Evaluation of pre-diagnostic blood protein measurements for predicting survival after lung cancer diagnosisResearch in context

Background: To evaluate whether circulating proteins are associated with survival after lung cancer diagnosis, and whether they can improve prediction of prognosis. Methods: We measured up to 1159 proteins in blood samples from 708 participants in 6 cohorts. Samples were collected within 3 years pri...

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Veröffentlicht in:EBioMedicine 2023-06, Vol.92, p.104623
Hauptverfasser: Xiaoshuang Feng, David C. Muller, Hana Zahed, Karine Alcala, Florence Guida, Karl Smith-Byrne, Jian-Min Yuan, Woon-Puay Koh, Renwei Wang, Roger L. Milne, Julie K. Bassett, Arnulf Langhammer, Kristian Hveem, Victoria L. Stevens, Ying Wang, Mikael Johansson, Anne Tjønneland, Rosario Tumino, Mahdi Sheikh, Mattias Johansson, Hilary A. Robbins
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Sprache:eng
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Zusammenfassung:Background: To evaluate whether circulating proteins are associated with survival after lung cancer diagnosis, and whether they can improve prediction of prognosis. Methods: We measured up to 1159 proteins in blood samples from 708 participants in 6 cohorts. Samples were collected within 3 years prior to lung cancer diagnosis. We used Cox proportional hazards models to identify proteins associated with overall mortality after lung cancer diagnosis. To evaluate model performance, we used a round-robin approach in which models were fit in 5 cohorts and evaluated in the 6th cohort. Specifically, we fit a model including 5 proteins and clinical parameters and compared its performance with clinical parameters only. Findings: There were 86 proteins nominally associated with mortality (p 
ISSN:2352-3964
2352-3964