could better detect patients with early, potentially curable, lung cancer.
METHODS: We did this single-arm, prospective study in eight centres across Canada. We recruited participants aged 50-75 years, who had smoked at some point in their life (ever-smokers), and who did not have a self-reported history of lung cancer. Participants had at least a 2% 6-year risk of lung cancer as estimated by the PanCan model, a precursor to the validated PLCOm2012 model. Risk variables in the model were age, smoking duration, pack-years, family history of lung cancer, education level, body-mass index, chest x-ray in the past 3 years, and history of chronic obstructive pulmonary disease. Individuals were screened with low-dose CT at baseline (T0), and at 1 (T1) and 4 (T4) years post-baseline. The primary outcome of the study was incidence of lung cancer. This study is registered with ClinicalTrials.gov, number NCT00751660.
FINDINGS: 7059 queries came into the study coordinating centre and were screened for PanCan risk. 15 were duplicates, so 7044 participants were considered for enrolment. Between Sept 24, 2008, and Dec 17, 2010, we recruited and enrolled 2537 eligible ever-smokers. After a median follow-up of 5·5 years (IQR 3·2-6·1), 172 lung cancers were diagnosed in 164 individuals (cumulative incidence 0·065 [95% CI 0·055-0·075], incidence rate 138·1 per 10 000 person-years [117·8-160·9]). There were ten interval lung cancers (6% of lung cancers and 6% of individuals with cancer): one diagnosed between T0 and T1, and nine between T1 and T4. Cumulative incidence was significantly higher than that observed in NLST (4·0%; p<0·0001). Compared with 593 (57%) of 1040 lung cancers observed in NLST, 133 (77%) of 172 lung cancers in the PanCan Study were early stage (I or II; p<0·0001).
INTERPRETATION: The PanCan model was effective in identifying individuals who were subsequently diagnosed with early, potentially curable, lung cancer. The incidence of cancers detected and the proportion of early stage cancers in the screened population was higher than observed in previous studies. This approach should be considered for adoption in lung cancer screening programmes. FUNDING: Terry Fox Research Institute and Canadian Partnership Against Cancer.
Copyright © 2017 Elsevier Ltd. All rights reserved.

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Mesh:

Year:  2017        PMID: 29055736     DOI: 10.1016/S1470-2045(17)30597-1

Source DB:  PubMed          Journal:  Lancet Oncol        ISSN: 1470-2045            Impact factor:   41.316


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10.  Prediction of lung cancer risk at follow-up screening with low-dose CT: a training and validation study of a deep learning method.

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