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Lung cancer risk discrimination of prediagnostic proteomics measurements compared with existing prediction tools

Authors :
Feng, Xiaoshuang
Wu, Wendy Yi-Ying
Onwuka, Justina Ucheojor
Haider, Zahra
Alcala, Karine
Smith-Byrne, Karl
Zahed, Hana
Guida, Florence
Wang, Renwei
Bassett, Julie K.
Stevens, Victoria
Wang, Ying
Weinstein, Stephanie
Freedman, Neal D.
Chen, Chu
Tinker, Lesley
Nøst, Therese Haugdahl
Koh, Woon-Puay
Muller, David
Colorado-Yohar, Sandra M.
Tumino, Rosario
Hung, Rayjean J.
Amos, Christopher I.
Lin, Xihong
Zhang, Xuehong
Arslan, Alan A.
Sánchez, Maria-Jose
Sørgjerd, Elin Pettersen
Severi, Gianluca
Hveem, Kristian
Brennan, Paul
Langhammer, Arnulf
Milne, Roger L.
Yuan, Jian-Min
Melin, Beatrice S.
Johansson, Mikael
Robbins, Hilary A.
Johansson, Mattias
Feng, Xiaoshuang
Wu, Wendy Yi-Ying
Onwuka, Justina Ucheojor
Haider, Zahra
Alcala, Karine
Smith-Byrne, Karl
Zahed, Hana
Guida, Florence
Wang, Renwei
Bassett, Julie K.
Stevens, Victoria
Wang, Ying
Weinstein, Stephanie
Freedman, Neal D.
Chen, Chu
Tinker, Lesley
Nøst, Therese Haugdahl
Koh, Woon-Puay
Muller, David
Colorado-Yohar, Sandra M.
Tumino, Rosario
Hung, Rayjean J.
Amos, Christopher I.
Lin, Xihong
Zhang, Xuehong
Arslan, Alan A.
Sánchez, Maria-Jose
Sørgjerd, Elin Pettersen
Severi, Gianluca
Hveem, Kristian
Brennan, Paul
Langhammer, Arnulf
Milne, Roger L.
Yuan, Jian-Min
Melin, Beatrice S.
Johansson, Mikael
Robbins, Hilary A.
Johansson, Mattias
Publication Year :
2023

Abstract

BACKGROUND: We sought to develop a proteomics-based risk model for lung cancer and evaluate its risk-discriminatory performance in comparison with a smoking-based risk model (PLCOm2012) and a commercially available autoantibody biomarker test. METHODS: We designed a case-control study nested in 6 prospective cohorts, including 624 lung cancer participants who donated blood samples at most 3 years prior to lung cancer diagnosis and 624 smoking-matched cancer free participants who were assayed for 302 proteins. We used 470 case-control pairs from 4 cohorts to select proteins and train a protein-based risk model. We subsequently used 154 case-control pairs from 2 cohorts to compare the risk-discriminatory performance of the protein-based model with that of the Early Cancer Detection Test (EarlyCDT)-Lung and the PLCOm2012 model using receiver operating characteristics analysis and by estimating models' sensitivity. All tests were 2-sided. RESULTS: The area under the curve for the protein-based risk model in the validation sample was 0.75 (95% confidence interval [CI] = 0.70 to 0.81) compared with 0.64 (95% CI = 0.57 to 0.70) for the PLCOm2012 model (Pdifference = .001). The EarlyCDT-Lung had a sensitivity of 14% (95% CI = 8.2% to 19%) and a specificity of 86% (95% CI = 81% to 92%) for incident lung cancer. At the same specificity of 86%, the sensitivity for the protein-based risk model was estimated at 49% (95% CI = 41% to 57%) and 30% (95% CI = 23% to 37%) for the PLCOm2012 model. CONCLUSION: Circulating proteins showed promise in predicting incident lung cancer and outperformed a standard risk prediction model and the commercialized EarlyCDT-Lung.

Details

Database :
OAIster
Notes :
application/pdf, English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1399556731
Document Type :
Electronic Resource
Full Text :
https://doi.org/10.1093.jnci.djad071